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Insight
Find our most recent articles below or visit our global insight page to search our publication library.
For more information on specific topics, contact your Milliman consultant or visit our contact list.
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.
COVID-19 and medical underwriting practices for life and health insurance
As more evidence emerges about long-term clinical impacts of Covid-19 and long Covid, insurers will need to consider the implications for medical underwriting.
Why adherence matters in diabetes
With diabetes, adherence to noninsulin antidiabetic medications correlates with more outpatient and fewer inpatient visits, and lower total expenditures.
Explainable AI in fraud detection
Techniques in explainable artificial intelligence can indicate the reasons why a model expects a claim to be truly fraudulent, saving time for investigators.
Impact of COVID-19 on risk equalisation schemes
The onset of the COVID-19 pandemic has had numerous impacts on health systems worldwide, with extra support needed globally to address the healthcare needs associated with the pandemic.
Explainable AI in practice: Build trust and encourage adoption
In this article we discuss the techniques available to mitigate machine learning becoming black boxes and what should be considered in their implementation.
Anomaly analysis and detection in health insurance
This article describes the application of two methods for the detection of potential fraudulent claims in healthcare provider invoices.
Analysis of insurers’ Solvency and Financial Condition Reports: European health insurers 2019
This analysis compares information provided in the Quantitative Reporting Templates and Solvency and Financial Condition Reports and makes observations about the balance sheets and risk exposures of European health insurers.
How will COVID-19 affect European medical insurers?
The effects of COVID-19 for specific insurers are dependent on benefit packages and policy terms and conditions, as well as government responses and macro-economic factors.
Machine learning in healthcare
Machine learning makes the role of the actuary in the Dutch healthcare landscape more crucial than ever.