用神经网络回归和群套索发现共非线性关系中变量的集合和表示

M. Ohsaki, Hayato Sasaki, Naoya Kishimoto, S. Katagiri, P. Then
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引用次数: 2

摘要

在回归和分类中,输入变量之间的相关性导致预测性能和可靠性降低,并导致对贡献输入变量的错误识别。不仅对于这些问题,而且对于知识发现,有必要澄清变量的依赖关系。本研究旨在发现共非线性变量的集合和代表,以确保高非线性建模能力和高再现性,而不发生变量组合爆炸。我们提出的方法通过结合神经网络回归、分组套索和回归结果的互补聚合来实现这一目标。我们进行了实验来检验所提出的方法的基本有效性,使用已知的共非线性的合成数据。结果表明,该方法对加入变量的噪声具有较强的鲁棒性,能够发现共非线性变量的集合和表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovery of Sets and Representatives of Variables in Co-nonlinear Relationships by Neural Network Regression and Group Lasso
In regression and classification, the dependences among input variables lead to the reduction in prediction performance and reliability and to the misidentification of contributable input variables. Not only for these issues but also knowledge discovery, it is necessary to clarify variable dependences. This study aims to discover the sets and representatives of co-nonlinear variables, ensuring a high nonlinearity modeling capability and a high reproducibility without variable combinational explosion. Our proposed method achieves this by combining neural network regression, group lasso, and complementary aggregation of regression results. We conducted experiments to examine the fundamental effectiveness of the proposed method, using synthetic data of which co-nonlinearities were known. As a result, the proposed method succeeded to discover the sets and representatives of co-nonlinear variables robustly to noise added to the variables.
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