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火狐直播点击题目: Adaptive estimation for functional data: Using a framelet block-thresholding method
报 告 人: 陈迪荣 教授
火狐直播点击人所在单位: 北京航天航空大学数学科学学院
火狐直播点击日期: 2022-07-11
火狐直播点击时间: 10:00-11:30
火狐直播点击地点: 腾讯会议ID:551743996, 密码: 200433
   
火狐直播点击摘要:
Nonparametric estimation of mean and covariance functions based on discretely observed data is important in functional data analysis. In this talk, we propose a framelet block-thresholding method for estimating mean and covariance functions from discretely sampled noisy observations. Estimated convergence rates are established for all types of sampling schemes. In particular, the results reveal a phase transition phenomenon related to the number of observations on each curve. The procedures are adaptive in automatically adjusting the smoothness properties of the underlying mean and covariance functions. In contrast, theoretical results for other smoothing methods hold in the setting where smoothness parameters are assumed to be known, since the regularization parameters of estimators that depend on smoothness properties need to be chosen carefully. Simulation studies and real data examples are provided to offer empirical support for the theoretical results. A comparison with other methods demonstrates that the proposed method outperforms in adaptivity.

学术火狐直播点击海报.pdf

   
本年度学院火狐直播点击总序号: 497

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