Publication | Open Access
CORRGAN: Sampling Realistic Financial Correlation Matrices Using Generative Adversarial Networks
45
Citations
18
References
2020
Year
Unknown Venue
Empirical Correlation MatricesComputational FinanceEngineeringMachine LearningAsset PricingGenerative Adversarial NetworkQuantitative FinancePortfolio StressBusinessGenerative ModelStatistical InferenceGenerative Adversarial NetworksFinancial EngineeringStatisticsFinance
We propose a novel approach for sampling realistic financial correlation matrices. This approach is based on generative adversarial networks. Experiments demonstrate that generative adversarial networks are able to recover most of the known stylized facts about empirical correlation matrices estimated on asset returns. This is the first time such results are documented in the literature. Practical financial applications range from trading strategies enhancement to risk and portfolio stress testing. Such generative models can also help ground empirical finance deeper into science by allowing for falsifiability of statements and more objective comparison of empirical methods.
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