Learning an Optimization Algorithm through Human Design Iterations

arXiv: Learning Pub Date : 2016-08-24 DOI:10.1115/1.4037344
Thurston Sexton, Max Yi Ren
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引用次数: 19

Abstract

Solving optimal design problems through crowdsourcing faces a dilemma: On one hand, human beings have been shown to be more effective than algorithms at searching for good solutions of certain real-world problems with high-dimensional or discrete solution spaces; on the other hand, the cost of setting up crowdsourcing environments, the uncertainty in the crowd's domain-specific competence, and the lack of commitment of the crowd, all contribute to the lack of real-world application of design crowdsourcing. We are thus motivated to investigate a solution-searching mechanism where an optimization algorithm is tuned based on human demonstrations on solution searching, so that the search can be continued after human participants abandon the problem. To do so, we model the iterative search process as a Bayesian Optimization (BO) algorithm, and propose an inverse BO (IBO) algorithm to find the maximum likelihood estimators of the BO parameters based on human solutions. We show through a vehicle design and control problem that the search performance of BO can be improved by recovering its parameters based on an effective human search. Thus, IBO has the potential to improve the success rate of design crowdsourcing activities, by requiring only good search strategies instead of good solutions from the crowd.
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通过人类设计迭代学习优化算法
通过众包解决最优设计问题面临着一个两难境地:一方面,在寻找具有高维或离散解空间的某些现实问题的良好解时,人类已被证明比算法更有效;另一方面,建立众包环境的成本、群体在特定领域能力的不确定性以及群体缺乏承诺,都导致了设计众包缺乏实际应用。因此,我们有动机研究一种解决方案搜索机制,其中优化算法根据人类对解决方案搜索的演示进行调整,以便在人类参与者放弃问题后继续搜索。为此,我们将迭代搜索过程建模为贝叶斯优化(BO)算法,并提出了一种逆贝叶斯优化(IBO)算法来寻找基于人类解的BO参数的最大似然估计。我们通过一个车辆设计和控制问题表明,通过基于有效的人工搜索恢复其参数可以提高BO的搜索性能。因此,IBO有潜力提高设计众包活动的成功率,只需要好的搜索策略,而不是从人群中获得好的解决方案。
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