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Separately for each language, news gathered within a sliding four-hour window 8 hours for some languages are clustered, but older articles remain linked to the cluster as long as new articles arrive.

For each cluster, automatically extracted meta-information such as named entities and quotations are displayed. Continuously updated graphs show the ten currently largest clusters and their development over time.

By clicking on any of the clusters, users can see the list of all articles and click on each article to read the entire text on the website where it was originally found.

For fourteen languages, an automatically pre-generated translation into English is available. The limitation of the event types is due to the user groups, which are mostly concerned with providing support in case of disasters, epidemics, etc.

NewsBrief offers subscriptions for automatic updates per category by email, for institutional users also via SMS. BlogBrief provides the same functionality as NewsBrief, but instead of news, it processes English language blogs by bloggers who have been hand-selected due to their importance or impact e.

MedISys is rather similar to NewsBrief, except that all its content categories are related to issues that are relevant for Public Health monitoring.

Its news categories include all major communicable diseases and other Chemical, Biological, Radiological or Nuclear CBRN dangers, symptoms, as well as subjects of scientific or societal value such as vaccinations and genetically modified organisms.

NewsExplorer provides a more long-term view of the news in 21 languages only and it provides a cross-lingual functionality.

Rather than displaying and grouping the current news, NewsExplorer clusters the news of a whole calendar day and displays the clusters ordered by size.

For each cluster, hyperlinks lead users to the equivalent news clusters in any of the other twenty languages where applicable and to historically related news.

NewsExplorer also includes hundreds of thousands of entity pages persons, organisations and more , where historically gathered information on each entity is aggregated and displayed, including name variants, titles, clusters and quotes where the entity was mentioned, quotes issued by that person, other entities frequently mentioned together with this entity, and more see Figure 2.

NewsDesk is a tool for human moderation. It allows media monitoring professionals to view and select the automatically pre-processed news data and to easily create readily formatted in-house newsletters.

Due to the personal nature of such devices, it became first possible to display customised starting pages for each user. Users can create such channels for themselves and they can group channels into sets, allowing them to browse freely between channels in any of these sets.

When users open a channel, they get access to all the articles that are present in the channel at the time, plus the other metadata that EMM has identified and associated to that channel.

Users can of course also browse the attached meta-data, turn them into new channels and pin them to the current set.

Crisis management tools and products have been found to be challenging to design and produce due to the complexity of dynamic customisable data-sets defined by each individual user.

The main problems in designing such tools are ambiguity, multi-platform support, data representation and other pitfalls commonly seen in mobile technology development.

We adhere to a model-based methodology focusing on core functionality and logical interactions with the data-set, user-centric design and data visualisation while supporting other development activities including a requirement analysis for a wide set of devices and operating systems, verification and validation.

The result of the development cycle is a layout structure in which a wide scale of EMM crisis management tools has been developed.

There are many digital solutions aiming to support humanitarian and emergency response tools by means of open source information gathering and text analysis.

A strong trend among those tools is the ability to detect and analyse vast amounts of data, highlighting important developments relevant to each user and use.

Many solutions are already operational today, the majority of these solutions requires the user to open a webpage a few times every day to get updated.

Other solutions are relying on communicating with external servers, which is expensive and demanding in maintenance.

They additionally usually require user authentication, which can compromise privacy and security. Our own solution allows custom notifications based on changes in the specific data set the user has defined.

When a logical threshold is activated the system displays a notification directly on the user's mobile device. By merging our notifications with the core system notification system of the mobile device, we alert the user only when it is appropriate.

For example, notification will wait silently when the user is asleep and will schedule the notifications to be presented a few minutes after the user has started using the device.

This is being done without any user intervention or pre-settings. This novel solution differentiates itself from most notification solutions in the fact that it does not rely on any server side technology.

The application itself calculates when and how notifications are presented to the user based on an internal logic crossed with background fetching of the current total data set.

MyNews is the first customisable web interface to the news items supplied by the EMM engine designed for desktop browsers. It only became available in It requires logging in and is only available in-house, i.

MyNews is highly customisable, since it allows users to define their own specific view by selecting the topics they are most interested in.

They can create as many channels as they like, and they can organise them into sets see Figure 4. There are many different ways to create new channels, which increases greatly the flexibility of the tool, combining as a union or as an intersection of article selections based on a text language, b news categories, c entities, d news from a certain country or e news about a certain country, f top stories i.

When visualising the contents of any of the channels, the meta-data relating specifically to this selection of news is displayed visually see Figure 5.

The Big Screen App, available since , offers a view of EMM that is visible on large screens in central locations at user organisations.

It shows a revolving and continuously updated view of what is happening around the world, targeted to the respective user communities, using text, maps and graphs.

The sources of these items are taken from the traditional online news media, public posts from FaceBook and tweets from Twitter.

CAS allows investigating the relative dominance of certain themes across different media traditional vs. Details on ingested news, sources, numbers, geographical distribution Event extraction Multilinguality in EMM Multilinguality is an extremely important feature in this news monitoring application.

Covering so many languages is not only important because the European Union consists of 28 Member States with 24 official EU languages.

