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Partial Least Squares for Discrimination: Statistical Theory and Implementation Matthew Barker
Partial Least Squares for Discrimination: Statistical Theory and Implementation
Matthew Barker
Partial least squares (PLS) was not originally designed as a tool for statistical discrimination. In spite of this, applied scientists routinely use PLS for classification and there is substantial empirical evidence to suggest that it performs well in that role. The interesting question is "why?" Why can a procedure that is principally designed for over-determined regression problems locate and emphasize group structure? Using PLS in this manner has heuristic support owing to the relationship between PLS and canonical correlations analysis (CCA) and the relationship, in turn, between CCA and linear discriminant analysis (LDA). This dissertation replaces the heuristics with a formal statistical explanation. As a consequence, it will become clear that PLS is to be preferred over principal components analysis (PCA) when discrimination is the goal and dimension reduction is needed.
| 介质类型 | 图书 Paperback Book (平装胶订图书) |
| 已发行 | 2010年10月1日 |
| ISBN13 | 9783843356954 |
| 出版商 | LAP LAMBERT Academic Publishing |
| 页数 | 96 |
| 商品尺寸 | 226 × 6 × 150 mm · 161 g |
| 语言 | 德语 |