Hawkes Process Classification through Discriminative Modeling of Text
Rohan Tondulkar, Manisha Dubey, P.K. Srijith, Michal Lukasik

TL;DR
This paper introduces a novel discriminative Hawkes process model that integrates temporal, textual, and historical information to improve short text classification on social media platforms like Twitter.
Contribution
It proposes a new Hawkes process-based discriminative model that incorporates text features and neural network-parameterized kernels for better tweet classification.
Findings
Improved rumour stance classification accuracy
Effective modeling of temporal and textual cues
Demonstrated advantages on benchmark datasets
Abstract
Social media has provided a platform for users to gather and share information and stay updated with the news. Such networks also provide a platform to users where they can engage in conversations. However, such micro-blogging platforms like Twitter restricts the length of text. Due to paucity of sufficient word occurrences in such posts, classification of this information is a challenging task using standard tools of natural language processing (NLP). Moreover, high complexity and dynamics of the posts in social media makes text classification a challenging problem. However, considering additional cues in the form of past labels and times associated with the post can be potentially helpful for performing text classification in a better way. To address this problem, we propose models based on the Hawkes process (HP) which can naturally incorporate the temporal features and past labels…
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Taxonomy
TopicsForensic and Genetic Research · Yersinia bacterium, plague, ectoparasites research
