Continuation Path Learning for Homotopy Optimization

Xi Lin, Zhiyuan Yang, Xiao-Yan Zhang, Qingfu Zhang
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Abstract

Homotopy optimization is a traditional method to deal with a complicated optimization problem by solving a sequence of easy-to-hard surrogate subproblems. However, this method can be very sensitive to the continuation schedule design and might lead to a suboptimal solution to the original problem. In addition, the intermediate solutions, often ignored by classic homotopy optimization, could be useful for many real-world applications. In this work, we propose a novel model-based approach to learn the whole continuation path for homotopy optimization, which contains infinite intermediate solutions for any surrogate subproblems. Rather than the classic unidirectional easy-to-hard optimization, our method can simultaneously optimize the original problem and all surrogate subproblems in a collaborative manner. The proposed model also supports real-time generation of any intermediate solution, which could be desirable for many applications. Experimental studies on different problems show that our proposed method can significantly improve the performance of homotopy optimization and provide extra helpful information to support better decision-making.
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同伦优化的延拓路径学习
同伦优化是一种传统的解决复杂优化问题的方法,它通过求解一系列难易的代理子问题。然而,该方法对连续调度设计非常敏感,可能导致原问题的次优解。此外,通常被经典同伦优化所忽略的中间解可能对许多实际应用程序很有用。在这项工作中,我们提出了一种新的基于模型的方法来学习同伦优化的整个连续路径,该路径包含任何代理子问题的无限中间解。与传统的单向易难优化不同,该方法能够以协作的方式同时优化原始问题和所有代理子问题。所提出的模型还支持任何中间解决方案的实时生成,这可能是许多应用程序所需要的。对不同问题的实验研究表明,本文提出的方法可以显著提高同伦优化的性能,并为更好的决策提供额外的有用信息。
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