Transactions of the Association for Computational Linguistics (Jan 2023)

Tracking Brand-Associated Polarity-Bearing Topics in User Reviews

  • Runcong Zhao,
  • Lin Gui,
  • Hanqi Yan,
  • Yulan He

DOI
https://doi.org/10.1162/tacl_a_00555
Journal volume & issue
Vol. 11
pp. 404 – 418

Abstract

Read online

AbstractMonitoring online customer reviews is important for business organizations to measure customer satisfaction and better manage their reputations. In this paper, we propose a novel dynamic Brand-Topic Model (dBTM) which is able to automatically detect and track brand-associated sentiment scores and polarity-bearing topics from product reviews organized in temporally ordered time intervals. dBTM models the evolution of the latent brand polarity scores and the topic-word distributions over time by Gaussian state space models. It also incorporates a meta learning strategy to control the update of the topic-word distribution in each time interval in order to ensure smooth topic transitions and better brand score predictions. It has been evaluated on a dataset constructed from MakeupAlley reviews and a hotel review dataset. Experimental results show that dBTM outperforms a number of competitive baselines in brand ranking, achieving a good balance of topic coherence and uniqueness, and extracting well-separated polarity-bearing topics across time intervals.1