Claims Fraud Network Analysis (CFNA) |
Posted: August 7, 2021 |
Of late, claim fraud has plagued the USA Insurance industry, and it has left them reeling. Even though the exact depth of such scams is unknown, everyone within the industry agrees that the chunk is significant and needs some severe fightback to get over. Modern problems require modern solutions, and the peculiar situation, in this case, involves solutions by the insurance software companies in the USA. It would have been easier if there was only a single party involved. Unfortunately, all of it seems to be pre-planned and carried on regularly by a group of people. Insurance solutions such as an effective procedure for identification, investigation, and other stringent methods have been developed and implemented to counter the ingenuity of such fraudsters, All of it seems to be incapable of churning the desired results. It has forced the insurance software companies in the USA to develop CFNA or Claims Fraud Network Analysis, which consists of three modern fraud detection methods, all of which we are covering in today’s article. Components of CFNA Social Network Analysis The analytics team uses the data and tries to figure out the risk of fraud based on several factors. They use techniques such as sentiment analysis, text mining, and social network analysis, baked in the fraud identification and predictive modelling process. After the analysis is complete, the model assigns it a score depending on which further action follows. The SNA model can be of great help for those insurance software companies in USA whose data arrives fast and required limited processing. Predictive analytics Social CRM or Social Customer Relationship Management Investigators then carry out their processes to ascertain if the opinion of the automation software is correct or not. Even though the tool is relatively sound, it cannot be fruitful alone; you need to carry out other processes to verify the genuineness of the claim. Conclusion
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