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A First Principles Approach to Trust-Based Recommendation Systems (2407.00062v1)
Published 17 Jun 2024 in cs.IR
Abstract: This paper explores recommender systems in social networks which leverage information such as item rating, intra-item similarities, and trust graph. We demonstrate that item-rating information is more influential than other information types in a collaborative filtering approach. The trust graph-based approaches were found to be more robust to network adversarial attacks due to hard-to-manipulate trust structures. Intra-item information, although sub-optimal in isolation, enhances the consistency of predictions and lower-end performance when fused with other information forms. Additionally, the Weighted Average framework is introduced, enabling the construction of recommendation systems around any user-to-user similarity metric.
- Paras Stefanopoulos (1 paper)
- Ahad N. Zehmakan (35 papers)
- Sourin Chatterjee (9 papers)