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A General Framework for Multi-fidelity Bayesian Optimization with Gaussian Processes

机译:具有高斯过程的多保真贝叶斯优化的通用框架

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How can we efficiently gather information to optimize an unknown function, when presented with multiple, mutually dependent information sources with different costs? For example, when optimizing a physical system, intelligently trading off computer simulations and real-world tests can lead to significant savings. Existing multi-fidelity Bayesian optimization methods, such as multi-fidelity GP-UCB or Entropy Search-based approaches, either make simplistic assumptions on the interaction among different fidelities or use simple heuristics that lack theoretical guarantees. In this paper, we study multi-fidelity Bayesian optimization with complex structural dependencies among multiple outputs, and propose MF-MI-Greedy, a principled algorithmic framework for addressing this problem. In particular, we model different fidelities using additive Gaussian processes based on shared latent relationships with the target function. Then we use cost-sensitive mutual information gain for efficient Bayesian optimization. We propose a simple notion of regret which incorporates the varying cost of different fidelities, and prove that MF-MI-Greedy achieves low regret. We demonstrate the strong empirical performance of our algorithm on both synthetic and real-world datasets.
机译:当出现具有不同成本的多个相互依赖的信息源时,我们如何有效地收集信息以优化未知功能?例如,在优化物理系统时,智能地权衡计算机仿真和实际测试可以节省大量资金。现有的多保真贝叶斯优化方法(例如多保真GP-UCB或基于熵搜索的方法)对不同保真度之间的交互进行了简单的假设,或者使用了缺乏理论保证的简单启发式方法。在本文中,我们研究了在多个输出之间具有复杂结构依赖性的多保真贝叶斯优化,并提出了MF-MI-Greedy,这是一个解决该问题的有原则的算法框架。特别是,我们基于与目标函数共享的潜在关系,使用加性高斯过程对不同保真度进行建模。然后,我们使用对成本敏感的互信息增益进行有效的贝叶斯优化。我们提出了一个简单的遗憾概念,该概念包含了不同保真度的不同成本,并证明MF-MI-Greedy的遗憾程度较低。我们证明了我们的算法在综合和真实数据集上的强大经验性能。

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