Leave-One-Out Bounds for Support Vector Regression Model Selection.
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| Title: | Leave-One-Out Bounds for Support Vector Regression Model Selection. |
|---|---|
| Authors: | Ming-Wei Chang1 b6506056@csie.ntu.edu.tw, Chih-Jen Lin1 cjlin@csie.ntu.edu.tw |
| Source: | Neural Computation. May2005, Vol. 17 Issue 5, p1188-1222. 35p. |
| Subjects: | Vector processing (Computer science), Computer programming, Electronic data processing, Vector analysis, Computer software, Computers |
| Abstract: | 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. [ABSTRACT FROM AUTHOR] |
| Copyright of Neural Computation is the property of MIT Press and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.) | |
| Database: | Engineering Source |
| FullText | Links: – Type: pdflink Text: Availability: 0 |
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| Header | DbId: egs DbLabel: Engineering Source An: 16520937 AccessLevel: 6 PubType: Academic Journal PubTypeId: academicJournal PreciseRelevancyScore: 0 |
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| Items | – Name: Title Label: Title Group: Ti Data: Leave-One-Out Bounds for Support Vector Regression Model Selection. – Name: Author Label: Authors Group: Au Data: <searchLink fieldCode="AR" term="%22Ming-Wei+Chang%22">Ming-Wei Chang</searchLink><relatesTo>1</relatesTo><i> b6506056@csie.ntu.edu.tw</i><br /><searchLink fieldCode="AR" term="%22Chih-Jen+Lin%22">Chih-Jen Lin</searchLink><relatesTo>1</relatesTo><i> cjlin@csie.ntu.edu.tw</i> – Name: TitleSource Label: Source Group: Src Data: <searchLink fieldCode="JN" term="%22Neural+Computation%22">Neural Computation</searchLink>. May2005, Vol. 17 Issue 5, p1188-1222. 35p. – Name: Subject Label: Subjects Group: Su Data: <searchLink fieldCode="DE" term="%22Vector+processing+%28Computer+science%29%22">Vector processing (Computer science)</searchLink><br /><searchLink fieldCode="DE" term="%22Computer+programming%22">Computer programming</searchLink><br /><searchLink fieldCode="DE" term="%22Electronic+data+processing%22">Electronic data processing</searchLink><br /><searchLink fieldCode="DE" term="%22Vector+analysis%22">Vector analysis</searchLink><br /><searchLink fieldCode="DE" term="%22Computer+software%22">Computer software</searchLink><br /><searchLink fieldCode="DE" term="%22Computers%22">Computers</searchLink> – Name: Abstract Label: Abstract Group: Ab Data: 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. [ABSTRACT FROM AUTHOR] – Name: AbstractSuppliedCopyright Label: Group: Ab Data: <i>Copyright of Neural Computation is the property of MIT Press and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract.</i> (Copyright applies to all Abstracts.) |
| PLink | https://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=egs&AN=16520937 |
| RecordInfo | BibRecord: BibEntity: Identifiers: – Type: doi Value: 10.1162/0899766053491869 Languages: – Code: eng Text: English PhysicalDescription: Pagination: PageCount: 35 StartPage: 1188 Subjects: – SubjectFull: Vector processing (Computer science) Type: general – SubjectFull: Computer programming Type: general – SubjectFull: Electronic data processing Type: general – SubjectFull: Vector analysis Type: general – SubjectFull: Computer software Type: general – SubjectFull: Computers Type: general Titles: – TitleFull: Leave-One-Out Bounds for Support Vector Regression Model Selection. Type: main BibRelationships: HasContributorRelationships: – PersonEntity: Name: NameFull: Ming-Wei Chang – PersonEntity: Name: NameFull: Chih-Jen Lin IsPartOfRelationships: – BibEntity: Dates: – D: 01 M: 05 Text: May2005 Type: published Y: 2005 Identifiers: – Type: issn-print Value: 08997667 Numbering: – Type: volume Value: 17 – Type: issue Value: 5 Titles: – TitleFull: Neural Computation Type: main |
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