Data-Driven Approach
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Statistical Guarantees in Data-Driven Nonlinear Control: Conformal Robustness for Stability and Safety
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Developing a novel Comorbidities Index for predicting 10-year mortality in Prostate Cancer patients: A computational data-driven approach
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A Koopman Set-Membership Approach for Nonlinear Data-Driven Control with Stability Guarantees
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A Data-Driven Approach to Idiomaticity Based on Experts' Criteria in Theoretical Linguistics
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A Unified Framework for Structured Flow Modeling: From Continuous Fields to Data-Driven Representations
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Data-Driven Stochastic Control: Foundations and Guarantees
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