Automated Claims Adjudication and Resolution Pathway Intelligence: Machine Learning Frameworks for Insurance Settlement Process Optimisation
Keywords:
automated claims adjudication, resolution pathway intelligence, machine learning frameworks, insurance settlement process optimisationAbstract
Today, insurance is a rapidly developing area that is constantly adapting to technological innovations and the changing requirements of end users. Relevant changes are also associated with significant development in the field of AI. This is why the subject of this publication is a presentation of the possibilities of applying AI solutions to the optimization of operations connected with the insurance process. The insurance sector deals with a significant number of customers.Downloads
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