IRAIAug 1, 2023

Collaborative filtering to capture AI user's preferences as norms

arXiv:2308.02542v23 citationsh-index: 39
Originality Synthesis-oriented
AI Analysis

This addresses the issue of user inconvenience in setting AI preferences, though it appears incremental by applying existing collaborative filtering techniques to a new context.

The paper tackles the problem of excessive user involvement in customizing AI technologies by proposing collaborative filtering to capture user preferences as norms, aiming to reduce manual input while better aligning with true preferences.

Customising AI technologies to each user's preferences is fundamental to them functioning well. Unfortunately, current methods require too much user involvement and fail to capture their true preferences. In fact, to avoid the nuisance of manually setting preferences, users usually accept the default settings even if these do not conform to their true preferences. Norms can be useful to regulate behaviour and ensure it adheres to user preferences but, while the literature has thoroughly studied norms, most proposals take a formal perspective. Indeed, while there has been some research on constructing norms to capture a user's privacy preferences, these methods rely on domain knowledge which, in the case of AI technologies, is difficult to obtain and maintain. We argue that a new perspective is required when constructing norms, which is to exploit the large amount of preference information readily available from whole systems of users. Inspired by recommender systems, we believe that collaborative filtering can offer a suitable approach to identifying a user's norm preferences without excessive user involvement.

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