Sub-event discovery is an effective method for social event analysis in Twitter. It can discover sub-events from large amount of noisy event-related information in Twitter and semantically represent them. The task is challenging because tweets are short, informal and noisy. To solve this problem, we consider leveraging event-related hashtags that contain many locations, dates and concise sub-event related descriptions to enhance sub-event discovery. To this end, we propose a hashtag-based mutually generative Latent Dirichlet Allocation model(MGe-LDA). In MGe-LDA, hashtags and topics of a tweet are mutually generated by each other. The mutually generative process models the relationship between hashtags and topics of tweets, and highlights ...
Latent Dirichlet allocation (LDA) is a topic model that has been applied to var-ious fields, includi...
Event detection over microblogs has attracted great research interest due to its wide application in...
We describe the methodology that we followed to automatically extract topics corresponding to known ...
In this work, we present an event detection method in Twitter based on clustering of hashtags and in...
Copyright © 2015 Duc-Thuan Vo et al. This is an open access article distributed under the Creative C...
In this work, we present an event detection method in Twitter based on clustering of hashtags and in...
With its rapid users growth, Twitter has become an essential source of information about what events...
With the rapid growth of social media, Twitter has become one of the most widely adopted platforms f...
Event detection on Twitter has become a promising research direction due to Twitter\u27s popularity,...
A major event often has repercussions on both news media and microblogging sites such as Twitter. Re...
A major event often has repercussions on both news media and microblogging sites such as Twitter. Re...
Texts can be characterized from their content using machine learning and natural language processing...
Microblogging as a kind of social network has become more and more important in our daily lives. Eno...
Latent Dirichlet allocation (LDA) is a topic model that has been applied to var-ious fields, includi...
This paper aims to enhance event detection methods in a micro-blogging platform, namely Twitter. The...
Latent Dirichlet allocation (LDA) is a topic model that has been applied to var-ious fields, includi...
Event detection over microblogs has attracted great research interest due to its wide application in...
We describe the methodology that we followed to automatically extract topics corresponding to known ...
In this work, we present an event detection method in Twitter based on clustering of hashtags and in...
Copyright © 2015 Duc-Thuan Vo et al. This is an open access article distributed under the Creative C...
In this work, we present an event detection method in Twitter based on clustering of hashtags and in...
With its rapid users growth, Twitter has become an essential source of information about what events...
With the rapid growth of social media, Twitter has become one of the most widely adopted platforms f...
Event detection on Twitter has become a promising research direction due to Twitter\u27s popularity,...
A major event often has repercussions on both news media and microblogging sites such as Twitter. Re...
A major event often has repercussions on both news media and microblogging sites such as Twitter. Re...
Texts can be characterized from their content using machine learning and natural language processing...
Microblogging as a kind of social network has become more and more important in our daily lives. Eno...
Latent Dirichlet allocation (LDA) is a topic model that has been applied to var-ious fields, includi...
This paper aims to enhance event detection methods in a micro-blogging platform, namely Twitter. The...
Latent Dirichlet allocation (LDA) is a topic model that has been applied to var-ious fields, includi...
Event detection over microblogs has attracted great research interest due to its wide application in...
We describe the methodology that we followed to automatically extract topics corresponding to known ...