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Misspecified diffusion models with high-frequency observations and an application to neural networks
[摘要] We study the asymptotic theory of misspecified models for diffusion processes with noisy nonsynchronous observations. Unlike with correctly specified models, the original maximum-likelihood-type estimator has an asymptotic bias under the misspecified setting and fails to achieve an optimal rate of convergence. To address this, we consider a new quasi-likelihood function that allows constructing a maximum-likelihood-type estimator that achieves the optimal rate of convergence. Study of misspecified models enables us to apply machine-learning techniques to the maximum-likelihood approach. With these techniques, we can efficiently study the microstructure of a stock market by using rich information of high-frequency data. Neural networks have particularly good compatibility with the maximum-likelihood approach, so we will consider an example of using a neural network for simulation studies and empirical analysis of high-frequency data from the Tokyo Stock Exchange. We demonstrate that the neural network outperforms polynomial models in volatility predictions for major stocks in Tokyo Stock Exchange. (C) 2021 The Author(s). Published by Elsevier B.V.
[发布日期] 2021-12-01 [发布机构] 
[效力级别]  [学科分类] 
[关键词] Diffusion processes;High-frequency data;Market microstructure noise;Maximum-likelihood-type estimation;Misspecified model;Neural network [时效性] 
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