Portfolio Stress Testing and Value at Risk (VaR) Incorporating Current Market Conditions
Krishan Mohan Nagpal

TL;DR
This paper introduces a machine learning-based method to incorporate current market conditions into portfolio stress testing and VaR estimation, improving accuracy and adaptability during volatile periods like COVID-19.
Contribution
It proposes a novel approach using Variational Inference to weight historical data based on similarity to current market conditions for more realistic risk assessment.
Findings
Method adapts quickly to changing market conditions.
Cluster classification offers insights into portfolio performance.
Approach improves VaR accuracy during volatile periods.
Abstract
Value at Risk (VaR) and stress testing are two of the most widely used approaches in portfolio risk management to estimate potential market value losses under adverse market moves. VaR quantifies potential loss in value over a specified horizon (such as one day or ten days) at a desired confidence level (such as 95'th percentile). In scenario design and stress testing, the goal is to construct extreme market scenarios such as those involving severe recession or a specific event of concern (such as a rapid increase in rates or a geopolitical event), and quantify potential impact of such scenarios on the portfolio. The goal of this paper is to propose an approach for incorporating prevailing market conditions in stress scenario design and estimation of VaR so that they provide more accurate and realistic insights about portfolio risk over the near term. The proposed approach is based on…
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Taxonomy
TopicsInsurance and Financial Risk Management · Financial Markets and Investment Strategies · Risk Management in Financial Firms
MethodsVariational Inference
