AutoDOViz:以人为中心的决策优化自动化

D. Weidele, S. Afzal, Abel N. Valente, Cole Makuch, Owen Cornec, Long Vu, D. Subramanian, Werner Geyer, Rahul Nair, Inge Vejsbjerg, Radu Marinescu, Paulito Palmes, Elizabeth M. Daly, Loraine Franke, D. Haehn
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引用次数: 0

摘要

我们提出AutoDOViz,一个使用强化学习(RL)的自动决策优化(AutoDO)的交互式用户界面。决策优化(DO)通常由专门的DO研究人员进行实践,专家需要花很长时间通过试错来微调解决方案。AutoML管道搜索试图通过利用自动化来搜索和调整解决方案,使数据科学家更容易找到最佳的机器学习管道。最近,这些进展已被应用于AutoDO[36]领域,其类似的目标是通过算法选择和参数调整来找到最佳的强化学习管道。然而,与ML问题相比,Decision Optimization需要更复杂的问题规范。AutoDOViz旨在降低数据科学家在强化学习问题规范方面的进入门槛,利用AutoDO算法在强化学习管道搜索中的优势,最后,创建可视化和策略见解,以便在DO专家和领域专家之间沟通问题制定和解决方案建议时促进典型的互动性质。在本文中,我们报告了我们对DO从业者和业务顾问进行的半结构化专家访谈的发现,这导致了以人为中心的RL DO自动化的设计需求。我们与数据科学家一起评估了一个系统的实现,发现他们在使用我们提出的解决方案后更愿意参与到DO中来。AutoDOViz进一步增加了对RL代理模型的信任,并使自动化训练和评估过程更易于理解。正如机器学习任务中的其他自动化所显示的那样[33,59],我们还得出结论,当界面促进人机交互时,DO的强化学习自动化可以从用户中受益,反之亦然。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AutoDOViz: Human-Centered Automation for Decision Optimization
We present AutoDOViz, an interactive user interface for automated decision optimization (AutoDO) using reinforcement learning (RL). Decision optimization (DO) has classically being practiced by dedicated DO researchers [43] where experts need to spend long periods of time fine tuning a solution through trial-and-error. AutoML pipeline search has sought to make it easier for a data scientist to find the best machine learning pipeline by leveraging automation to search and tune the solution. More recently, these advances have been applied to the domain of AutoDO [36], with a similar goal to find the best reinforcement learning pipeline through algorithm selection and parameter tuning. However, Decision Optimization requires significantly more complex problem specification when compared to an ML problem. AutoDOViz seeks to lower the barrier of entry for data scientists in problem specification for reinforcement learning problems, leverage the benefits of AutoDO algorithms for RL pipeline search and finally, create visualizations and policy insights in order to facilitate the typical interactive nature when communicating problem formulation and solution proposals between DO experts and domain experts. In this paper, we report our findings from semi-structured expert interviews with DO practitioners as well as business consultants, leading to design requirements for human-centered automation for DO with RL. We evaluate a system implementation with data scientists and find that they are significantly more open to engage in DO after using our proposed solution. AutoDOViz further increases trust in RL agent models and makes the automated training and evaluation process more comprehensible. As shown for other automation in ML tasks [33, 59], we also conclude automation of RL for DO can benefit from user and vice-versa when the interface promotes human-in-the-loop.
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