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      SOREL: A Stochastic Algorithm for Spectral Risks Minimization

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          Abstract

          The spectral risk has wide applications in machine learning, especially in real-world decision-making, where people are not only concerned with models' average performance. By assigning different weights to the losses of different sample points, rather than the same weights as in the empirical risk, it allows the model's performance to lie between the average performance and the worst-case performance. In this paper, we propose SOREL, the first stochastic gradient-based algorithm with convergence guarantees for the spectral risk minimization. Previous algorithms often consider adding a strongly concave function to smooth the spectral risk, thus lacking convergence guarantees for the original spectral risk. We theoretically prove that our algorithm achieves a near-optimal rate of \(\widetilde{O}(1/\sqrt{\epsilon})\) in terms of \(\epsilon\). Experiments on real datasets show that our algorithm outperforms existing algorithms in most cases, both in terms of runtime and sample complexity.

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          Author and article information

          Journal
          19 July 2024
          Article
          2407.14618
          40044579-4244-4cca-af1f-dfa53e25fd8d

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          math.OC cs.LG

          Numerical methods,Artificial intelligence
          Numerical methods, Artificial intelligence

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