Comparative Performance of Collaborative Bandit Algorithms: Effect of Sparsity and Exploration Intensity
Eren Ozbay, Ashkan Golgoon

TL;DR
This paper analyzes collaborative bandit algorithms, focusing on how sparsity and exploration intensity affect their performance, and demonstrates that proper control of these factors enhances data efficiency and learning accuracy.
Contribution
It provides a comprehensive comparison of collaborative bandit algorithms, highlighting the impact of sparsity and exploration intensity, and shows how latent factors can mitigate relationship misspecification.
Findings
Controlling sparsity improves data efficiency.
Increasing exploration reduces variance from misspecified relationships.
Latent factors help remedy relationship misspecification.
Abstract
This paper offers a comprehensive analysis of collaborative bandit algorithms and provides a thorough comparison of their performance. Collaborative bandits aim to improve the performance of contextual bandits by introducing relationships between arms (or items), allowing effective propagation of information. Collaboration among arms allows the feedback obtained through a single user (item) to be shared across related users (items). Introducing collaboration also alleviates the cold user (item) problem, i.e., lack of historical information when a new user (item) arriving to the platform with no prior record of interactions. In the context of modeling the relationships between arms (items), there are two main approaches: Hard and soft clustering. We call approaches that model the relationship between arms in an \textit{absolute} manner as hard clustering, i.e., the relationship is…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Data Stream Mining Techniques · Auction Theory and Applications
