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Activity Number: 329 - New Statistical Learning and Methods in Nonparametric Statistics
Type: Invited
Date/Time: Thursday, August 12, 2021 : 10:00 AM to 11:50 AM
Sponsor: Section on Nonparametric Statistics
Abstract #314474
Title: AdaBoost Semiparametric Model Averaging Prediction for Multiple Categories
Author(s): Jialiang Li*
Companies: National University of Singapore
Keywords: Boosting; Model average; varying-coefficient structrual identification; smoothing; prediction accuracy; model mis-specification
Abstract:

Model average techniques are very useful for model-based prediction. However, most earlier works in this field focused on parametric models and continuous responses. In this article, we study varying coefficient multinomial logistic models and propose a semiparametric model averaging prediction (SMAP) approach for multi-category outcomes. The proposed procedure does not need any artificial specification of the index variable in the adopted varying coefficient sub-model structure to forecast the response. In particular, this new SMAP method is more flexible and robust against model misspecification. To improve the practical predictive performance, we combine SMAP with the AdaBoost algorithm to obtain more accurate estimations of class probabilities and model averaging weights. We compare our proposed methods with all existing model averaging approaches and a wide range of popular classification methods via extensive simulations. An automobile classification study is included to illustrate the merits of our methodology.


Authors who are presenting talks have a * after their name.

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