The coverage of news in 70 different languages is also due to the insight that news reporting is complementary across different countries and languages, both regarding the contents and the opinions expressed in the media.

By gathering and analysing different languages, EMM reduces any national or regional bias and it increases the coverage of events and of opinions.

While major world events such as large-scale disasters, major sports events, wars and meetings of world leaders are usually also reported in English, there is ample evidence that only a minority of the smaller events is reported on in the press outside the country where the event happens.

Many EMM users have specialised interests such as the monitoring of events that may have negative effects on Public Health e. An analysis has shown that the vast majority of such events is not translated or reported abroad Piskorski et al.

The links between related clusters across different languages in NewsExplorer show that only some of the news items in each country or language have an equivalent in other languages while the majority of news clusters talk about subjects of national interest.

Figure 7, taken from the live EMM news cluster world map, also gives evidence of the uneven distribution of language reporting for locations on the globe: News mentioning locations in Latin America are mostly reported in Spanish and Portuguese; there is little news on Russia and China that is not written in Russian or Chinese, respectively, etc.

Only by combining the world news in all different languages do we get a fuller picture of what is happening.

Trend observation and distribution statistics in EMM In this section, we want to give some concrete examples of trend monitoring, as well as of bird's views of large amounts of media data giving insights in the relative distribution of news contents.

The selection of examples shown here is based on wanting to present different visualisation principles or types, but it is naturally also driven by the interests of EMM users.

Since EMM monitors in near-real time time stamp large amounts of media reports from around the world and it keeps track of the information e.

This can be done for a specific point in time most EMM users are interested in now , it can be done for any moment back in time, it is possible to compare current values to average values, and it is possible to perform a time series analysis, i.

Note, however, that, while all such meta-data extracted by EMM can be stored, the original full text of the news has to be deleted after the analysis, for copyright reasons.

Users will thus be able to see the meta data and a snippet of the news text title and the first few words , but if they want to see the full text, they have to follow the hyperlink provided.

Whether or not the full text is still accessible then depends on the news source. In the following sub-sections, we will present some types of trend observations and visual presentations of distribution statistics.

Bar graphs and pie charts The simplest and probably clearest way of presenting static data is achieved using bar graphs and pie charts. These charts give the reader an overview of the whole collection of documents and it thus helps them evaluate and categorise the contents before reading them in detail.

Maps visualising geographical distributions Map views are rather popular and intuitive. Many types of map data are available, allowing to combine any EMM information with third-party information, as seen in Figure 8.

Any map data in EMM is hyperlinked to the underlying news articles together with the extracted meta-information so that users can verify the contents and read the underlying news sources.

Trend graphs Trend graphs show a simple correlation between at least two variables, of which one is time.

Typically, they take the shape of line graphs or bar graphs where one axis represents time. Figure 1 shows the size number of news articles of the ten largest English language news clusters and their development over the past 12 hours, with a ten-minute resolution update frequency.

The interactive graph clearly shows which stories are most discussed. By hovering with the mouse over any of the points, the most typical news article header of that moment in time is shown so that users can get informed of the development of that story.

The system decides on the most typical article header statistically by selecting the medoid, i. By clicking on any of the curves, a new page will open showing the articles that are part of that cluster plus all meta-information available to the system.

This graph thus shows ten trend lines in one graph, for the sake of comparison. Similarly, Figure 6 visualises the numbers of news articles and of Social Media postings over time on four science areas.

The graph shows longer-term developments. The chosen resolution is one day. For each of the four science areas, two trend curves are displayed to facilitate the visual understanding of the relative long-term development.

Such graphs can be rather revealing. Comparing only English language articles in predominantly English-speaking countries UK and Ireland in Europe; graph not shown here with the English language articles in the USA, the difference is smaller, but it still notable 1.

To put these numbers into perspective: the reporting on the reference categories Conflict, Ecology, Society and Sports, considering only the English language, was respectively 2.

Note that, in EMM, sports articles are additionally only taken from general news streams because EMM does not scan sports pages of news sites.

Looking in detail at a specific topic such as Space, we observe that there is a very strong correlation between the peaks, but the volumes are much smaller in the UK and Ireland, compared to the USA See Figure 9.

Other than a weak correlation between product announcements in the media and on twitter, we have not observed a clear media-driven discussion on the social media, i.

Such data is a good starting point for the work of social scientists, who can then search for an interpretation and for explanations.

Economists and politicians may then think of possible remedies if needed and wanted. The graph shows the number of news articles per day in the daily news clusters about the same event or subject.

By hovering over any of the bars, the news cluster title is displayed so that users can explore what happened that day. By clicking on that day, the users are taken to the page with information on that day's news cluster in order to read the articles, see the related meta-information and follow hyperlinks to related reports in other languages.

The graph allows exploring developments over longer periods of time and refreshing one's memory on what happened when. Figure 11 shows the development of positive or negative tonality or sentiment measured in English and French news articles, using a one-week resolution.

Early warning graphs Figure 8 visualises results on the most recent events of a certain type, allowing stakeholders to become aware of the latest developments, to deepen their understanding of what happened by reading the related news articles and to take action, if needed.

