TL;DR
This paper introduces NAECF, a method using adversarial autoencoders with text-based CNNs to reduce mainstream bias in recommender systems, improving recommendations for non-mainstream users without sacrificing overall quality.
Contribution
The paper proposes a novel autoencoder-based approach to mitigate mainstream bias in collaborative filtering, enhancing recommendation fairness for non-mainstream users.
Findings
Significant improvement in recommendations for non-mainstream users.
Maintained recommendation quality for mainstream users.
Highlighting the importance of content features like online reviews.
Abstract
In a collaborative-filtering recommendation scenario, biases in the data will likely propagate in the learned recommendations. In this paper we focus on the so-called mainstream bias: the tendency of a recommender system to provide better recommendations to users who have a mainstream taste, as opposed to non-mainstream users. We propose NAECF, a conceptually simple but effective idea to address this bias. The idea consists of adding an autoencoder (AE) layer when learning user and item representations with text-based Convolutional Neural Networks. The AEs, one for the users and one for the items, serve as adversaries to the process of minimizing the rating prediction error when learning how to recommend. They enforce that the specific unique properties of all users and items are sufficiently well incorporated and preserved in the learned representations. These representations,…
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