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Leave-One-Out Bounds for Support Vector Regression Model Selection
Author(s) -
MingWei Chang,
ChihJen Lin
Publication year - 2005
Publication title -
neural computation
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.235
H-Index - 169
eISSN - 1530-888X
pISSN - 0899-7667
DOI - 10.1162/0899766053491869
Subject(s) - support vector machine , selection (genetic algorithm) , regression , differentiable function , model selection , artificial intelligence , computer science , mathematics , regression analysis , machine learning , statistics , mathematical analysis
Minimizing bounds of leave-one-out errors is an important and efficient approach for support vector machine (SVM) model selection. Past research focuses on their use for classification but not regression. In this letter, we derive various leave-one-out bounds for support vector regression (SVR) and discuss the difference from those for classification. Experiments demonstrate that the proposed bounds are competitive with Bayesian SVR for parameter selection. We also discuss the differentiability of leave-one-out bounds.

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