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Cited 2 time in webofscience Cited 2 time in scopus
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Group-Exclusive Feature Group Lasso and Applications to Automatic Sensor Selection for Virtual Metrology in Semiconductor Manufacturing

Authors
Choi, JeongsubSon, YoungdooKang, Jihoon
Issue Date
Nov-2024
Publisher
IEEE
Keywords
Artificial neural networks; Data models; Feature extraction; Group exclusivity; group sparsity; Metrology; Modeling; regularization; sensor selection; Training; Vectors; virtual metrology
Citation
IEEE Transactions on Semiconductor Manufacturing, v.37, no.4, pp 505 - 517
Pages
13
Indexed
SCIE
SCOPUS
Journal Title
IEEE Transactions on Semiconductor Manufacturing
Volume
37
Number
4
Start Page
505
End Page
517
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/23008
DOI
10.1109/TSM.2024.3444720
ISSN
0894-6507
1558-2345
Abstract
Group lasso is a regularization widely used for feature group selection with sparsity at a group level in machine learning. Training a model with the group lasso regularization, however, leads to the selection of all the groups together that are closely related to each other although their features are useful to predict a target. In this study, we propose a new regularization, group-exclusive group lasso, for automatic exclusive feature group selection. The proposed regularization aims to enforce exclusive sparsity at an inter-group level, discouraging the coincident selection of the feature groups that are group-level correlated and share predictive powers toward the targets. The proposed method aims at higher group sparsity for selecting salient feature groups only, and is applied to neural networks. We evaluate the proposed regularization in neural networks on synthetic datasets and a real-life case for virtual metrology with automatic sensor selection in semiconductor manufacturing. IEEE
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