Financial Inputs Prediction with Machine Learning and Covariance Matrix Applications
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Date
2025
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Institute of Electrical and Electronics Engineers Inc.
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Abstract
Reliable estimation of the time-varying covariance matrix of asset returns is indispensable for portfolio construction, risk budgeting, and automated advisory services. Conventional estimators-rolling-window sample covariances, EWMA filters, and GARCH families-remain anchored to historical prices and therefore adapt slowly when market conditions pivot. To overcome this latency, we propose an end-to-end, machine-learning-driven framework that forecasts future covariances directly from high-frequency equity data, largely decoupling risk estimation from past observations. Our pipeline ingests heterogeneous stock feeds through a real-time API, applies error-minimising imputation (forward/backward fill, spline, VAR, wavelet, and co-kriging), and standardises returns via empirically selected scaling schemes. The processed features are then fed to a model zoo comprising linear and penalised regressions, tree ensembles (Random Forest, XGBoost, LightGBM, CatBoost), and kernel-based Support Vector Regression. Weekly walk-forward evaluation on a universe of Turkish insurance equities shows that LightGBM and SVR cut out-of-sample covariance prediction error by up to 35 % versus classical benchmarks. We embed the predicted matrices into five allocation engines-Markowitz mean-variance, Black-Litterman, minimum-variance, Risk Parity, and CVaR optimisation-demonstrating that Risk Parity delivers the most consistent variance reduction across 15 stock pairs, while Black-Litterman excels for idiosyncratic combinations such as ANSGR-AKGRT. A granular analysis reveals that day-to-day sign changes in returns create structural breaks that generic regressors miss; augmenting the architecture with a volatility-state classifier and regime-specific learners markedly sharpens turning-point detection. Beyond statistical gains, the framework is production-ready: it is fully implemented in Python, runs on cloud notebooks, and plugs into robo-advisory dashboards. The study thus bridges academic advances in covariance prediction with operational portfolio management, paving the way for broader cross-sector deployment and future research on deep sequential models, transaction-cost awareness, and multi-asset scalability. © 2025 Elsevier B.V., All rights reserved.
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Fuzhou University; IEEE
Keywords
Based Covariance Estimation, Markowitz Modern Portfolio Theory, Robo-Advisory Applications, Portfolio Optimization, Benchmarking, Budget Control, Commerce, Costs, Covariance Matrix, Decision Trees, Electronic Trading, Financial Markets, Forestry, Insurance, Investments, Random Forests, Risk Assessment, Risk Management, Risk Perception, Statistics, Support Vector Regression, Covariance Estimation, Covariance Matrices, Machine-Learning, Sample Covariances, Forecasting
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-- 5th IEEE International Conference on Software Engineering and Artificial Intelligence, SEAI 2025 -- Fuzhou -- 211452
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7
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10
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