The graph called daily alert statistics shows the currently biggest threats world-wide, with decreasing relevance from left to right the red threats are the ones with the highest alert levels.

MedISys counts the number of articles in the last 24 hours for any country-threat combination e.

This ratio is then normalised by the number of articles for different days of the week there are less articles on the weekend. The alert statistics graph then shows the results of all calculations, ranked by the value of this ratio.

Note that the ratio is entirely independent of the absolute numbers as it rather measures the unexpectedness. Each country-threat combination is shown in two columns: the left one light blue shows the observed number of articles while the right one red, yellow or blue shows the expected two-week average.

The same categories for countries and for threats exist for almost all EMM languages, meaning that the articles may be found in one language only e.

Polish or Arabic , which often is different from the languages spoken by the MedISys user. The graph is interactive: Users can click on any of the bars to jump to a new page where all relevant articles for this country-threat combination are displayed, together with a heat map and a trend line showing the development over the past 14 days.

The Spain-legionellosis threat combination in Figure 10 no longer is a top threat as it had already been reported on for four days.

Further graph types used in EMM Figure 11 shows a node graph visualising co-occurrence relations between people. For each person, the most associated entities persons or organisations are displayed.

The subset of common entities is highlighted in red. The graph is interactive: by clicking on any of the entity nodes, they jump to a page with the news mentioning that entity and displaying all automatically extracted meta-information e.

Figure 2 , or to the Wikipedia page for that entity. Further entities can be added to the same graph.

EMM-NewsExplorer produces the correlation data by counting which entities are mentioned together with which other entities in the same news items. In order to suppress media VIPs such as the US president from the purely frequency-based correlation lists called 'related entities' in NewsExplorer , a weighting formula is used that brings those entities to the top that are mostly mentioned together with this person and not so much with other persons.

The data, referred to in NewsExplorer as 'associated entities', is produced on the basis of mention co-occurrence in the news in 21 different languages, i.

EMM recognises direct speech quotations in the news in about twenty different languages and keeps track of who issued the quotation and who is mentioned inside the quotation.

Figure 12 shows a quotation network indicating who mentions whom arrows. Persons most referred to are automatically placed closer to the centre of the graph.

Quotation networks are no longer used in EMM. The same applies to topic maps, which display the most prominent subject matters referred to in a document collection.

The topics are grouped into islands of relatedness using a method known as Kohonen Maps. The more prominent a group of topics is in the collection, the higher the mountains on the island, with peaks being snow-covered.

Summary and conclusions, pitfalls Computers have the ability to sieve through large volumes of data in little time and the technologies required for Automated Content Analysis ACA have matured to a level where automatically produced results can be useful for the human analyst.

We have argued that a man-machine collaboration for the analysis of large volumes of media reports will produce best results because people and computers have complementary strengths.

We have presented the main functionality of the European Commission's family of Europe Media Monitor EMM applications, which currently gathers an average of , online news articles per day from about 5, online news sources in seventy languages and also from social media postings about certain themes , categorises the news into about 2, different categories, groups related articles, extracts various types of information from them, links related articles over time and across languages and presents the analysis results in a variety of ways to the human end user.

Moderation tools support the users in viewing the data, in selecting and amending it and in producing in-house newsletters for the information-seeking decision takers.

Monitoring not only English or some widely spoken languages is important in order to avoid bias and also because the news is complementary across languages, both for contents and for the sentiment contained therein.

Automatic tools that process and analyse documents turn unstructured information into a structured format that can easily be processed by machines and that also provides useful data for the human user.

This results in a data collection, where for each article, we know the news source, the country of origin, the language, the timestamp of the publication, the news categories, the persons, organisations and locations mentioned therein, related articles within the same and across different languages, quotations by and about persons.

Additionally, we have data about trends, i. This structured collection makes it in principle possible to produce any statistics and to establish any trends related to these types of information.

For selected subjects and feature combinations, the JRC regularly publishes its analysis, allowing EMM users to have a deeper insight into the publications on subject areas of their interest.

In this article, we presented a range of different types of analyses and visualisations in order to give an overview of distributions and trends observed during large-scale media analysis.

Such an extraction and aggregation of data is not usually the final objective, but it normally is the starting point for an intellectual human analysis.

Analysts can get inspired by the data, questions may arise, suspicions may get confirmed or contradicted. Used carefully, we believe that the analyses produced by EMM or similar systems can be very useful because they may be used as an inspiration and as empirical evidence for any argument human analysts may want to make.

However, we find it extremely important that users be aware of the limitations and of possible pitfalls when using such data, be it from EMM or from other automatic systems: First of all, media monitoring is not reality monitoring.

What the media say is not necessarily factually true and media attention towards certain subjects usually differs from the real-life distribution of facts or events, giving media consumers a biased view.

Media reporting is heavily influenced by the political or geographical viewpoint of the news source. It is therefore useful to analyse a large, well-balanced set of media sources coming from many different countries world-wide.

EMM aims to reach such a balance, but sources are also added on request of users, it is not always known what political standpoints newspapers have, and not all news sources are freely accessible.

For this reason, EMM displays the list of media sources so that users can form their own opinion. Any analysis, be it automatic or man-made, is error-prone.

