Journal article
SynthETIC: An individual insurance claim simulator with feature control
Benjamin Avanzi, Greg Taylor, Melantha Wang, Bernard Wong
INSURANCE MATHEMATICS & ECONOMICS | ELSEVIER | Published : 2021
Abstract
Recent years have seen rapid increase in the application of machine learning to insurance loss reserving. They yield most value when applied to large data sets, such as individual claims, or large claim triangles. In short, they are likely to be useful in the analysis of any data set whose volume is sufficient to obscure a naked-eye view of its features. Unfortunately, such large data sets are in short supply in the actuarial literature. Accordingly, one needs to turn to synthetic data. Although the ultimate objective of these methods is application to real data, the use of synthetic data containing features commonly observed in real data is also to be encouraged. While there are a number o..
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Grants
Awarded by Australian Research Council
Funding Acknowledgements
This research was supported under Australian Research Council's Linkage (LP130100723) and Discovery (DP200101859) Projects funding schemes. Melantha Wang acknowledges financial support from UNSW Australia Business School. The views expressed herein are those of the authors and are not necessarily those of the supporting organizations.