DocumentCode :
1529547
Title :
Reengineering claims processing using probabilistic inductive learning
Author :
Arunasalam, Ruthra G. ; Richie, Jill T. ; Egan, William ; Gur-Ali, O. ; Wallace, William A.
Author_Institution :
New York State Workers´´ Compensation Board, Burea of Med. Manage., Albany, NY, USA
Volume :
46
Issue :
3
fYear :
1999
fDate :
8/1/1999 12:00:00 AM
Firstpage :
335
Lastpage :
345
Abstract :
With health care costs in the United States skyrocketing, and $.25 of every health care dollar being spent on systems and claims administration, technological advances such as electronic claims filing are being advocated as cost-reducing measures. These improvements alone, however, will not significantly reduce costs unless they are accompanied by revisions in the entire claims processing system. This study explores the reliability and utility of probabilistic inductive learning (PrIL), a statistically enhanced decision tree algorithm, for improving the decision-making process at the New York State Workers´ Compensation Board (WCB). Results indicate that the PrIL algorithm is favorably comparable to both the purely statistical and the classical decision tree methodologies, with the added advantages of easy to understand rules and user-defined reliability measures for each of those rules. Given the appropriate information regarding the relative value of correct and incorrect classification of cases in the WCB system, PrIL can be used to accurately assist in the decision making process in terms of reducing cost, predicting and enhancing quality and case outcomes in managed care practices
Keywords :
decision trees; health care; insurance data processing; learning by example; medical administrative data processing; probability; systems re-engineering; USA; claims administration; claims processing system; decision making process; electronic claims filing; health care claims processing; managed care practices; probabilistic inductive learning; reengineering; statistically enhanced decision tree algorithm; user-defined reliability measures; Biomedical engineering; Costs; Data engineering; Data mining; Decision making; Decision trees; Insurance; Knowledge engineering; Logistics; Medical services;
fLanguage :
English
Journal_Title :
Engineering Management, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9391
Type :
jour
DOI :
10.1109/17.775285
Filename :
775285
Link To Document :
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