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Empirical risk minimization algorithm for multiclass classification of S.D.E. paths

18 March 2025
Christophe Denis
Eddy Ella Mintsa
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Abstract

We address the multiclass classification problem for stochastic diffusion paths, assuming that the classes are distinguished by their drift functions, while the diffusion coefficient remains common across all classes. In this setting, we propose a classification algorithm that relies on the minimization of the L 2 risk. We establish rates of convergence for the resulting predictor. Notably, we introduce a margin assumption under which we show that our procedure can achieve fast rates of convergence. Finally, a simulation study highlights the numerical performance of our classification algorithm.

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@article{denis2025_2503.14045,
  title={ Empirical risk minimization algorithm for multiclass classification of S.D.E. paths },
  author={ Christophe Denis and Eddy Ella Mintsa },
  journal={arXiv preprint arXiv:2503.14045},
  year={ 2025 }
}
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