多模态目标下多目标进化算法的理论分析。

IF 4.6 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Evolutionary Computation Pub Date : 2023-12-01 DOI:10.1162/evco_a_00328
Weijie Zheng, Benjamin Doerr
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引用次数: 36

摘要

多目标进化算法成功地应用于许多现实世界的多目标优化问题。对于许多其他的人工智能方法,对这些算法的理论认识远远落后于它们在实践中的成功。特别是,以前的理论工作主要考虑由单峰目标组成的简单问题。作为深入理解进化算法如何解决多模态多目标问题的第一步,我们提出了OneJumpZeroJump问题,这是一个由两个与经典跳跃函数基准同构的目标组成的双目标问题。证明了概率为1的简单进化多目标优化器(SEMO)在不考虑运行时间的情况下不计算完整的Pareto前沿。相反,对于所有问题大小n和所有跳跃大小k∈[4..][n2-1],全局SEMO (GSEMO)在Θ((n-2k)nk)次迭代中覆盖了Pareto前沿。对于k=o(n),我们还显示了更紧密的边界32enk+1±o(nk+1),这可能是除了低阶项外MOEA的第一个紧密运行时边界。我们还将GSEMO与两种在单目标多模态问题中表现出优势的方法结合起来。当使用带有重尾突变操作符的GSEMO时,预期的运行时间至少提高kΩ(k)。当将Rajabi和Witt(2022)的最新停滞检测策略应用于GSEMO时,预期运行时间也提高了至少kΩ(k),并在k中超过了重尾GSEMO的一个小多项式因子。通过实验分析,我们表明这些渐近差异对于小问题规模已经是可见的:对于跳跃大小为4和问题大小在10到50之间的情况,可以观察到来自重尾突变的5倍加速和来自停滞检测的10倍加速。总的来说,我们的研究结果表明,最近发展起来的帮助单目标进化算法处理局部最优的思想也可以有效地应用于多目标优化。
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Theoretical Analyses of Multiobjective Evolutionary Algorithms on Multimodal Objectives.

Multiobjective evolutionary algorithms are successfully applied in many real-world multiobjective optimization problems. As for many other AI methods, the theoretical understanding of these algorithms is lagging far behind their success in practice. In particular, previous theory work considers mostly easy problems that are composed of unimodal objectives. As a first step towards a deeper understanding of how evolutionary algorithms solve multimodal multiobjective problems, we propose the OneJumpZeroJump problem, a bi-objective problem composed of two objectives isomorphic to the classic jump function benchmark. We prove that the simple evolutionary multiobjective optimizer (SEMO) with probability one does not compute the full Pareto front, regardless of the runtime. In contrast, for all problem sizes n and all jump sizes k∈[4..n2-1], the global SEMO (GSEMO) covers the Pareto front in an expected number of Θ((n-2k)nk) iterations. For k=o(n), we also show the tighter bound 32enk+1±o(nk+1), which might be the first runtime bound for an MOEA that is tight apart from lower-order terms. We also combine the GSEMO with two approaches that showed advantages in single-objective multimodal problems. When using the GSEMO with a heavy-tailed mutation operator, the expected runtime improves by a factor of at least kΩ(k). When adapting the recent stagnation-detection strategy of Rajabi and Witt (2022) to the GSEMO, the expected runtime also improves by a factor of at least kΩ(k) and surpasses the heavy-tailed GSEMO by a small polynomial factor in k. Via an experimental analysis, we show that these asymptotic differences are visible already for small problem sizes: A factor-5 speed-up from heavy-tailed mutation and a factor-10 speed-up from stagnation detection can be observed already for jump size 4 and problem sizes between 10 and 50. Overall, our results show that the ideas recently developed to aid single-objective evolutionary algorithms to cope with local optima can be effectively employed also in multiobjective optimization.

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来源期刊
Evolutionary Computation
Evolutionary Computation 工程技术-计算机:理论方法
CiteScore
6.40
自引率
1.50%
发文量
20
审稿时长
3 months
期刊介绍: Evolutionary Computation is a leading journal in its field. It provides an international forum for facilitating and enhancing the exchange of information among researchers involved in both the theoretical and practical aspects of computational systems drawing their inspiration from nature, with particular emphasis on evolutionary models of computation such as genetic algorithms, evolutionary strategies, classifier systems, evolutionary programming, and genetic programming. It welcomes articles from related fields such as swarm intelligence (e.g. Ant Colony Optimization and Particle Swarm Optimization), and other nature-inspired computation paradigms (e.g. Artificial Immune Systems). As well as publishing articles describing theoretical and/or experimental work, the journal also welcomes application-focused papers describing breakthrough results in an application domain or methodological papers where the specificities of the real-world problem led to significant algorithmic improvements that could possibly be generalized to other areas.
期刊最新文献
Genetic Programming for Automatically Evolving Multiple Features to Classification. A Tri-Objective Method for Bi-Objective Feature Selection in Classification. Preliminary Analysis of Simple Novelty Search. IOHexperimenter: Benchmarking Platform for Iterative Optimization Heuristics. Pflacco: Feature-Based Landscape Analysis of Continuous and Constrained Optimization Problems in Python.
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