Linking multiple news streams based on the reported events and analyzing the streams’ temporal publishing patterns are two very important tasks for information analysis, discovering newsworthy stories, studying the event evolution, and detecting untrustworthy sources of information. In this paper, we propose techniques for cross-linking news streams based on the reported events with the purpose of analyzing the temporal dependencies among streams. Our research tackles two main issues: (1) how news streams are connected as reporting an event or the evolution of the same event and (2) how timely the newswires report related events using different publishing platforms. Our approach is based on dynamic topic modeling for detecting and tracking...
When comparing media coverage or analysing which content people are exposed to, researchers need to ...
Temporal information is an important attribute of a topic, and a topic usually exists in a limited p...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...
In recent years social media have become indispensable tools for information dissemination, operatin...
In recent years social media have become indispensable tools for information dissemination, operatin...
With the overwhelming volume of online news available today, there is an increasing need for automat...
Currently news flood spreads throughout the web. The techniques of Event Detection and Tracking make...
Abstract. Online news has become increasingly prevalent as it helps the public access timely informa...
Online news sources produce thousands of news articles every day, reporting on local and global real...
Online news sources produce thousands of news articles every day, reporting on local and global real...
The overwhelming amount of online news presents a challenge called news information overload. To mit...
This paper describes a domain-independent, machine-learning based approach to temporally anchoring a...
This paper describes a domain-independent, machine-learning based approach to temporally anchoring a...
Finding new ways of extracting and analyzing useful information from exploding volumes of unstructur...
Finding new ways of extracting and analyzing useful information from exploding volumes of unstructur...
When comparing media coverage or analysing which content people are exposed to, researchers need to ...
Temporal information is an important attribute of a topic, and a topic usually exists in a limited p...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...
In recent years social media have become indispensable tools for information dissemination, operatin...
In recent years social media have become indispensable tools for information dissemination, operatin...
With the overwhelming volume of online news available today, there is an increasing need for automat...
Currently news flood spreads throughout the web. The techniques of Event Detection and Tracking make...
Abstract. Online news has become increasingly prevalent as it helps the public access timely informa...
Online news sources produce thousands of news articles every day, reporting on local and global real...
Online news sources produce thousands of news articles every day, reporting on local and global real...
The overwhelming amount of online news presents a challenge called news information overload. To mit...
This paper describes a domain-independent, machine-learning based approach to temporally anchoring a...
This paper describes a domain-independent, machine-learning based approach to temporally anchoring a...
Finding new ways of extracting and analyzing useful information from exploding volumes of unstructur...
Finding new ways of extracting and analyzing useful information from exploding volumes of unstructur...
When comparing media coverage or analysing which content people are exposed to, researchers need to ...
Temporal information is an important attribute of a topic, and a topic usually exists in a limited p...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...