Given the proliferation of social media and the abundance of news feeds, a substantial amount of real-time content is distributed through disparate sources, which makes it increasingly difficult to glean and distill useful information. Although combining heterogeneous sources for topic detection has gained attention from several research communities, most of them fail to consider the interaction among different sources and their intertwined temporal dynamics. To address this concern, we studied the dynamics of topics from heterogeneous sources by exploiting both their individual properties (including temporal features) and their inter-relationships. We first implemented a heterogeneous topic model that enables topic–topic correspondence bet...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Abstract. Online news has become increasingly prevalent as it helps the public access timely informa...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Given the proliferation of social media and the abundance of news feeds, a substantial amount of rea...
Given the proliferation of social media and the abundance of news feeds, a substantial amount of rea...
Given the proliferation of social media and the abundance of news feeds, a substantial amount of rea...
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...
Discovering and tracking topic shifts in news constitutes a new challenge for applications nowadays....
Social media data tends to cluster in time and space around events, such as sports competitions and ...
Recent work in statistical topic models has investigated richer structures to capture either tempora...
Recent work in statistical topic models has investigated richer structures to capture either tempora...
Abstract—Online social and news media generate rich and timely information about real-world events o...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...
Much research has been concerned with deriving topics from Twitter and applying the outcomes in a va...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Abstract. Online news has become increasingly prevalent as it helps the public access timely informa...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Given the proliferation of social media and the abundance of news feeds, a substantial amount of rea...
Given the proliferation of social media and the abundance of news feeds, a substantial amount of rea...
Given the proliferation of social media and the abundance of news feeds, a substantial amount of rea...
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...
Discovering and tracking topic shifts in news constitutes a new challenge for applications nowadays....
Social media data tends to cluster in time and space around events, such as sports competitions and ...
Recent work in statistical topic models has investigated richer structures to capture either tempora...
Recent work in statistical topic models has investigated richer structures to capture either tempora...
Abstract—Online social and news media generate rich and timely information about real-world events o...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...
Much research has been concerned with deriving topics from Twitter and applying the outcomes in a va...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Abstract. Online news has become increasingly prevalent as it helps the public access timely informa...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...