Item Recommendation with Evolving User Preferences and Experience
Subhabrata Mukherjee, Hemank Lamba, Gerhard Weikum

TL;DR
This paper introduces a novel generative model that captures individual user experience evolution through review texts and ratings, enhancing personalized recommendations and user experience assessment.
Contribution
It develops a joint HMM-LDA model to track user experience and interests over time using only review data, improving rating prediction and user modeling.
Findings
Model outperforms state-of-the-art baselines in rating prediction
Effectively assesses user experience levels
Demonstrates significant improvement across five real-world datasets
Abstract
Current recommender systems exploit user and item similarities by collaborative filtering. Some advanced methods also consider the temporal evolution of item ratings as a global background process. However, all prior methods disregard the individual evolution of a user's experience level and how this is expressed in the user's writing in a review community. In this paper, we model the joint evolution of user experience, interest in specific item facets, writing style, and rating behavior. This way we can generate individual recommendations that take into account the user's maturity level (e.g., recommending art movies rather than blockbusters for a cinematography expert). As only item ratings and review texts are observables, we capture the user's experience and interests in a latent model learned from her reviews, vocabulary and writing style. We develop a generative HMM-LDA model to…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Sentiment Analysis and Opinion Mining
