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ProteuS: A Generative Approach for Simulating Concept Drift in Financial Markets

ProteuS: A Generative Approach for Simulating Concept Drift in Financial Markets ArXiv ID: 2509.11844 “View on arXiv” Authors: Andrés L. Suárez-Cetrulo, Alejandro Cervantes, David Quintana Abstract Financial markets are complex, non-stationary systems where the underlying data distributions can shift over time, a phenomenon known as regime changes, as well as concept drift in the machine learning literature. These shifts, often triggered by major economic events, pose a significant challenge for traditional statistical and machine learning models. A fundamental problem in developing and validating adaptive algorithms is the lack of a ground truth in real-world financial data, making it difficult to evaluate a model’s ability to detect and recover from these drifts. This paper addresses this challenge by introducing a novel framework, named ProteuS, for generating semi-synthetic financial time series with pre-defined structural breaks. Our methodology involves fitting ARMA-GARCH models to real-world ETF data to capture distinct market regimes, and then simulating realistic, gradual, and abrupt transitions between them. The resulting datasets, which include a comprehensive set of technical indicators, provide a controlled environment with a known ground truth of regime changes. An analysis of the generated data confirms the complexity of the task, revealing significant overlap between the different market states. We aim to provide the research community with a tool for the rigorous evaluation of concept drift detection and adaptation mechanisms, paving the way for more robust financial forecasting models. ...

August 30, 2025 · 2 min · Research Team

Liquidity-adjusted Return and Volatility, and Autoregressive Models

Liquidity-adjusted Return and Volatility, and Autoregressive Models ArXiv ID: 2503.08693 “View on arXiv” Authors: Unknown Abstract We construct liquidity-adjusted return and volatility using purposely designed liquidity metrics (liquidity jump and liquidity diffusion) that incorporate additional liquidity information. Based on these measures, we introduce a liquidity-adjusted ARMA-GARCH framework to address the limitations of traditional ARMA-GARCH models, which are not effectively in modeling illiquid assets with high liquidity variability, such as cryptocurrencies. We demonstrate that the liquidity-adjusted model improves model fit for cryptocurrencies, with greater volatility sensitivity to past shocks and reduced volatility persistence of erratic past volatility. Our model is validated by the empirical evidence that the liquidity-adjusted mean-variance (LAMV) portfolios outperform the traditional mean-variance (TMV) portfolios. ...

March 2, 2025 · 2 min · Research Team

Liquidity Premium, Liquidity-Adjusted Return and Volatility, and Extreme Liquidity

Liquidity Premium, Liquidity-Adjusted Return and Volatility, and Extreme Liquidity ArXiv ID: 2306.15807 “View on arXiv” Authors: Unknown Abstract We establish innovative liquidity premium measures, and construct liquidity-adjusted return and volatility to model assets with extreme liquidity, represented by a portfolio of selected crypto assets, and upon which we develop a set of liquidity-adjusted ARMA-GARCH/EGARCH models. We demonstrate that these models produce superior predictability at extreme liquidity to their traditional counterparts. We provide empirical support by comparing the performances of a series of Mean Variance portfolios. ...

June 27, 2023 · 1 min · Research Team