Search the Library
 
Home>


Save for Later
Email This Page

Variable Reduction in Logistic & Choosing the correct transformations

Published by Genpact on Oct 13, 2008
This paper provides a powerful tool to deal with the problem of plenty where we have a large number of variables and the regression function used is Logistic. This method weaves through huge number of transformations of each variable and helps you choose the best form of each variable and all this while reducing the variables to be considered at a very fast pace and helping you get a very robust and statistically sound model which can stand the test of time. For any comments/suggestions please mail arijit.das@genpact.com.
REGISTER NOW TO DOWNLOAD YOUR FREE White Paper
Already registered? Log in here.
We found some errors during registration. Please correct the errors below.
First Name : First Name
Last Name : Last Name
Business Email : Please enter a valid email
Password : Enter Password
Passwords should be at least four
alphanumeric characters
Confirm Password : Verify that password matches Enter Verify Password
Company Name : Enter company name
Country / Region :
Business Address : Please enter your business address
 
City : Enter your city
State / Province : Please select your state
Postal Code : Please enter your postal code
Business Phone : Ext : (optional)
Primary Industry : Select your industry
Job Title : Select your job title
Company Size : Select your company size
 Yes, please send me the FindWhitePapers.com Newsletter
All Information that you supply is protected by our privacy policy
In order to provide you with this free service, we may share your business
information with companies whose content you choose to view on this website.

By clicking "Submit Information" you agree to our Terms of Use.

 
View All Items By This Company
Browse Related Categories :

Data Management

,

Data Mining

,

Enterprise Applications

,

Risk Management

Search the Library
White Papers powered by
   Learn about White Paper Lead Generation opportunities

This material may not be published, broadcast, rewritten or redistributed in any form without prior authorization.

Your use of this website constitutes acceptance of Haymarket Media's Privacy Policy and Terms & Conditions