The patent badge is an abbreviated version of the USPTO patent document. The patent badge does contain a link to the full patent document.
The patent badge is an abbreviated version of the USPTO patent document. The patent badge covers the following: Patent number, Date patent was issued, Date patent was filed, Title of the patent, Applicant, Inventor, Assignee, Attorney firm, Primary examiner, Assistant examiner, CPCs, and Abstract. The patent badge does contain a link to the full patent document (in Adobe Acrobat format, aka pdf). To download or print any patent click here.
Patent No.:
Date of Patent:
Jun. 03, 2008
Filed:
Apr. 30, 2003
Piero Patrone Bonissone, Schenectady, NY (US);
Kareem Sherif Aggour, Niskayuna, NY (US);
Rajesh Venkat Subbu, Troy, NY (US);
Weizhong Yan, Clifton Park, NY (US);
Naresh Sundaram Iyer, Clifton Park, NY (US);
Anindya Chakraborty, Schenectady, NY (US);
Piero Patrone Bonissone, Schenectady, NY (US);
Kareem Sherif Aggour, Niskayuna, NY (US);
Rajesh Venkat Subbu, Troy, NY (US);
Weizhong Yan, Clifton Park, NY (US);
Naresh Sundaram Iyer, Clifton Park, NY (US);
Anindya Chakraborty, Schenectady, NY (US);
Genworth Financial, Inc., Richmond, VA (US);
Abstract
A method and system for fusing a collection of classifiers used for an automated insurance underwriting system and/or its quality assurance is described. Specifically, the outputs of a collection of classifiers are fused. The fusion of the data will typically result in some amount of consensus and some amount of conflict among the classifiers. The consensus will be measured and used to estimate a degree of confidence in the fused decisions. Based on the decision and degree of confidence of the fusion and the decision and degree of confidence of the production decision engine, a comparison module may then be used to identify cases for audit, cases for augmenting the training/test sets for re-tuning production decision engine, cases for review, or may simply trigger a record of its occurrence for tracking purposes. The fusion can compensate for the potential correlation among the classifiers. The reliability of each classifier can be represented by a static or dynamic discounting factor, which will reflect the expected accuracy of the classifier. A static discounting factor is used to represent a prior expectation about the classifier's reliability, e.g., it might be based on the average past accuracy of the model, while a dynamic discounting is used to represent a conditional assessment of the classifier's reliability, e.g., whenever a classifier bases its output on an insufficient number of points it is not reliable.