论文标题
一系列基于深度学习的无功能方法,用于表征单目标连续健身景观
A Collection of Deep Learning-based Feature-Free Approaches for Characterizing Single-Objective Continuous Fitness Landscapes
论文作者
论文摘要
探索性景观分析是一种有力的技术,可以在数值上表征单目标连续优化问题的景观。景观见解对于理解问题以及评估基准设置的多样性和组成至关重要。尽管这些功能具有无可辩驳的实用性,但它们却遭受了自己的疾病和缺点。因此,在这项工作中,我们提供了一种不同方法来表征优化景观的集合。与常规景观特征相似,我们需要一个少量初始样本。但是,我们开发了原始样本的替代表示,而不是基于该样本的计算功能。这些范围从点云到2D图像,因此完全不含特征。我们在深度学习的帮助下,在BBOB测试和预测上证明并验证了我们设计的方法,基于高级的,基于专家的景观特性,例如多模式的程度和漏斗结构的存在。我们方法的质量与依靠传统景观特征的方法相提并论。因此,我们为每个研究领域提供了令人兴奋的新观点,该视角利用问题信息,例如问题理解和算法设计以及自动化算法的配置和选择。
Exploratory Landscape Analysis is a powerful technique for numerically characterizing landscapes of single-objective continuous optimization problems. Landscape insights are crucial both for problem understanding as well as for assessing benchmark set diversity and composition. Despite the irrefutable usefulness of these features, they suffer from their own ailments and downsides. Hence, in this work we provide a collection of different approaches to characterize optimization landscapes. Similar to conventional landscape features, we require a small initial sample. However, instead of computing features based on that sample, we develop alternative representations of the original sample. These range from point clouds to 2D images and, therefore, are entirely feature-free. We demonstrate and validate our devised methods on the BBOB testbed and predict, with the help of Deep Learning, the high-level, expert-based landscape properties such as the degree of multimodality and the existence of funnel structures. The quality of our approaches is on par with methods relying on the traditional landscape features. Thereby, we provide an exciting new perspective on every research area which utilizes problem information such as problem understanding and algorithm design as well as automated algorithm configuration and selection.