Would you like to
become familiar with some useful data clustering and anomaly
detection techniques?
If yes, we invite you to benefit from the early bird tariff and to
join the EAA Web Session: "Machine
Learning and Anomaly Detection" on 1 April 2022 |
9:30-14:30 CEST. Your early-bird registration fee is €
200.00 plus 19% VAT for registrations by 18 February 2022. After
this date, the fee will be € 270.00 plus 19% VAT.
Machine Learning (ML) allows computers to process data, analyse it
in real time and learn and make decisions based on data. Diverse
applications from self-driving cars to chess computers have
successfully relied on ML.
While the insurance industry is not always necessarily known for
being particularly innovative, insurance companies are increasingly
embracing approaches commonly used in ML to address business
challenges in different areas. Actuaries and data scientists apply
ML to claim management, underwriting or customer service.
Nowadays, both data and models can be processed much faster than
before which means data-driven approaches to actuarial modelling
are being increasingly adopted by the insurance companies. The
amount of data being used by insurance companies for different
purposes has increased exponentially. As such, it is becoming more
difficult for actuaries to identify anomalies in data, models and
outputs. For example, some insurers apply Least Square Monte Carlo
methods to derive their Net Asset Value and Best Estimate Liability
proxy models. These models take a huge amount of data to perform
complex calculations. It is not possible for actuaries to
understand bad data and model behaviour by using traditional
methods given the amount of data involved.
In this web session, we are going to discuss how techniques
commonly used by data scientist in ML applications can help
actuaries detect/remove bad data and significantly improve
forecasting abilities of modern actuarial models.
Please find all additional information in
this print version and on our
website. An overview on
other upcoming events can be downloaded as
well.