Variable selection of regularized stochastic gradient descent in logistic regression

Volume 7, Issue 2, April 2022     |     PP. 38-44      |     PDF (257 K)    |     Pub. Date: May 18, 2022
DOI: 10.54647/mathematics11319    81 Downloads     4859 Views  

Author(s)

Ping Guo, College of Mathematics and Statistics, Guangxi Normal University, Guilin, Guangxi, China

Abstract
In the modern big data environment, Stochastic gradient descent is an important method for training neural networks, processing largescale data sets, optimization, etc. Deeply welcomed in various fields. With regard to SGD, the existing literature considers the stopping condition of parameter iteration. In fact, some unimportant parameters do not always have values of 0 during iteration, and it is not clear whether they are important or not even if the stop condition is reached. We consider variable selection of SGD parameter iteration with L1 regular in generalized linear regression model (taking Logistic regression as an example). Monte Carlo numerical simulation and practical application examples were given to illustrate the consistency of variable selection. The results show that high accuracy can be achieved by using the selected variables to build the model.

Keywords
SGD; Lasso; Logistic regression; Variable selection

Cite this paper
Ping Guo, Variable selection of regularized stochastic gradient descent in logistic regression , SCIREA Journal of Mathematics. Volume 7, Issue 2, April 2022 | PP. 38-44. 10.54647/mathematics11319

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