LGMEApr 20

Collaborative Contextual Bayesian Optimization

arXiv:2604.1891213.3h-index: 22Has Code
Predicted impact top 43% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For practitioners needing to optimize designs across multiple related but heterogeneous clients, CCBO provides a collaborative framework that improves learning efficiency with privacy-preserving options.

CCBO enables multiple clients to jointly perform contextual Bayesian optimization with controllable contexts, achieving sublinear regret and substantial improvements over existing methods in simulations and a real-world hot rolling application.

Discovering optimal designs through sequential data collection is essential in many real-world applications. While Bayesian Optimization (BO) has achieved remarkable success in this setting, growing attention has recently turned to context-specific optimal design, formalized as Contextual Bayesian Optimization (CBO). Unlike BO, CBO is inherently more challenging as it must approximate an entire mapping from the context space to its corresponding optimal design, requiring simultaneous exploration across contexts and exploitation within each. In many modern applications, such tasks arise across multiple potentially heterogeneous but related clients, where collaboration can significantly improve learning efficiency. We propose CCBO, Collaborative Contextual Bayesian Optimization, a unified framework enabling multiple clients to jointly perform CBO with controllable contexts, supporting both online collaboration and offline initialization from peers' historical beliefs, with an optional privacy-preserving communication mechanism. We establish sublinear regret guarantees and demonstrate, through extensive simulations and a real-world hot rolling application, that CCBO achieves substantial improvements over existing approaches even under client heterogeneity. The code to reproduce the results can be found at https://github.com/cchihyu/Collaborative-Contextual-Bayesian-Optimization

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