Explainable Machine Learning for Actuaries

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Machine learning techniques are now more and more popular in the insurance industry and have a lot of applications such as, pricing, reserving, claims management and underwriting among others. Whereas the advanced techniques usually have a better predictive power than statistical models e.g. Generalized Linear Models, their main drawback is that they are black-box and their results are difficult to understand/interpret which doesn’t always provide sufficient comfort to take business decisions.

In this webinar, we introduce some model interpretability tools and describe how they can be used to boost insights from data in insurance applications, thanks to adequate features selection, features engineering and results interpretation. These interpretability tools make the use of machine learning techniques much more relevant in insurance as it allows to improve the predictive power while understanding the drivers of the results; which is fundamental to take relevant business decisions.

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15 Comments

avatar of user MichaelSteinmetz who posted a comment
MichaelSteinmetz

June 3, 2024 09:50:28 AM CEST

sehr schönes Video

avatar of user earbuse who posted a comment
earbuse

April 12, 2024 06:53:33 AM CEST

Testing

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iscope-earbuse

April 12, 2024 06:39:21 AM CEST

Another comment

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scorbin

March 13, 2024 09:04:10 AM CET

Eigth comment

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scorbin

March 13, 2024 09:02:54 AM CET

Seventh comment

avatar of user scorbin who posted a comment
scorbin

March 13, 2024 09:00:20 AM CET

Hello there

avatar of user scorbin who posted a comment
scorbin

March 13, 2024 08:58:26 AM CET

Test 123

avatar of user scorbin who posted a comment
scorbin

March 13, 2024 08:56:49 AM CET

Test please ignore

avatar of user scorbin who posted a comment
scorbin

March 13, 2024 08:55:27 AM CET

Another comment just like that