IMF Working Papers

A Quantitative Approach to Central Bank Haircuts and Counterparty Risk Management

By Yuji Sakurai

October 31, 2025

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Format: Chicago

Yuji Sakurai. "A Quantitative Approach to Central Bank Haircuts and Counterparty Risk Management", IMF Working Papers 2025, 225 (2025), accessed November 1, 2025, https://doi.org/10.5089/9798229026819.001

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Disclaimer: IMF Working Papers describe research in progress by the author(s) and are published to elicit comments and to encourage debate. The views expressed in IMF Working Papers are those of the author(s) and do not necessarily represent the views of the IMF, its Executive Board, or IMF management.

Summary

This paper presents a comprehensive framework for determining haircuts on collateral used in central bank operations, quantifying residual uncollateralized exposures, and validating haircut models using machine learning. First, it introduces four haircut model types tailored to asset characteristics—marketable or non-marketable—and data availability. It proposes a novel model for setting haircuts in data-limited environment using a satallite cross-country model. Key principles guiding haircut calibration include non-procyclicality, data-drivenness, conservatism, and the avoidance of arbitrage gaps. The paper details model inputs such as Value-at-Risk (VaR) percentiles, volatility measures, and time to liquidation. Second, it proposes a quantitative framework for estimating expected uncollateralized exposures that remain after haircut application, emphasizing their importance in stress scenarios. Illustrative simulations using dynamic Nelson-Siegel yield curve models demonstrate how volatility impacts exposure. Third, the paper explores the use of Variational Autoencoders (VAEs) to simulate stress scenarios for bond yields. Trained on U.S. Treasury data, VAEs capture realistic yield curve distributions, offering an altenative tool for validating VaR-based haircuts. Although interpretability and explainability remain concerns, machine learning models enhance risk assessment by uncovering potential model vulnerabilities.

Subject: Bonds, Collateral, Credit risk, Econometric analysis, Financial institutions, Financial regulation and supervision, Financial services, Vector autoregression, Yield curve

Keywords: Bonds, Collateral, Credit, Credit risk, Haircuts, Machine Learning, Uncollateralized Exposure, Vector autoregression, Yield curve

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