Bidirectional Information Flow (BIF) -- A Sample Efficient Hierarchical Gaussian Process for Bayesian Optimization
Bidirectional Information Flow (BIF) -- A Sample Efficient Hierarchical Gaussian Process for Bayesian Optimization
Hierarchical Gaussian Process (H-GP) models divide problems into different subtasks, allowing for different models to address each part, making them well-suited for problems with inherent hierarchical structure. However, typical H-GP models do not fully take advantage of this structure, only sending information up or down the hierarchy. This one-way coupling limits sample efficiency and slows convergence. We propose Bidirectional Information Flow (BIF), an efficient H-GP framework that establishes bidirectional information exchange between parent and child models in H-GPs for online training. BIF retains the modular structure of hierarchical models - the parent combines subtask knowledge from children GPs - while introducing top-down feedback to continually refine children models during online learning. This mutual exchange improves sample efficiency, enables robust training, and allows modular reuse of learned subtask models. BIF outperforms conventional H-GP Bayesian Optimization methods, achieving up to 85% and 5x higher $R^2$ scores for the parent and children respectively, on synthetic and real-world neurostimulation optimization tasks.
Thomas Garbay、Guillaume Lajoie、Marco Bonizzato、Juan D. Guerra
Polytechnique MontréalUniversité de MontréalPolytechnique MontréalPolytechnique Montréal
自然科学研究方法控制理论、控制技术计算技术、计算机技术
Thomas Garbay,Guillaume Lajoie,Marco Bonizzato,Juan D. Guerra.Bidirectional Information Flow (BIF) -- A Sample Efficient Hierarchical Gaussian Process for Bayesian Optimization[EB/OL].(2025-05-16)[2025-07-02].https://arxiv.org/abs/2505.11294.点此复制
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