Abstract
This study evaluates four machine learning (ML) techniques (Decision Trees (DT), Random Forests (RF), Neural Networks (NN) and Probabilistic Neural Networks (PNN)) on their ability to accurately predict export credit insurance claims. Additionally, we compare the performance of the ML techniques against a simple benchmark (BM) heuristic. The analysis is based on the utilisation of a dataset provided by the Berne Union, which is the most comprehensive collection of export credit insurance data and has been used in only two scientific studies so far. All ML techniques performed relatively well in predicting whether or not claims would be incurred, and, with limitations, in predicting the order of magnitude of the claims. No satisfactory results were achieved predicting actual claim ratios. RF performed significantly better than DT, NN and PNN against all prediction tasks, and most reliably carried their validation performance forward to test performance.
Subject
Strategy and Management,Economics, Econometrics and Finance (miscellaneous),Accounting
Reference50 articles.
1. The impact of machine learning on economics;Athey,2018
2. Restoring Trade Finance during a Period of Financial Crisis: Stock-Taking of Recent Initiativeshttps://www.wto-ilibrary.org/economic-research-and-trade-policy-analysis/restoring-trade-finance-during-a-period-of-financial-crisis_4de92d90-en
3. Testing the trade credit and trade link: evidence from data on export credit insurance
4. A machine learning approach for individual claims reserving in insurance
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