IRCRLGAug 10, 2022

Trustworthy Recommender Systems

arXiv:2208.06265v3108 citationsh-index: 105
Originality Synthesis-oriented
AI Analysis

This work offers a foundational review for researchers and practitioners in recommender systems, highlighting the need to address threats like attacks and bias, but it is incremental as it synthesizes existing literature rather than introducing new methods.

The paper addresses the shift from accuracy-focused recommender systems to trustworthy ones, which must also be transparent, unbiased, fair, and robust, and provides a systematic overview and conceptual framework for this emerging field.

Recommender systems (RSs) aim to help users to effectively retrieve items of their interests from a large catalogue. For a quite long period of time, researchers and practitioners have been focusing on developing accurate RSs. Recent years have witnessed an increasing number of threats to RSs, coming from attacks, system and user generated noise, system bias. As a result, it has become clear that a strict focus on RS accuracy is limited and the research must consider other important factors, e.g., trustworthiness. For end users, a trustworthy RS (TRS) should not only be accurate, but also transparent, unbiased and fair as well as robust to noise or attacks. These observations actually led to a paradigm shift of the research on RSs: from accuracy-oriented RSs to TRSs. However, researchers lack a systematic overview and discussion of the literature in this novel and fast developing field of TRSs. To this end, in this paper, we provide an overview of TRSs, including a discussion of the motivation and basic concepts of TRSs, a presentation of the challenges in building TRSs, and a perspective on the future directions in this area. We also provide a novel conceptual framework to support the construction of TRSs.

Foundations

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