Universal approximation of credit portfolio losses using Restricted Boltzmann Machines
Giuseppe Genovese, Ashkan Nikeghbali, Nicola Serra, Gabriele, Visentin

TL;DR
This paper presents a novel credit risk model using Restricted Boltzmann Machines that accurately captures loss distributions, improves risk estimation, and offers interpretability and stress testing capabilities, outperforming traditional models.
Contribution
The paper introduces a universal approximation-based RBM model for credit losses, with an efficient importance sampling method and interpretability of factors for risk management.
Findings
RBM model outperforms Gaussian and t copula models in fit and risk estimation
Importance sampling enables efficient high-confidence risk measure estimation
Model factors relate to portfolio sector structure and aid in concentration risk management
Abstract
We introduce a new portfolio credit risk model based on Restricted Boltzmann Machines (RBMs), which are stochastic neural networks capable of universal approximation of loss distributions. We test the model on an empirical dataset of default probabilities of 1'012 US companies and we show that it outperforms commonly used parametric factor copula models -- such as the Gaussian or the t factor copula models -- across several credit risk management tasks. In particular, the model leads to better fits for the empirical loss distribution and more accurate risk measure estimations. We introduce an importance sampling procedure which allows risk measures to be estimated at high confidence levels in a computationally efficient way and which is a substantial improvement over the Monte Carlo techniques currently available for copula models. Furthermore, the statistical factors extracted by the…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Model Reduction and Neural Networks · Advanced Mathematical Modeling in Engineering
