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An optimal local bandwidth selector for kernel density estimation
Institution:1. Department of Automation, Tsinghua University, Beijing 100084 China;2. China Property and Casualty Reinsurance Co., Ltd., Beijing 100033 China;3. Zhengzhou Huali Information Technology Co., Ltd., Henan 450000 China;1. College of Information Science and Engineering, Northeastern University, Shenyang, Liaoning Province 110819, China;2. College of Information Engineering, Shenyang university of Chemical Technology, Shenyang, Liaoning Province, 110142 China
Abstract:The problem of selecting the bandwidth for optimal kernel density estimation at a point is considered. A class of local bandwidth selectors which minimize smoothed bootstrap estimates of mean-squared error in density estimation is introduced. It is proved that the bandwidth selectors in the class achieve optimal relative rates of convergence, dependent upon the local smoothness of the target density. Practical implementation of the bandwidth selection methodology is discussed. The use of Gaussian-based kernels to facilitate computation of the smoothed bootstrap estimate of mean-squared error is proposed. The performance of the bandwidth selectors is investigated empirically.
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