This is even true for basic functionalities such as the recognition of person names in documents and the categorisation of texts according to subject domains.

Machines might make simple mistakes easily spottable by human analysts, such as categorising an article as being about the outbreak of communicable diseases when category-defining words such as tuberculosis are found in articles discussing a new song produced by a famous music producer, which is easily spottable by a person.

On the other hand, machines are better at going through very large document collections and they are very consistent in their categorisation while people suffer from inconsistency and they tend to generalise on the basis of the small document collection they have read.

For these reasons, it is crucial that any summaries, trend visualisations or other analyses can be verified by the human analysts. Users should be able to verify the data by drilling down, e.

Most of EMM's graphs are interactive and allow viewing the underlying data. It would be useful if system providers additionally offered confidence values regarding the accuracy of their analyses.

For EMM, most specialised applications on individual information extraction tools include such tool evaluation results and an error analysis e.

However, the tools can behave very differently depending on the text type and the language, making the availability of drill-down functionality indispensable.

End users should be careful with accuracy statistics given by system providers. Especially commercial vendors but not only are good at presenting their systems in a very positive light.

For instance, our experience has shown that, especially in the field of sentiment analysis opinion mining, tonality , high accuracy is difficult to achieve even when the statistical accuracy measurement Precision and Recall are high.

Overall Precision accuracy for the system's predictions may for instance indeed be high when considering predictions for positive, negative and neutral sentiment, but this might simply be because the majority class e.

Accuracy statistics may also have been produced on an easy-to-analyse dataset while the data at hand may be harder to analyse. Sentiment, for instance, may be easier to detect on product review pages on vending sites such as Amazon than on the news because journalists tend to want to give the impression of neutrality.

Machine learning approaches to text analysis are particularly promising because computers are good at optimising evidence and because machine learning tools are cheap to produce, compared to man-made rules.

However, the danger is that the automatically learnt rules are applied to texts that are different from the training data as comparable data rarely exists.

Manually produced rules might be easier to tune and to adapt. Again, statistics on the performance of automatic tools should be considered with care.

Within EMM, machine learning is used to learn vocabulary and recognition patterns, but these are then usually manually verified and generalised e.

Zavarella et al. To summarise: we firmly believe that Automated Content Analysis works when it is used with care and when its strengths and limits are known.

In: J. Kohlhammer, D. Keim eds. Golsar Germany : The Eurographics Association. In: U. Kock Wiil ed. Counterterrorism and Open Source Intelligence.

Computational Linguistics Applications, pp. Springer-Verlag, Berlin, Huttunen, A. Vihavainen, Roman Yangarber News Mining for Border Security Intelligence.

Detecting event-related links and sentiments from social media texts. Opinion Mining on Newspaper Quotations. Milano, Italy, Sentiment Analysis in the News.

Valletta, Malta, May PLoS One. Epub Mar 5. Transactions on Computational Collective Intelligence. Krstajic, M. Processing online news streams for large-scale semantic analysis.

EuroSurveillance Vol. Stockholm, 2 April Linge, J. Fuart, F. In: Malaga. Kostkova, M. Szomszor, and D. Fowler eds. Exploring the usefulness of cross-lingual information fusion for refining real-time news event extraction.

Proceedings of the social networks and application tools workshop SocNet pp. Skalica, Slovakia, September Geocoding multilingual texts: Recognition, Disambiguation and Visualisation.

Genoa, Italy, May Automatic Detection of Quotations in Multilingual News. Borovets, Bulgaria, Story tracking: linking similar news over time and across languages.

Manchester, UK, 23 August Building and displaying name relations using automatic unsupervised analysis of newspaper articles.

Multilingual multi-document continuously updated social networks. Borovets, Bulgaria, 26 September Sean P. O'Brien Anticipating the Good, the Bad, and the Ugly.

Journal of Conflict Resolution, Vol. Cross-lingual Named Entity Recognition. John Benjamins Publishing Company. ISBN 3.

Steinberger Ralf A survey of methods to ease the development of highly multilingual Text Mining applications. Boston, USA. Text Mining from the Web for Medical Intelligence.

Weakly supervised approaches for ontology population. Frontiers in Artificial Intelligence and Applications, Volume Semi-automatic acquisition of lexical resources and grammars for event extraction in Bulgarian and Czech.

Tanev Hristo Annals of Information Systems, Volume Sugumaran, M. Spiliopoulou, E. Enhancing Event Descriptions through Twitter Mining.

Dublin, June Available at:. Combining twitter and media reports on public health events in MedISys.

Proceedings of the 22nd international conference on World Wide Web companion, pp. Steinberger jrc. Werde die beste Version von Dir selbst.

Jederzeit an jedem Ort! Lolathecur's Blog Below are two very important entries from the "Jewish Encyclopedia".

Jerome's Bible-Revision Work. Jerome's Bible-Translation Work. Jerome's Translation in Later Times. Earlier Latin Translations. It was the product of the work of Jerome, one of the most learned and scholarly of the Church leaders of the early Christian centuries.

The earliest Latin version of the Scriptures seems to have originated not in Rome, but in one of Rome's provinces in North Africa. Indeed, Tertullian c.

