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# Application of Genetic Algorithm and K-Nearest Neighbour Method in Real World Medical Fraud Detection Problem

## Hongxing He^{**}, Simon Hawkins^{**}, Warwick Graco^{*} and Xin Yao^{***}

^{*}Health Insurance Commission 134 Reed Street, P O. Box 1001 Tuggeranong, ACT 2900, Australia

^{**}CRC for Advanced Computational Systems, CSIRO Mathematical and Information Sciences GPO Box 664, Canberra, ACT 2601 Australia

^{***}School of Computer Science, University of Birmingham Birmingham B15 2TT, United Kingdom

Received:March 15, 1999Accepted:July 20, 1999Published:March 20, 2000

Keywords:Genetic algorithm, K-nearest neighbor, Decision rule
Abstract
In the k-Nearest Neighbour (kNN) algorithm, the classification of a new sample is determined by the class of its k nearest neighbours. The performance of the kNN algorithm is influenced by three main factors: (1) the distance metric used to locate the nearest neighbours; (2) the decision rule used to derive a classification from the k-nearest neighbours; and (3) the number of neighbours used to classify the new sample. Using k = 1, 3, or 5 nearest neighbours, this study uses a Genetic Algorithm (GA) to find the optimal non-Euclidean distance metric in the kNN algorithm and examines two alternative methods (Majority Rule and Bayes Rule) to derive a classification from the k nearest neighbours. This modified algorithm was evaluated on two real-world medical fraud problems. The General Practitioner (GP) database is a 2-class problem in which GPs are classified as either practising appropriately or inappropriately. The ’.Doctor-Shoppers’ database is a 5-class problem in which patients are classified according to the likelihood that they are ’doctor-shoppers’. Doctor-shoppers are patients who consult many physicians in order to obtain multiple prescriptions of drugs of addiction in excess of their own therapeutic need. In both applications, classification accuracy was improved by optimising the distance metric in the kNN algorithm. The agreement rate on the GP dataset improved from around 70% (using Euclidean distance) to 78 % (using an optimised distance metric), and from about 55% to 82% on the Doctor Shopper’s dataset. Differences in either the decision rule or the number of nearest neighbours had little or no impact on the classification performance of the kNN algorithm. The excellent performance of the kNN algorithm when the distance metric is optimised using a genetic algorithm paves the way for its application in the real world fraud detection problems faced by the Health Insurance Commission (HIC).
Cite this article as:H. He, S. Hawkins, W. Graco, and X. Yao, “Application of Genetic Algorithm and K-Nearest Neighbour Method in Real World Medical Fraud Detection Problem,” *J. Adv. Comput. Intell. Intell. Inform.*, Vol.4 No.2, pp. 130-137, 2000.Data files: