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      Topological Bayesian Optimization with Persistence Diagrams

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          Abstract

          Finding an optimal parameter of a black-box function is important for searching stable material structures and finding optimal neural network structures, and Bayesian optimization algorithms are widely used for the purpose. However, most of existing Bayesian optimization algorithms can only handle vector data and cannot handle complex structured data. In this paper, we propose the topological Bayesian optimization, which can efficiently find an optimal solution from structured data using \emph{topological information}. More specifically, in order to apply Bayesian optimization to structured data, we extract useful topological information from a structure and measure the proper similarity between structures. To this end, we utilize persistent homology, which is a topological data analysis method that was recently applied in machine learning. Moreover, we propose the Bayesian optimization algorithm that can handle multiple types of topological information by using a linear combination of kernels for persistence diagrams. Through experiments, we show that topological information extracted by persistent homology contributes to a more efficient search for optimal structures compared to the random search baseline and the graph Bayesian optimization algorithm.

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          A New Method of Locating the Maximum Point of an Arbitrary Multipeak Curve in the Presence of Noise

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            A review of urban transportation network design problems

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              CALYPSO structure prediction method and its wide application

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                Author and article information

                Journal
                25 February 2019
                Article
                1902.09722
                eafe074c-5e74-4b25-a134-750a155091b0

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                cs.LG stat.ML

                Machine learning,Artificial intelligence
                Machine learning, Artificial intelligence

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