A Disentangled Adversarial Neural Topic Model for Separating Opinions from Plots in User Reviews
Description
This is the code of the DIATOM model presented in the NAACL 2021 paper:
A Disentangled Adversarial Neural Topic Model for Separating Opinions from Plots in User Reviews, G. Pergola, L. Gui, Y. He, NAACL 2021
[link]
Abstract: "The flexibility of the inference process in Variational Autoencoders (VAEs) has recently led to revising traditional probabilistic topic models giving rise to Neural Topic Models (NTM). Although these approaches have achieved significant results, surprisingly very little work has been done on how to disentangle the latent topics. Existing topic models when applied to reviews may extract topics associated with writers’ subjective opinions mixed with those related to factual descriptions such as plot summaries in movie and book reviews. It is thus desirable to automatically separate opinion topics from plot/neutral ones enabling a better interpretability. In this paper, we propose a neural topic model combined with adversarial training to disentangle opinion topics from plot and neutral ones. We conduct an extensive experimental assessment introducing a new collection of movie and book reviews paired with their plots, namely MOBO dataset, showing an improved coherence and variety of topics, a consistent disentanglement rate, and sentiment classification performance superior to other supervised topic models."
Files
diatom-master.zip
Files
(1.9 MB)
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Additional details
Funding
- UK Research and Innovation
- Turing AI Fellowship: Event-Centric Framework for Natural Language Understanding EP/V020579/1
- UK Research and Innovation
- Learning from COVID-19: An AI-enabled evidence-driven framework for claim veracity assessment during pandemics EP/V048597/1
- UK Research and Innovation
- Twenty20Insight EP/T017112/1