RCML: A Novel Algorithm for Regressing Price Movement during Commodity Futures Stress Testing Based on Machine Learning

Autor: Caifeng Liu, Wenfeng Pan, Hongcheng Zhou
Rok vydání: 2023
Předmět:
Zdroj: Journal of Risk and Financial Management; Volume 16; Issue 6; Pages: 285
ISSN: 1911-8074
Popis: Stress testing, an essential part of the risk management toolkit of financial institutions, refers to the evaluation of a portfolio’s potential risk under an extreme, but plausible, scenario. The most representative method for performing stress testing is historical scenario simulation, which aims to evaluate historical adverse market events on the current portfolios of financial institutions. However, some current commodities were not listed in the commodity futures market at the time of the historical event, causing a lack of the necessary price information to revalue the current positions of these commodities. To avoid over reliance on human hypothesis for these non-existent commodity futures, we propose a novel approach, RCML, to infer reasonable price movements for commodities unlisted in historical events. Unlike the previous methods, based on subjective hypothesis, RCML takes advantage of not only machine learning algorithms, but also multi-view information. Back testing and hypothesis testing are adopted to prove the rationality of RCML results.
Databáze: OpenAIRE