
TL;DR
This paper introduces a novel continuous-time infinite dynamic topic model that simultaneously captures the evolving number of topics and their structures over continuous time, improving upon previous models that handled these aspects separately.
Contribution
The paper presents a new probabilistic topic model that combines continuous-time evolution with an unbounded number of topics, addressing limitations of existing models.
Findings
Model outperforms existing models in experiments.
Shows the importance of continuous-time modeling.
Demonstrates dynamic topic structure changes over time.
Abstract
Topic models are probabilistic models for discovering topical themes in collections of documents. In real world applications, these models provide us with the means of organizing what would otherwise be unstructured collections. They can help us cluster a huge collection into different topics or find a subset of the collection that resembles the topical theme found in an article at hand. The first wave of topic models developed were able to discover the prevailing topics in a big collection of documents spanning a period of time. It was later realized that these time-invariant models were not capable of modeling 1) the time varying number of topics they discover and 2) the time changing structure of these topics. Few models were developed to address this two deficiencies. The online-hierarchical Dirichlet process models the documents with a time varying number of topics. It varies the…
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