Symbolic Visual Reinforcement Learning: A Scalable Framework With Object-Level Abstraction and Differentiable Expression Search

Wenqing Zheng;S. P. Sharan;Zhiwen Fan;Kevin Wang;Yihan Xi;Zhangyang Wang
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Abstract

Learning efficient and interpretable policies has been a challenging task in reinforcement learning (RL), particularly in the visual RL setting with complex scenes. While neural networks have achieved competitive performance, the resulting policies are often over-parameterized black boxes that are difficult to interpret and deploy efficiently. More recent SRL frameworks have shown that high-level domain-specific programming logic can be designed to handle both policy learning and symbolic planning. However, these approaches rely on coded primitives with little feature learning, and when applied to high-dimensional visual scenes, they can suffer from scalability issues and perform poorly when images have complex object interactions. To address these challenges, we propose Differentiable Symbolic Expression Search (DiffSES), a novel symbolic learning approach that discovers discrete symbolic policies using partially differentiable optimization. By using object-level abstractions instead of raw pixel-level inputs, DiffSES is able to leverage the simplicity and scalability advantages of symbolic expressions, while also incorporating the strengths of neural networks for feature learning and optimization. Our experiments demonstrate that DiffSES is able to generate symbolic policies that are simpler and more and scalable than state-of-the-art SRL methods, with a reduced amount of symbolic prior knowledge.
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符号视觉强化学习:具有对象级抽象和可变表达式搜索的可扩展框架
在强化学习(RL)中,学习高效且可解释的策略一直是一项具有挑战性的任务,特别是在具有复杂场景的视觉强化学习环境中。虽然神经网络已经取得了具有竞争力的性能,但由此产生的策略通常是过度参数化的黑盒子,难以有效地解释和部署。最近的SRL框架表明,可以设计高级特定于领域的编程逻辑来处理策略学习和符号规划。然而,这些方法依赖于编码原语,几乎没有特征学习,当应用于高维视觉场景时,它们可能会受到可伸缩性问题的影响,并且在图像具有复杂的对象交互时表现不佳。为了解决这些挑战,我们提出了可微符号表达式搜索(DiffSES),这是一种新颖的符号学习方法,它使用部分可微优化来发现离散符号策略。通过使用对象级抽象而不是原始的像素级输入,DiffSES能够利用符号表达式的简单性和可伸缩性优势,同时还结合了神经网络在特征学习和优化方面的优势。我们的实验表明,DiffSES能够生成比最先进的SRL方法更简单、更具可扩展性的符号策略,并且减少了符号先验知识的数量。
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