or
Bookmark and Share
Methods for multi-class cost-sensitive learning
 
   
Document Number
US Patent 7558764
Issued Date
July 7, 2009
Link
Inventors
Map
Abstract
Methods for multi-class cost-sensitive learning are based on iterative example weighting schemes and solve multi-class cost-sensitive learning problems using a binary classification algorithm. One of the methods works by iteratively applying weighted sampling from an expanded data set, which is obtained by enhancing each example in the original data set with as many data points as there are possible labels for any single instance, using a weighting scheme which gives each labeled example the weight specified as the difference between the average cost on that instance by the averaged hypotheses from the iterations so far and the misclassification cost associated with the label in the labeled example in question. It then calls the component classification algorithm on a modified binary classification problem in which each example is itself already a labeled pair, and its (meta) label is 1 or 0 depending on whether the example weight in the above weighting scheme is positive or negative, respectively. It then finally outputs a classifier hypothesis which is the average of all the hypotheses output in the respective iterations.
Tags:
Description:
Amusing 0%
Clever 0%
Complex 0%
Efficient 0%
Historic 0%
Important 0%
Innovative 0%
Interesting 0%
Practical 0%
Simple 0%
Number of Claims:
10
Comments:
no comments yet
Published
July 7, 2009
Application Number
11/937,629
Filed
November 9, 2007
US Classification
706/14   706/12 706/20 706/932
Int'l Classification
G06F   15/18   (20060101)   G06E   1/00   (20060101)   G06G   7/00   (20060101)   G06E   3/00   (20060101)  
Examiner
Assistant Examiner
Parent Case
CROSS REFERENCE TO RELATED APPLICATION This application is a division of application Ser. No. 10/876,533 filed Jun. 28, 2004, now abandoned, by Naoki Abe et al. and assigned to a common assignee herewith.
USPTO Field of Search
706/12   706/14   706/20   706/25   706/932   706/934  
Related Patents
Claims
Description
About| FAQs| Terms & Disclaimer| Link to Us| Contact Us