On dimensionality effects in linear discriminant analysis for large dimensional data

来源 :上海交通大学 | 被引量 : 0次 | 上传用户:owen_0278
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  We study the asymptotic results of linear discriminant analysis(LDA)in large dimensional data where the observation dimension p,is of the same order of magnitude as the sample size n.
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