We propose a method for detecting large events based on the structure of temporal communication networks. Our method is motivated by findings that viral information spreading has distinct diffusion patterns with respect to community structure. Namely, we hypothesize that global events trigger viral information cascades that easily cross community boundaries and can thus be detected by monitoring intra- and inter-community communications. By comparing the amount of communication within and across communities, we show that it is possible to detect events, even when they do not trigger a significantly larger communication volume. We demonstrate the effectiveness of our method using two examples—the email communication network of Enron and the ...
Abstract: Many complex systems in nature, society and technology- from the online social networks to...
The problem of event detection based on social media has attracted researchers’ attention recently b...
Recent research has focused on the monitoring of global–scale online data for improved detection of ...
In this work, we focus on social interactions in communities in order to detect events. There are se...
Event detection is a popular research problem, aiming to detect events from online data sources with...
<p>This dataset contains daily tweets ids during April 2013. This is provided to facilitate reproduc...
Time-evolving relationships between entities in many complex systems are captured by temporal networ...
This dataset contains daily tweets ids during April 2013. This is provided to facilitate reproducibi...
Many real-world systems can be represented as networks driven by discrete {em events}, each event id...
Recently, social text streams (e.g., blogs, web forums, and emails) have become ubiquitous with the ...
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-...
Recently, social text streams (e.g., blogs, web forums, and emails) have become ubiquitous with the ...
Many real-world systems can be represented as networks driven by discrete events, each event identif...
Abstract—This paper describes a methodology for finding and describing significant events in time ev...
Abstract: Many complex systems in nature, society and technology- from the online social networks to...
The problem of event detection based on social media has attracted researchers’ attention recently b...
Recent research has focused on the monitoring of global–scale online data for improved detection of ...
In this work, we focus on social interactions in communities in order to detect events. There are se...
Event detection is a popular research problem, aiming to detect events from online data sources with...
<p>This dataset contains daily tweets ids during April 2013. This is provided to facilitate reproduc...
Time-evolving relationships between entities in many complex systems are captured by temporal networ...
This dataset contains daily tweets ids during April 2013. This is provided to facilitate reproducibi...
Many real-world systems can be represented as networks driven by discrete {em events}, each event id...
Recently, social text streams (e.g., blogs, web forums, and emails) have become ubiquitous with the ...
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-...
Recently, social text streams (e.g., blogs, web forums, and emails) have become ubiquitous with the ...
Many real-world systems can be represented as networks driven by discrete events, each event identif...
Abstract—This paper describes a methodology for finding and describing significant events in time ev...
Abstract: Many complex systems in nature, society and technology- from the online social networks to...
The problem of event detection based on social media has attracted researchers’ attention recently b...
Recent research has focused on the monitoring of global–scale online data for improved detection of ...