Author
Listed:
- Pier Giuseppe Giribone
(Department of Economics, University of Genoa, Via F. Vivaldi, 5, 16126 Genova, Italy†Financial Engineering, BPER Banca, Via Cassa di Risparmio 15, 16123 Genova, Italy)
- Serena Berretta
(��Rulex Innovation Labs Via Felice Romani, 9, 16122 Genova GE, Italy)
- Michelangelo Fusaro
(Department of Economics, University of Genoa, Via F. Vivaldi, 5, 16126 Genova, Italy)
- Marco Muselli
(��Rulex Innovation Labs Via Felice Romani, 9, 16122 Genova GE, Italy)
- Federico Tropiano
(Department of Economics, University of Genoa, Via F. Vivaldi, 5, 16126 Genova, Italy)
- Damiano Verda
(��Rulex Innovation Labs Via Felice Romani, 9, 16122 Genova GE, Italy)
Abstract
This study suggests the implementation of the Logic Learning Machine (LLM) methodology to model the default probabilities of a dataset of American firms. This advanced supervised Machine Learning technique, which has the advantage of being inherently “white box†, was developed using a lean low-code development platform that allows the use of the paradigm of visual block programming. The probability default model for an optimal credit risk management was solved using both a statistical regression and a classification approach. The performance obtained in our case study was then compared with that of a Classification and Regression Tree (CART), one of the few supervised Machine Learning techniques that can be considered natively “white box†. The results achieved by the LLM proved to be superior both in terms of performance and explainability compared to those obtained with the CART.
Suggested Citation
Pier Giuseppe Giribone & Serena Berretta & Michelangelo Fusaro & Marco Muselli & Federico Tropiano & Damiano Verda, 2025.
"Enhancing the explainability of the default probability model using the logic learning machine: A comparison between native “white boxes†machine learning techniques,"
International Journal of Financial Engineering (IJFE), World Scientific Publishing Co. Pte. Ltd., vol. 12(03), pages 1-37, September.
Handle:
RePEc:wsi:ijfexx:v:12:y:2025:i:03:n:s2424786325500057
DOI: 10.1142/S2424786325500057
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