discriminate analysis and logistic regression by use partial least square

Authors

  • رباب عبد الرضا صالح
  • محمد شاكر محمود

DOI:

https://doi.org/10.33095/jeas.v24i106.32

Keywords:

الدالة المميزة الخطية – الانحدار اللوجستي الثنائي – المربعات الصغرى الجزئية – مشكلة التعدد الخطي – نسبة التصنيف – محاكاة., linear discriminant function- binary logistic regression- partial least square– multicollinearity problem – ratio of classification – simulation.

Abstract

Abstract

   The method binery logistic regression and linear discrimint function of the most important statistical methods used in the classification and prediction when the data of the kind of binery (0,1) you can not use the normal regression therefore resort to binary logistic regression and linear discriminant function in the case of two group in the case of a Multicollinearity problem between the data (the data containing high correlation) It became not possible to use binary logistic regression and linear discriminant function, to solve this problem, we resort to Partial least square regression.

In this, search the comparison between binary logistic regression and linear discriminant function using error Category. Where the data has been generating a variable response (Y) binery data (0,1) containing Multicollinearity problem by the samples (50-100-150-250-400) and the variables (5-10-15). Multicollinearity problem has been processed using a method partial least square The research found that linear discriminant function It is the best in the classification of data from binary logistic regression classified as linear discriminant function the data correctly and more accurate than binary logistic regression

Downloads

Download data is not yet available.

Published

2018-10-17

Issue

Section

Statistical Researches

How to Cite

“discriminate analysis and logistic regression by use partial least square” (2018) Journal of Economics and Administrative Sciences, 24(106), p. 407. doi:10.33095/jeas.v24i106.32.

Similar Articles

1-10 of 958

You may also start an advanced similarity search for this article.

Most read articles by the same author(s)