There were at least two early Latin translations, one called the African and the other the European. These, based not on the Hebrew, but on the Greek, are thought to have been made before the text-work of such scholars as Origen, Lucian, and Hesychius, and hence would be valuable for the discovery of the Greek text with which Origen worked.

But the remains of these early versions are scanty. Jerome did not translate or revise several books found in the Latin Bible, and consequently the Old Latin versions were put in their places in the later Latin Bible.

The Psalter also exists in a revised form, and the books of Job and Esther, of the Old Latin, are found in some ancient manuscripts. Only three other fragmentary manuscripts of the Old Testament in Old Latin are now known to be in existence.

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Any map data in EMM is hyperlinked to the underlying news articles together with the extracted meta-information so that users can verify the contents and read the underlying news sources.

Trend graphs Trend graphs show a simple correlation between at least two variables, of which one is time. Typically, they take the shape of line graphs or bar graphs where one axis represents time.

Figure 1 shows the size number of news articles of the ten largest English language news clusters and their development over the past 12 hours, with a ten-minute resolution update frequency.

The interactive graph clearly shows which stories are most discussed. By hovering with the mouse over any of the points, the most typical news article header of that moment in time is shown so that users can get informed of the development of that story.

The system decides on the most typical article header statistically by selecting the medoid, i. By clicking on any of the curves, a new page will open showing the articles that are part of that cluster plus all meta-information available to the system.

This graph thus shows ten trend lines in one graph, for the sake of comparison. Similarly, Figure 6 visualises the numbers of news articles and of Social Media postings over time on four science areas.

The graph shows longer-term developments. The chosen resolution is one day. For each of the four science areas, two trend curves are displayed to facilitate the visual understanding of the relative long-term development.

Such graphs can be rather revealing. Comparing only English language articles in predominantly English-speaking countries UK and Ireland in Europe; graph not shown here with the English language articles in the USA, the difference is smaller, but it still notable 1.

To put these numbers into perspective: the reporting on the reference categories Conflict, Ecology, Society and Sports, considering only the English language, was respectively 2.

Note that, in EMM, sports articles are additionally only taken from general news streams because EMM does not scan sports pages of news sites.

Looking in detail at a specific topic such as Space, we observe that there is a very strong correlation between the peaks, but the volumes are much smaller in the UK and Ireland, compared to the USA See Figure 9.

Other than a weak correlation between product announcements in the media and on twitter, we have not observed a clear media-driven discussion on the social media, i.

Such data is a good starting point for the work of social scientists, who can then search for an interpretation and for explanations.

Economists and politicians may then think of possible remedies if needed and wanted. The graph shows the number of news articles per day in the daily news clusters about the same event or subject.

By hovering over any of the bars, the news cluster title is displayed so that users can explore what happened that day. By clicking on that day, the users are taken to the page with information on that day's news cluster in order to read the articles, see the related meta-information and follow hyperlinks to related reports in other languages.

The graph allows exploring developments over longer periods of time and refreshing one's memory on what happened when. Figure 11 shows the development of positive or negative tonality or sentiment measured in English and French news articles, using a one-week resolution.

Early warning graphs Figure 8 visualises results on the most recent events of a certain type, allowing stakeholders to become aware of the latest developments, to deepen their understanding of what happened by reading the related news articles and to take action, if needed.

The graph called daily alert statistics shows the currently biggest threats world-wide, with decreasing relevance from left to right the red threats are the ones with the highest alert levels.

MedISys counts the number of articles in the last 24 hours for any country-threat combination e. This ratio is then normalised by the number of articles for different days of the week there are less articles on the weekend.

The alert statistics graph then shows the results of all calculations, ranked by the value of this ratio. Note that the ratio is entirely independent of the absolute numbers as it rather measures the unexpectedness.

Each country-threat combination is shown in two columns: the left one light blue shows the observed number of articles while the right one red, yellow or blue shows the expected two-week average.

The same categories for countries and for threats exist for almost all EMM languages, meaning that the articles may be found in one language only e.

Polish or Arabic , which often is different from the languages spoken by the MedISys user. The graph is interactive: Users can click on any of the bars to jump to a new page where all relevant articles for this country-threat combination are displayed, together with a heat map and a trend line showing the development over the past 14 days.

The Spain-legionellosis threat combination in Figure 10 no longer is a top threat as it had already been reported on for four days.

Further graph types used in EMM Figure 11 shows a node graph visualising co-occurrence relations between people. For each person, the most associated entities persons or organisations are displayed.

The subset of common entities is highlighted in red. The graph is interactive: by clicking on any of the entity nodes, they jump to a page with the news mentioning that entity and displaying all automatically extracted meta-information e.

Figure 2 , or to the Wikipedia page for that entity. Further entities can be added to the same graph. EMM-NewsExplorer produces the correlation data by counting which entities are mentioned together with which other entities in the same news items.

In order to suppress media VIPs such as the US president from the purely frequency-based correlation lists called 'related entities' in NewsExplorer , a weighting formula is used that brings those entities to the top that are mostly mentioned together with this person and not so much with other persons.

