Network Topology Analysis and Claim Linkage Intelligence: Machine Learning Approaches to Enhanced Fraud Detection in Insurance Operations
Keywords:
network topology analysis, claim linkage intelligence, machine learning approaches to enhanced fraud detection, insurance operationsAbstract
Insurance fraud - a global issue Insurance fraud, both hard and soft, is rapidly increasing worldwide. The intent of an insurance fraudster can be to either falsely obtain payment or avoid incurring a cost, whether that is through accident staging in the hope of a public liability settlement or filing life insurance claims when the individual is still very much alive. Such crimes go beyond the financial implications and affect general public safety, hike premiums, and eat into profits.Downloads
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