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The future of optimization: How “learn to optimize” is reshaping algorithm design and configuration - EurekAlert


<p>In a review article published in National Science Review, Ke Tang from Southern University of Science and Technology and Xin Yao from Lingnan University present an overview of the &ldquo;Learn to Optimize&rdquo; (L2O) paradigm, which leverages machine learning methodologies to achieve efficient and high-quality automatic configuration and design of optimization algorithms. The article discusses the key ideas, approaches, theoretical foundations, successful application cases, and generalization issues of L2O.</p>

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