Reprint

Claim Models

Granular Forms and Machine Learning Forms

Edited by
April 2020
108 pages
  • ISBN978-3-03928-664-5 (Paperback)
  • ISBN978-3-03928-665-2 (PDF)

This book is a reprint of the Special Issue Claim Models: Granular Forms and Machine Learning Forms that was published in

Business & Economics
Computer Science & Mathematics
Summary
This collection of articles addresses the most modern forms of loss reserving methodology: granular models and machine learning models. New methodologies come with questions about their applicability. These questions are discussed in one article, which focuses on the relative merits of granular and machine learning models. Others illustrate applications with real-world data. The examples include neural networks, which, though well known in some disciplines, have previously been limited in the actuarial literature. This volume expands on that literature, with specific attention to their application to loss reserving. For example, one of the articles introduces the application of neural networks of the gated recurrent unit form to the actuarial literature, whereas another uses a penalized neural network. Neural networks are not the only form of machine learning, and two other papers outline applications of gradient boosting and regression trees respectively. Both articles construct loss reserves at the individual claim level so that these models resemble granular models. One of these articles provides a practical application of the model to claim watching, the action of monitoring claim development and anticipating major features. Such watching can be used as an early warning system or for other administrative purposes. Overall, this volume is an extremely useful addition to the libraries of those working at the loss reserving frontier.
Format
  • Paperback
License
© 2020 by the authors; CC BY-NC-ND license
Keywords
loss reserving; predictive modeling; individual models; gradient boosting; granular models; loss reserving; machine learning; neural networks; actuarial; risk pricing; loss reserving; granular models; neural networks; payments per claim incurred; loss reserving; machine learning; neural networks; individual claims reserving; claim watching; classification and regression trees; machine learning; n/a