An Improved Hybrid Model for Nonlinear Regression with Missing Values Using Deep Quasi-Linear Kernel

Huilin Zhu, Jinglu Hu*

*この研究の対応する著者

研究成果: Article査読

抄録

Missing values are ubiquitous in the nonlinear regression research, and may lead to bias and a loss of efficiency. Even in a large dataset, values drop-out can substantially reduce the available information for analysis. In this paper, we propose an improved hybrid model to solve the nonlinear regression problem under missing data scenarios, consisting of two parts: an overcomplete winner-take-all (WTA) autoencoder and a multilayer gated linear network. The WTA autoencoder is trained in an adversarial training process by taking advantage of gradually renewed teacher signals and the discrimination of missing values and observed values, and is designed to play two roles: (1) to impute missing components conditioned on observed samples; (2) to generate gate control sequences. On the other hand, the multilayer gated linear network with the generated gate control sequences implements a powerful piecewise linear regression model, whose parameters are optimized by formulating a support vector regression (SVR) with a deep quasi-linear kernel. Experimental results based on different real-world datasets demonstrate the effectiveness of our proposed hybrid model.

本文言語English
ページ(範囲)1460-1468
ページ数9
ジャーナルIEEJ Transactions on Electrical and Electronic Engineering
17
10
DOI
出版ステータスPublished - 2022 10月

ASJC Scopus subject areas

  • 電子工学および電気工学

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