The data, referred to in NewsExplorer as 'associated entities', is produced on the basis of mention co-occurrence in the news in 21 different languages, i.

EMM recognises direct speech quotations in the news in about twenty different languages and keeps track of who issued the quotation and who is mentioned inside the quotation.

Figure 12 shows a quotation network indicating who mentions whom arrows. Persons most referred to are automatically placed closer to the centre of the graph.

Quotation networks are no longer used in EMM. The same applies to topic maps, which display the most prominent subject matters referred to in a document collection.

The topics are grouped into islands of relatedness using a method known as Kohonen Maps. The more prominent a group of topics is in the collection, the higher the mountains on the island, with peaks being snow-covered.

Summary and conclusions, pitfalls Computers have the ability to sieve through large volumes of data in little time and the technologies required for Automated Content Analysis ACA have matured to a level where automatically produced results can be useful for the human analyst.

We have argued that a man-machine collaboration for the analysis of large volumes of media reports will produce best results because people and computers have complementary strengths.

We have presented the main functionality of the European Commission's family of Europe Media Monitor EMM applications, which currently gathers an average of , online news articles per day from about 5, online news sources in seventy languages and also from social media postings about certain themes , categorises the news into about 2, different categories, groups related articles, extracts various types of information from them, links related articles over time and across languages and presents the analysis results in a variety of ways to the human end user.

Moderation tools support the users in viewing the data, in selecting and amending it and in producing in-house newsletters for the information-seeking decision takers.

Monitoring not only English or some widely spoken languages is important in order to avoid bias and also because the news is complementary across languages, both for contents and for the sentiment contained therein.

Automatic tools that process and analyse documents turn unstructured information into a structured format that can easily be processed by machines and that also provides useful data for the human user.

This results in a data collection, where for each article, we know the news source, the country of origin, the language, the timestamp of the publication, the news categories, the persons, organisations and locations mentioned therein, related articles within the same and across different languages, quotations by and about persons.

Additionally, we have data about trends, i. This structured collection makes it in principle possible to produce any statistics and to establish any trends related to these types of information.

For selected subjects and feature combinations, the JRC regularly publishes its analysis, allowing EMM users to have a deeper insight into the publications on subject areas of their interest.

In this article, we presented a range of different types of analyses and visualisations in order to give an overview of distributions and trends observed during large-scale media analysis.

Such an extraction and aggregation of data is not usually the final objective, but it normally is the starting point for an intellectual human analysis.

Analysts can get inspired by the data, questions may arise, suspicions may get confirmed or contradicted.

Used carefully, we believe that the analyses produced by EMM or similar systems can be very useful because they may be used as an inspiration and as empirical evidence for any argument human analysts may want to make.

However, we find it extremely important that users be aware of the limitations and of possible pitfalls when using such data, be it from EMM or from other automatic systems: First of all, media monitoring is not reality monitoring.

What the media say is not necessarily factually true and media attention towards certain subjects usually differs from the real-life distribution of facts or events, giving media consumers a biased view.

Media reporting is heavily influenced by the political or geographical viewpoint of the news source. It is therefore useful to analyse a large, well-balanced set of media sources coming from many different countries world-wide.

EMM aims to reach such a balance, but sources are also added on request of users, it is not always known what political standpoints newspapers have, and not all news sources are freely accessible.

For this reason, EMM displays the list of media sources so that users can form their own opinion. Any analysis, be it automatic or man-made, is error-prone.

This is even true for basic functionalities such as the recognition of person names in documents and the categorisation of texts according to subject domains.

Machines might make simple mistakes easily spottable by human analysts, such as categorising an article as being about the outbreak of communicable diseases when category-defining words such as tuberculosis are found in articles discussing a new song produced by a famous music producer, which is easily spottable by a person.

On the other hand, machines are better at going through very large document collections and they are very consistent in their categorisation while people suffer from inconsistency and they tend to generalise on the basis of the small document collection they have read.

For these reasons, it is crucial that any summaries, trend visualisations or other analyses can be verified by the human analysts.

Users should be able to verify the data by drilling down, e. Most of EMM's graphs are interactive and allow viewing the underlying data.

It would be useful if system providers additionally offered confidence values regarding the accuracy of their analyses. For EMM, most specialised applications on individual information extraction tools include such tool evaluation results and an error analysis e.

However, the tools can behave very differently depending on the text type and the language, making the availability of drill-down functionality indispensable.

End users should be careful with accuracy statistics given by system providers. Especially commercial vendors but not only are good at presenting their systems in a very positive light.

For instance, our experience has shown that, especially in the field of sentiment analysis opinion mining, tonality , high accuracy is difficult to achieve even when the statistical accuracy measurement Precision and Recall are high.

Overall Precision accuracy for the system's predictions may for instance indeed be high when considering predictions for positive, negative and neutral sentiment, but this might simply be because the majority class e.

Accuracy statistics may also have been produced on an easy-to-analyse dataset while the data at hand may be harder to analyse. Sentiment, for instance, may be easier to detect on product review pages on vending sites such as Amazon than on the news because journalists tend to want to give the impression of neutrality.

