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4 months ago

Hybrid Recommender System based on Autoencoders

Florian Strub; Romaric Gaudel; Jérémie Mary

Hybrid Recommender System based on Autoencoders

Abstract

A standard model for Recommender Systems is the Matrix Completion setting: given partially known matrix of ratings given by users (rows) to items (columns), infer the unknown ratings. In the last decades, few attempts where done to handle that objective with Neural Networks, but recently an architecture based on Autoencoders proved to be a promising approach. In current paper, we enhanced that architecture (i) by using a loss function adapted to input data with missing values, and (ii) by incorporating side information. The experiments demonstrate that while side information only slightly improve the test error averaged on all users/items, it has more impact on cold users/items.

Code Repositories

fstrub95/Autoencoders_cf
Official
pytorch
Mentioned in GitHub
Recvani/benchmark
Mentioned in GitHub

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Hybrid Recommender System based on Autoencoders | Papers | HyperAI