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Autores principales: Sachdeva, Bhavika, Rathee, Harshita, Sristi, Sharma, Arun, Wydmański, Witold
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2401.10942
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author Sachdeva, Bhavika
Rathee, Harshita
Sristi
Sharma, Arun
Wydmański, Witold
author_facet Sachdeva, Bhavika
Rathee, Harshita
Sristi
Sharma, Arun
Wydmański, Witold
contents This review explores machine unlearning (MUL) in recommendation systems, addressing adaptability, personalization, privacy, and bias challenges. Unlike traditional models, MUL dynamically adjusts system knowledge based on shifts in user preferences and ethical considerations. The paper critically examines MUL's basics, real-world applications, and challenges like algorithmic transparency. It sifts through literature, offering insights into how MUL could transform recommendations, discussing user trust, and suggesting paths for future research in responsible and user-focused artificial intelligence (AI). The document guides researchers through challenges involving the trade-off between personalization and privacy, encouraging contributions to meet practical demands for targeted data removal. Emphasizing MUL's role in secure and adaptive machine learning, the paper proposes ways to push its boundaries. The novelty of this paper lies in its exploration of the limitations of the methods, which highlights exciting prospects for advancing the field.
format Preprint
id arxiv_https___arxiv_org_abs_2401_10942
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Machine Unlearning for Recommendation Systems: An Insight
Sachdeva, Bhavika
Rathee, Harshita
Sristi
Sharma, Arun
Wydmański, Witold
Information Retrieval
Artificial Intelligence
Machine Learning
This review explores machine unlearning (MUL) in recommendation systems, addressing adaptability, personalization, privacy, and bias challenges. Unlike traditional models, MUL dynamically adjusts system knowledge based on shifts in user preferences and ethical considerations. The paper critically examines MUL's basics, real-world applications, and challenges like algorithmic transparency. It sifts through literature, offering insights into how MUL could transform recommendations, discussing user trust, and suggesting paths for future research in responsible and user-focused artificial intelligence (AI). The document guides researchers through challenges involving the trade-off between personalization and privacy, encouraging contributions to meet practical demands for targeted data removal. Emphasizing MUL's role in secure and adaptive machine learning, the paper proposes ways to push its boundaries. The novelty of this paper lies in its exploration of the limitations of the methods, which highlights exciting prospects for advancing the field.
title Machine Unlearning for Recommendation Systems: An Insight
topic Information Retrieval
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2401.10942