Machine learning approaches to text analysis are particularly promising because computers are good at optimising evidence and because machine learning tools are cheap to produce, compared to man-made rules.

However, the danger is that the automatically learnt rules are applied to texts that are different from the training data as comparable data rarely exists.

Manually produced rules might be easier to tune and to adapt. Again, statistics on the performance of automatic tools should be considered with care.

Within EMM, machine learning is used to learn vocabulary and recognition patterns, but these are then usually manually verified and generalised e.

Zavarella et al. To summarise: we firmly believe that Automated Content Analysis works when it is used with care and when its strengths and limits are known.

In: J. Kohlhammer, D. Keim eds. Golsar Germany : The Eurographics Association. In: U. Kock Wiil ed. Counterterrorism and Open Source Intelligence.

Computational Linguistics Applications, pp. Springer-Verlag, Berlin, Huttunen, A. Vihavainen, Roman Yangarber News Mining for Border Security Intelligence.

Detecting event-related links and sentiments from social media texts. Opinion Mining on Newspaper Quotations. Milano, Italy, Sentiment Analysis in the News.

Valletta, Malta, May PLoS One. Epub Mar 5. Transactions on Computational Collective Intelligence. Krstajic, M. Processing online news streams for large-scale semantic analysis.

EuroSurveillance Vol. Stockholm, 2 April Linge, J. Fuart, F. In: Malaga. Kostkova, M. Szomszor, and D. Fowler eds. Exploring the usefulness of cross-lingual information fusion for refining real-time news event extraction.

Proceedings of the social networks and application tools workshop SocNet pp. Skalica, Slovakia, September Geocoding multilingual texts: Recognition, Disambiguation and Visualisation.

Genoa, Italy, May Automatic Detection of Quotations in Multilingual News. Borovets, Bulgaria, Story tracking: linking similar news over time and across languages.

Manchester, UK, 23 August Building and displaying name relations using automatic unsupervised analysis of newspaper articles. Multilingual multi-document continuously updated social networks.

Borovets, Bulgaria, 26 September Sean P. O'Brien Anticipating the Good, the Bad, and the Ugly. Journal of Conflict Resolution, Vol. Cross-lingual Named Entity Recognition.

John Benjamins Publishing Company. ISBN 3. Steinberger Ralf A survey of methods to ease the development of highly multilingual Text Mining applications.

Boston, USA. Text Mining from the Web for Medical Intelligence. Weakly supervised approaches for ontology population. Frontiers in Artificial Intelligence and Applications, Volume Semi-automatic acquisition of lexical resources and grammars for event extraction in Bulgarian and Czech.

Tanev Hristo Annals of Information Systems, Volume Sugumaran, M. Spiliopoulou, E. Enhancing Event Descriptions through Twitter Mining.

Dublin, June Available at:. Combining twitter and media reports on public health events in MedISys. Proceedings of the 22nd international conference on World Wide Web companion, pp.

Steinberger jrc. Werde die beste Version von Dir selbst. Jederzeit an jedem Ort! Lolathecur's Blog Below are two very important entries from the "Jewish Encyclopedia".

Jerome's Bible-Revision Work. Jerome's Bible-Translation Work. Jerome's Translation in Later Times. Earlier Latin Translations. It was the product of the work of Jerome, one of the most learned and scholarly of the Church leaders of the early Christian centuries.

The earliest Latin version of the Scriptures seems to have originated not in Rome, but in one of Rome's provinces in North Africa. Indeed, Tertullian c.

There were at least two early Latin translations, one called the African and the other the European. These, based not on the Hebrew, but on the Greek, are thought to have been made before the text-work of such scholars as Origen, Lucian, and Hesychius, and hence would be valuable for the discovery of the Greek text with which Origen worked.

But the remains of these early versions are scanty. Jerome did not translate or revise several books found in the Latin Bible, and consequently the Old Latin versions were put in their places in the later Latin Bible.

The Psalter also exists in a revised form, and the books of Job and Esther, of the Old Latin, are found in some ancient manuscripts. Only three other fragmentary manuscripts of the Old Testament in Old Latin are now known to be in existence.

Jerome was born of Christian parents about , at Stridon, in the province of Dalmatia. He received a good education, and carried on his studies at Rome, being especially fascinated by Vergil, Terence, and Cicero.

Rhetoric and Greek also claimed part of his attention. At Trier in Gaul he took up theological studies for several years.

In he traveled in the Orient. In a severe illness he was so impressed by a dream that he dropped secular studies. But his time had not been lost.

He turned his brilliant mind, trained in the best schools of the day, to sacred things. Like Moses and Paul, he retired to a desert, that of Chalcis, near Antioch, where he spent almost five years in profound study of the Scriptures and of himself.

At this period he sealed a friendship with Pope Damasus, who later opened the door to him for the great work of his life. In Jerome was ordained presbyter at Antioch.

Thence he went to Constantinople, where he was inspired by the expositions of Gregory Nazianzen. In he reached Rome, where he lived about three years in close friendship with Damasus.

For a long time the Church had felt the need of a good, uniform Latin Bible. Pope Damasus at first asked his learned friend Jerome to prepare a revised Latin version of the New Testament.

