JSAI2020

Presentation information

Organized Session

Organized Session » OS-5

[3K1-OS-5a] OS-5 (1)

Thu. Jun 11, 2020 9:00 AM - 10:40 AM Room K (jsai2020online-11)

砂山 渡(滋賀県立大学)、森 辰則(横浜国立大学)、西原 陽子(立命館大学)、高間 康史(首都大学東京)

10:20 AM - 10:40 AM

[3K1-OS-5a-05] Signed regularization

〇Marina Takahashi1, Hiroshi Okamoto1, Shuji Shinohara1, Shunji Mitsuyoshi1, Masahiro Haitsuka2, Fumihiro Miyoshi2, Takatoshi Shioki2, Yusuke Komine2, Daisuke Ishimoto2, Akihiro Tani2, Yusuke Tajiri2, Hidetoshi Kozono2 (1. The University of Tokyo, 2. Daicel Corporation)

Keywords:Regression, Regularization, Generalization, Industrial process, Intelligent control

Our ultimate goal is to establish the intelligent control of chemical plants. Towards this, the present study puts forward regression to predict in a production process the output quality y from input factors x. Predictive control of chemical plants often necessitates learning with small datasets. Moreover, each regression coefficient must obey the sign defined by empirical knowledge of chemical plants. Here we propose to estimate the regression coefficients by regularizing their signs. The predictive performance under the signed regularization is higher than that without any regularization or under the L1 regularization. The superiority of signed regularization is more remarkable for smaller learning datasets. The signed regularization with partially wrong signs also gives higher predictive performance than the regression without any regularization. These results suggest that the signed regularization is a practical method for exploiting small learning datasets to gain the highest generalization performance.

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