Expensive optimization problems (EOPs) present significant challenges for traditional evolutionary optimization due to their limited evaluation calls. Although surrogate-assisted search (SAS) has become a popular paradigm for addressing EOPs, it still suffers from the cold-start issue. In response to this challenge, knowledge transfer has been gaining popularity for its ability to leverage search experience from potentially related instances, ultimately facilitating head-start optimization for more efficient decision-making. However, the curse of negative transfer persists when applying knowledge transfer to EOPs, primarily due to the inherent limitations of existing methods in assessing knowledge transferability. On the one hand, a priori transferability assessment criteria are intrinsically inaccurate due to their imprecise understandings. On the other hand, a posteriori methods often necessitate sufficient observations to make correct inferences, rendering them inefficient when applied to EOPs. Considering the above, this paper introduces a Bayesian competitive knowledge transfer (BCKT) method developed to improve multi-task SAS (MSAS) when addressing multiple EOPs simultaneously. Specifically, the transferability of knowledge is estimated from a Bayesian perspective that accommodates both prior beliefs and empirical evidence, enabling accurate competition between inner-task and inter-task solutions, ultimately leading to the adaptive use of promising solutions while effectively suppressing inferior ones. The effectiveness of our method in boosting various SAS algorithms for both multi-task and many-task problems is empirically validated, complemented by comparative studies that demonstrate its superiority over peer algorithms and its applicability to real-world scenarios. The source code of our method is available at https://github.com/XmingHsueh/MSAS-BCKT.
翻译:昂贵优化问题因其有限的评估次数而对传统进化优化方法构成显著挑战。尽管代理辅助搜索已成为应对此类问题的流行范式,但其仍面临冷启动问题。针对这一挑战,知识迁移技术因其能够利用潜在相关实例的搜索经验而日益受到关注,最终通过热启动优化实现更高效的决策。然而,将知识迁移应用于昂贵优化时,负迁移困境依然存在,这主要源于现有方法在评估知识可迁移性方面的固有局限。一方面,先验可迁移性评估准则因认知不精确而本质存在偏差;另一方面,后验方法通常需要充足观测数据才能做出正确推断,在昂贵优化场景下效率低下。基于以上考量,本文提出一种贝叶斯竞争知识迁移方法,旨在同时处理多个昂贵优化问题时增强多任务代理辅助搜索的性能。具体而言,该方法从贝叶斯视角评估知识可迁移性,兼容先验信念与经验证据,实现任务内解与任务间解的精准竞争,从而自适应地利用有潜力的解并有效抑制劣质解。通过实证研究验证了本方法在提升各类代理辅助搜索算法处理多任务及众任务问题方面的有效性,对比实验进一步证明了其相对于同类算法的优越性及其在实际场景中的适用性。本方法的源代码公开于 https://github.com/XmingHsueh/MSAS-BCKT。