Self Learning Design Agent (SLDA): Enabling Deep Learning and Tree Search in Complex Action Spaces

A. Raina, J. Cagan, Christopher McComb
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引用次数: 2

Abstract

Building an AI agent that can design on its own has been a goal since the 1980s. Recently, deep learning has shown the ability to learn from large-scale data, enabling significant advances in data-driven design. However, learning over prior data limits us only to solve problems that have been solved before and biases us towards existing solutions. The ultimate goal for a design agent is the ability to learn generalizable design behavior in a problem space without having seen it before. We introduce a self-learning agent framework in this work that achieves this goal. This framework integrates a deep policy network with a novel tree search algorithm, where the tree search explores the problem space, and the deep policy network leverages self-generated experience to guide the search further. This framework first demonstrates an ability to discover high-performing generative strategies without any prior data, and second, it illustrates a zero-shot generalization of generative strategies across various unseen boundary conditions. This work evaluates the effectiveness and versatility of the framework by solving multiple versions of the truss design problem without retraining. Overall, this paper presents a methodology to self-learn high-performing and generalizable problem-solving behavior in an arbitrary problem space, circumventing the needs for expert data, existing solutions, and problem-specific learning.
自学习设计代理(SLDA):在复杂动作空间中实现深度学习和树状搜索
自20世纪80年代以来,建立一个可以自主设计的人工智能代理一直是一个目标。最近,深度学习已经显示出从大规模数据中学习的能力,使数据驱动设计取得了重大进展。然而,对先前数据的学习限制了我们只能解决之前已经解决的问题,并使我们倾向于现有的解决方案。设计代理的最终目标是能够在没有见过的情况下学习问题空间中的通用设计行为。我们在这项工作中引入了一个自学习代理框架来实现这一目标。该框架将深度策略网络与一种新颖的树搜索算法相结合,其中树搜索探索问题空间,深度策略网络利用自生成经验来指导进一步的搜索。该框架首先展示了在没有任何先验数据的情况下发现高性能生成策略的能力,其次,它说明了在各种看不见的边界条件下生成策略的零概率泛化。这项工作通过解决多个版本的桁架设计问题来评估框架的有效性和通用性,而无需再培训。总的来说,本文提出了一种在任意问题空间中自我学习高性能和可推广的问题解决行为的方法,绕过了对专家数据、现有解决方案和特定问题学习的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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