KNNs of Semantic Encodings for Rating Prediction
Laugier, Léo, Vadapalli, Raghuram, Bonald, Thomas, Dixon, Lucas
–arXiv.org Artificial Intelligence
This paper explores a novel application of textual semantic similarity to user-preference representation for rating prediction. The approach represents a user's preferences as a graph of textual snippets from review text, where the edges are defined by semantic similarity. This textual, memory-based approach to rating prediction enables review-based explanations for recommendations. The method is evaluated quantitatively, highlighting that leveraging text in this way outperforms both strong memory-based and model-based collaborative filtering baselines.
arXiv.org Artificial Intelligence
Mar-28-2023
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