AutoRL X:网络自动强化学习

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-06-03 DOI:10.1145/3670692
Loraine Franke, Daniel Karl I. Weidele, Nima Dehmamy, Lipeng Ning, Daniel Haehn
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引用次数: 0

摘要

强化学习(RL)在决策优化中至关重要,但其固有的复杂性往往给解释和交流带来挑战。AutoDOViz是一个用于决策优化的自动强化学习界面,本文以该界面为基础,揭示了强化学习网络平台的开源扩展。我们的工作引入了 RL 可视化分类法,并启动了一个动态网络平台,利用 ARLO 和 Svelte.js 等 AutoRL 框架的后端灵活性,在前端提供流畅的交互式用户体验。由于 AutoDOViz 并非开源,因此我们推出了 AutoRL X,这是一个专为可视化 RL 过程而设计的新界面。AutoRL X 是根据 AutoDOViz 研究中广泛的用户反馈和专家访谈形成的,它带来了一个具有实时、直观可视化功能的智能界面,可增强对 RL 代理的理解、协作努力和个性化。为了弥补在标准 RL 环境中准确呈现复杂现实世界挑战的不足,我们展示了我们的工具在医疗保健领域的应用,明确优化了脑刺激轨迹。一项用户研究对比了人类用户通过二维界面优化电场的表现和我们在 AutoRL X 中可视化分析的 RL 代理行为,评估了自动 RL 的实用性。我们的所有数据和代码均可在以下网址公开获取:https://github.com/lorifranke/autorlx。
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AutoRL X: Automated Reinforcement Learning on the Web

Reinforcement Learning (RL) is crucial in decision optimization, but its inherent complexity often presents challenges in interpretation and communication. Building upon AutoDOViz — an interface that pushed the boundaries of Automated RL for Decision Optimization — this paper unveils an open-source expansion with a web-based platform for RL. Our work introduces a taxonomy of RL visualizations and launches a dynamic web platform, leveraging backend flexibility for AutoRL frameworks like ARLO and Svelte.js for a smooth interactive user experience in the front end. Since AutoDOViz is not open-source, we present AutoRL X, a new interface designed to visualize RL processes. AutoRL X is shaped by the extensive user feedback and expert interviews from AutoDOViz studies, and it brings forth an intelligent interface with real-time, intuitive visualization capabilities that enhance understanding, collaborative efforts, and personalization of RL agents. Addressing the gap in accurately representing complex real-world challenges within standard RL environments, we demonstrate our tool's application in healthcare, explicitly optimizing brain stimulation trajectories. A user study contrasts the performance of human users optimizing electric fields via a 2D interface with RL agents’ behavior that we visually analyze in AutoRL X, assessing the practicality of automated RL. All our data and code is openly available at: https://github.com/lorifranke/autorlx.

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CiteScore
7.20
自引率
4.30%
发文量
567
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