Asymptotic theory for discriminant analysis in high dimension low sample size

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Title
Asymptotic theory for discriminant analysis in high dimension low sample size
Creator
Tamatani Mitsuru
Source Title
島根大学総合理工学研究科紀要. シリーズB
Volume 48
Start Page 15
End Page 26
Journal Identifire
ISSN 13427121
Descriptions
This paper is based on the author's thesis, “Pattern recognition based on naive canonical correlations in high dimension low sample size”. This paper is concerned with discriminant analysis for multi-class problems in a High Dimension Low Sample Size (hdlss) context. The proposed discrimination method is based on canonical correlations between the predictors and response vector of class label. We investigate the asymptotic behavior of the discrimination method, and evaluate bounds for its misclassication rate.
Subjects
high dimension low sample size ( Other)
canonical correlations ( Other)
consistency ( Other)
misclassification ( Other)
multi-class linear discriminant analysis ( Other)
Language
eng
Resource Type departmental bulletin paper
Publisher
島根大学総合理工学研究科
Date of Issued 2015-03
Publish Type Version of Record
Access Rights open access
Relation
[NCID] AA12638295