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New Theory of Discriminant Analysis After R. Fisher

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  • 228pagine
  • 8 ore di lettura

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The book uniquely compares eight linear discriminant functions (LDFs) across various datasets, including Fisher's iris data and medical data with collinearities. It introduces a 100-fold cross-validation method tailored for small samples and presents a straightforward model selection procedure to identify the optimal model based on minimum M2. The Revised IP-OLDF, evaluated using the MNM criterion, demonstrates superior performance compared to other M2s across the examined datasets, making it a significant contribution to statistical modeling and data analysis.

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New Theory of Discriminant Analysis After R. Fisher, Shuichi Shinmura

Lingua
Pubblicato
2018
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Metodi di pagamento

Lingua
Inglese
Editore
Springer
Pubblicato
2018
Formato
In brossura
Pagine
228
ISBN10
9811095469
ISBN13
9789811095467
Serie
Descrizione
The book uniquely compares eight linear discriminant functions (LDFs) across various datasets, including Fisher's iris data and medical data with collinearities. It introduces a 100-fold cross-validation method tailored for small samples and presents a straightforward model selection procedure to identify the optimal model based on minimum M2. The Revised IP-OLDF, evaluated using the MNM criterion, demonstrates superior performance compared to other M2s across the examined datasets, making it a significant contribution to statistical modeling and data analysis.