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Solutions to preference manipulation in recommender systems require knowledge of meta-preferences

2022-09-14 15:01:13
Hal Ashton, Matija Franklin

Abstract

Iterative machine learning algorithms used to power recommender systems often change people's preferences by trying to learn them. Further a recommender can better predict what a user will do by making its users more predictable. Some preference changes on the part of the user are self-induced and desired whether the recommender caused them or not. This paper proposes that solutions to preference manipulation in recommender systems must take into account certain meta-preferences (preferences over another preference) in order to respect the autonomy of the user and not be manipulative.

Abstract (translated)

URL

https://arxiv.org/abs/2209.11801

PDF

https://arxiv.org/pdf/2209.11801.pdf


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