Enhanced Heartbeat Graph for emerging event detection on Twitter using time series networks
Published in Expert Systems with Applications, 2019
Recommended citation: Zafar Saeed, Rabeeh Abbasi, Imran Razzak, Onaiza Maqbool, Abida Sadaf, Guandong Xu, "Enhanced Heartbeat Graph for emerging event detection on Twitter using time series networks." Expert Systems with Applications, 2019. http://www.sciencedirect.com/science/article/pii/S0957417419304051
With increasing popularity of social media, Twitter has become one of the leading platforms to report events in real-time. Detecting events from Twitter stream requires complex techniques. Event-related trending topics consist of a group of words which successfully detect and identify events. Event detection techniques must be scalable and robust, so that they can deal with the huge volume and noise associated with social media. Existing event detection methods mostly rely on burstiness, mainly the frequency of words and their co-occurrences. However, burstiness sometimes dominates other relevant details in the data which could be equally significant. Besides, the topological and temporal relationships in the data are often ignored. In this work, we propose a novel graph-based approach, called the Enhanced Heartbeat Graph (EHG), which detects events efficiently. EHG suppresses dominating topics in the subsequent data stream, after their first detection. Experimental results on three real-world datasets (i.e., Football Association Challenge Cup Final, Super Tuesday, and the US Election 2012) show superior performance of the proposed approach in comparison to the state-of-the-art techniques.