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Bayesian Optimization of Combinatorial Structures

机译:组合结构的贝叶斯优化

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The optimization of expensive-to-evaluate black-box functions over combinatorial structures is an ubiquitous task in machine learning, engineering and the natural sciences. The combinatorial explosion of the search space and costly evaluations pose challenges for current techniques in discrete optimization and machine learning, and critically require new algorithmic ideas. This article proposes, to the best of our knowledge, the first algorithm to overcome these challenges, based on an adaptive, scalable model that identifies useful combinatorial structure even when data is scarce. Our acquisition function pioneers the use of semidefinite programming to achieve efficiency and scalability. Experimental evaluations demonstrate that this algorithm consistently outperforms other methods from combinatorial and Bayesian optimization.
机译:优化组合结构上的昂贵黑盒功能是机器学习,工程和自然科学中的无处不在的任务。搜索空间的组合爆炸和昂贵的评估对离散优化和机器学习中的当前技术构成挑战,并且重点需要新的算法思想。本文提出,据我们所知,第一种克服这些挑战的基于自适应可扩展模型,即使数据是稀缺的。我们的采集功能先驱使用SEMIDEFINITE编程来实现效率和可扩展性。实验评估表明,该算法始终如一地优于组合和贝叶斯优化的其他方法。

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