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演講公告

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Generalized Point Process Additive Models

  • 2026-01-26 (Mon.), 10:30 AM
  • 統計所B1演講廳;茶 會:上午10:10。
  • 實體與線上視訊同步進行。
  • Prof. Kuang-Yao Lee (李光堯 副教授)
  • Department of Statistics, Operations, and Data Science, Fox School of Business Temple University, USA

Abstract

In this work, we propose a generalized point process additive model with a scalar response and high-dimensional point process predictors. Our proposal is built upon four key components: a realization of a point process as a random counting measure, a generalized point process regression framework, a new kernel function for random measure through kernel embedding, and a suite of low-dimensional structures including the additive model, reduced basis representation, and sparsity. We develop an efficient penalized likelihood procedure for model estimation, and establish both the estimation consistency and selection consistency of the estimator, while allowing the number of point process predictors to diverge. We illustrate and evaluate our method through simulations and an electronic health record data application. (This is joint work with Jiehuan Sun (UIC), Bing Li (PSU), and Lexin Li (UC Berkeley)).

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最後更新日期:2026-01-14 10:30
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