报告题目:Random Forests and Deep Neural Networks for Euclidean and Non-Euclidean regression
报告时间:2023-11-21 10:00-11:00
报 告 人 :於州 教授 华东师范大学
报告地点:理学院东北楼一楼报告厅(110)
Abstract:Neural networks and random forests
are popular and promising tools for machine learning. We explore the proper
integration of these two approaches for nonparametric regression to improve the
performance of a single approach. It naturally synthesizes the local relation
adaptivity of random forests and the strong global approximation ability of
neural networks.. By utilizing advanced U-process theory and an appropriate
network structure, we obtain the minimax convergence rate for the estimator.
Moreover, we propose the novel random forest weighted local Frechetregression paradigm for regression with Non-Euclidean responses. We establish
the consistency, rate of convergence, and asymptotic normality for the
Non-Euclidean random forests based estimator.