A survey on natural language processing (nlp) and applications in insurance
Antoine Ly, Benno Uthayasooriyar, Tingting Wang

TL;DR
This survey reviews recent NLP techniques and their practical applications in the insurance industry, emphasizing methods, implementation, and benefits for risk monitoring and policy management.
Contribution
It provides a comprehensive overview of NLP methods used in insurance, including implementation guidance with open source tools and detailed steps for conducting text mining studies.
Findings
NLP enhances risk monitoring and policy analysis in insurance.
Open source tools facilitate NLP implementation in insurance.
Text mining techniques can be integrated into insurance products and services.
Abstract
Text is the most widely used means of communication today. This data is abundant but nevertheless complex to exploit within algorithms. For years, scientists have been trying to implement different techniques that enable computers to replicate some mechanisms of human reading. During the past five years, research disrupted the capacity of the algorithms to unleash the value of text data. It brings today, many opportunities for the insurance industry.Understanding those methods and, above all, knowing how to apply them is a major challenge and key to unleash the value of text data that have been stored for many years. Processing language with computer brings many new opportunities especially in the insurance sector where reports are central in the information used by insurers. SCOR's Data Analytics team has been working on the implementation of innovative tools or products that enable…
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Taxonomy
TopicsTopic Modeling · Artificial Intelligence in Law · Machine Learning in Healthcare
