Burst detection is an important topic in temporal stream analysis. Usually, only the textual features are used in burst detection. In the theme extraction from current prevailing social media content, it is necessary to consider not only textual features but also the pervasive collaborative context, e.g., resource lifetime and user activity. This paper explores novel approaches to combine multiple sources of such indication for better burst extraction. We systematically investigate the characters of collaborative context, i.e., metadata frequency, topic coverage and user attractiveness. First, a robust state based model is utilized to detect bursts from individual streams. We then propose a learning method to combine these burst pulses. Ex...
Abstract—This paper introduces a general technique, called LABurst, for identifying key moments, or ...
Thesis: S.M., Massachusetts Institute of Technology, School of Architecture and Planning, Program in...
This dissertation presents a Context based Event Detection model for social text streams. The main m...
Real-world events of general interest trigger engaging discussions among peoplefor short bursts in t...
Detecting bursts of interest among user communities on social media towards the various publications...
Recently, social text streams (e.g., blogs, web forums, and emails) have become ubiquitous with the ...
Collaborative tagging have emerged as a ubiquitous way to annotate and organize online resources. As...
Detecting and using bursty patterns to analyze text streams has been one of the fundamental approach...
Bursty features in text streams are very useful in many text mining applications. Most existing stud...
In recent years, microblogs have become an important source for reporting real-world events. A real-...
In recent years, microblogs have become an important source for reporting real-world events. A real-...
Combining items from social media streams, such as Flickr photos and Twitter tweets, into meaningful...
In this paper, we propose to detect events from social text streams by exploring the content as well...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...
Mining retrospective events from text streams has been an important research topic. Classic text rep...
Abstract—This paper introduces a general technique, called LABurst, for identifying key moments, or ...
Thesis: S.M., Massachusetts Institute of Technology, School of Architecture and Planning, Program in...
This dissertation presents a Context based Event Detection model for social text streams. The main m...
Real-world events of general interest trigger engaging discussions among peoplefor short bursts in t...
Detecting bursts of interest among user communities on social media towards the various publications...
Recently, social text streams (e.g., blogs, web forums, and emails) have become ubiquitous with the ...
Collaborative tagging have emerged as a ubiquitous way to annotate and organize online resources. As...
Detecting and using bursty patterns to analyze text streams has been one of the fundamental approach...
Bursty features in text streams are very useful in many text mining applications. Most existing stud...
In recent years, microblogs have become an important source for reporting real-world events. A real-...
In recent years, microblogs have become an important source for reporting real-world events. A real-...
Combining items from social media streams, such as Flickr photos and Twitter tweets, into meaningful...
In this paper, we propose to detect events from social text streams by exploring the content as well...
News and twitter are sometimes closely correlated, while sometimes each of them has quite independen...
Mining retrospective events from text streams has been an important research topic. Classic text rep...
Abstract—This paper introduces a general technique, called LABurst, for identifying key moments, or ...
Thesis: S.M., Massachusetts Institute of Technology, School of Architecture and Planning, Program in...
This dissertation presents a Context based Event Detection model for social text streams. The main m...