In the Four Gospels appeared in a revised form, and at short intervals thereafter the Acts and the remaining books of the New Testament.

These latter were very slightly altered by Jerome. Soon afterward he revised the Old Latin Psalter simply by the use of the Septuagint.

The name given this revision was the "Roman Psalter," in distinction from the "Psalterium Vetus. In he settled at Bethlehem, assumed charge of a monastery, and prosecuted his studies with great zeal.

He secured a learned Jew to teach him Hebrew for still better work than that he had been doing. His revision work had not yet ceased, for his Book of Job appeared as the result of the same kind of study as had produced the "Gallican Psalter.

But Jerome soon recognized the poor and unsatisfactory state of the Greek texts that he was obliged to use. This turned his mind and thought to the original Hebrew.

Friends, too, urged him to translate certain books from the original text. As a resultant of long thought, and in answer to many requests, Jerome spent fifteen years, to , on a new translation of the Old Testament from the original Hebrew text.

He began with the books of Samuel and Kings, for which he wrote a remarkable preface, really an introduction to the entire Old Testament.

He next translated the Psalms, and then the Prophets and Job. In he prepared a translation of Esdras and Chronicles.

After an interval of two years, during which he passed through a severe illness, he took up his arduous labors, and produced translations of Proverbs, Ecclesiastes, and Song of Songs.

The Pentateuch followed next, and the last canonical books, Joshua, Judges, Ruth, and Esther, were completed by The remainder of the Apocryphal books he left without revision or translation, as they were not found in the Hebrew Bible.

Jerome happily has left prefaces to most of his translations, and these documents relate how he did his work and how some of the earlier books were received.

Evidently he was bitterly criticized by some of his former best friends. His replies show that he was supersensitive to criticism, and often hot-tempered and stormy.

His irritability and his sharp retorts to his critics rather retarded than aided the reception of his translation.

But the superiority of the translation gradually won the day for most of his work. The Council of Trent in authorized the Latin Bible, which was by that time a strange composite.

The Old Testament was Jerome's translation from the Hebrew, except the Psalter, which was his Gallican revision; of the Apocryphal books, Judith and Tobit were his translations, while the remainder were of the Old Latin version.

These translations and revisions of translations, and old original translations, constitute the Vulgate. See also Jerome.

See fuller bibliography in S. Berger's work, mentioned above. His Knowledge of Hebrew. Church father; next to Origen, who wrote in Greek, the most learned student of the Bible among the Latin ecclesiastical writers, and, previous to modern times, the only Christian scholar able to study the Hebrew Bible in the original.

The dates of his birth and death are not definitely known; but he is generally assumed to have lived from to Born in Stridon, Dalmatia, he went as a youth to Rome, where he attended a school of grammar and rhetoric.

He then traveled in Gaul and Italy, and in went to Antioch, where he became the pupil of Apollinaris of Laodicea, the representative of the exegetical school of Antioch; subsequently, however, Jerome did not accept the purely historical exegesis of this school, but adopted more nearly the typic-allegoric method of Origen.

From Antioch he went to Chalcis in the Syrian desert, where he led the strictly ascetic life of a hermit, in atonement for the sins of his youth.

Here also he began with great labor to study Hebrew, with the aid of a baptized Jew ib. On a second visit to Antioch Jerome was ordained a priest.

He then went to Constantinople, and thence to Rome, where he undertook literary work for Pope Damasus, beginning at the same time his own Biblical works c.

He finally settled at Bethlehem in Palestine c. This outline of Jerome's life indicates that he was a master of Latin and Greek learning, and by studying furthermore Syriac and Hebrew united in his person the culture of the East and of the West.

His Teachers. It was in Bethlehem that he devoted himself most seriously to Hebrew studies. Jerome was not satisfied to study with any one Jew, but applied to several, choosing always the most learned preface to Hosea: "diceremque.

With similar words Jerome is always attempting to inspire confidence in his exegesis; but they must not be taken too literally, as he was wont to boast of his scholarship.

Of only three of his teachers is anything definite known. He was occasionally unwilling to explain the text ib. Jerome was frequently not satisfied with his teacher's exegesis, and disputed with him; and he often says that he merely read the Scriptures with him comm.

Another teacher is called "Baranina," i. He acquainted Jerome with a mass of Hebrew traditions, some of which referred especially to his native place, Tiberias.

This teacher of Aramaic was very prominent among the Jews, and Jerome, who had great difficulty in learning Aramaic, was very well satisfied with his instruction prefaces to Tobit and Daniel.

Jerome continued to study with Jews during the forty years that he lived in Palestine comm. His enemies frequently took him to task for his intercourse with the Jews; but he answered: "How can loyalty to the Church be impaired merely because the reader is informed of the different ways in which a verse is interpreted by the Jews?

This sentence characterizes the Jewish exegesis of that time. Jerome's real intention in studying the Hebrew text is shown in the following sentence: "Why should I not be permitted,.

Then when the Christians dispute with them, they shall have no excuse" ib. Vallarsi, ii. This was a great blog.

Thank you for that. Probably not the answer you wanted to hear, though. The good news? There are LOTS of other ways good, ethical ways to promote your content.

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