Data Science & AI
The data science & artificial intelligence (AI) disruption
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The Milliman Data Science Team has experience in a variety of industries and use cases.
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Open Insurance supported by upcoming FIDA regulation forces insurers to rethink data strategy
Open finance may have a profound influence on insurance in Europe, where new entrants could outcompete legacy carriers and seize customer relationships.
The AI-Act’s impact on insurance
For timely compliance with Europe’s new AI-Act, insurers should start assessing the risk level of their AI, implement measures, and monitor performance.
Flood risk modelling in Europe
Projecting insured losses in the Netherlands and France for varying climate scenarios, using open data
The potential of large language models in the insurance sector
With the recent advancement of natural language processing models, we explore how they could be used in the insurance sector.
Data science–potential uses in risk management
While data science techniques offer immense potential for risk managers, (re)insurers need a multidisciplinary approach to tackle challenges and ensure successful implementation.
Exploring large language models: A guide for insurance professionals
In this introduction to large language models (LLMs) for insurance professionals, we discuss how these components of artificial intelligence are trained to produce accurate results.
Anomaly detection techniques in fraud detection, performance optimization, and data quality
Methods to detect anomalies can be used to find fraudulent claims in insurance, especially in products with a large frequency of payments, such as in healthcare.
Anomaly analysis and detection in health insurance
Healthcare fraud is considered a material risk in the Netherlands, and there is a growing effort by insurers to tackle the issue of health insurance fraud given its materiality.
Applied unsupervised machine learning in life insurance data
This article summarises the results of a research study on accelerating projections of life insurance portfolios by compressing the data of underlying policies.