论文标题

神经符号时空推理

Neuro-Symbolic Spatio-Temporal Reasoning

论文作者

Lee, Jae Hee, Sioutis, Michael, Ahrens, Kyra, Alirezaie, Marjan, Kerzel, Matthias, Wermter, Stefan

论文摘要

关于空间和时间的知识对于解决物理世界中的问题是必要的:位于物理世界中并与对象互动的AI代理通常需要推理对象之间的位置和关系;一旦代理计划其行动解决任务,就需要考虑时间方面(例如,随着时间的推移要执行的行动)。然而,除了与物理世界互动之外,还需要时空知识,并且经常通过类比和隐喻转移到概念的抽象世界(例如,“悬挂在我们的头上的威胁”)。由于空间和时间推理无处不在,因此已尝试将其集成到AI系统中。在知识表示领域,空间和时间推理在很大程度上仅限于建模对象和关系,并开发推理方法来验证有关对象和关系的陈述。另一方面,神经网络研究人员试图教授模型,从具有有限的推理能力的数据中学习空间关系。以互惠互利的方式弥合这两种方法之间的差距可以使我们能够解决许多复杂的现实世界问题,例如自然语言处理,视觉询问答案和语义图像分割。在本章中,我们从神经符号AI的角度看待了这个集成问题。具体而言,我们提出了逻辑推理和机器学习之间的协同作用,这将基于空间和时间知识。描述一些成功的应用程序,剩余的挑战和与此方向有关的评估数据集是该贡献的主要主题。

Knowledge about space and time is necessary to solve problems in the physical world: An AI agent situated in the physical world and interacting with objects often needs to reason about positions of and relations between objects; and as soon as the agent plans its actions to solve a task, it needs to consider the temporal aspect (e.g., what actions to perform over time). Spatio-temporal knowledge, however, is required beyond interacting with the physical world, and is also often transferred to the abstract world of concepts through analogies and metaphors (e.g., "a threat that is hanging over our heads"). As spatial and temporal reasoning is ubiquitous, different attempts have been made to integrate this into AI systems. In the area of knowledge representation, spatial and temporal reasoning has been largely limited to modeling objects and relations and developing reasoning methods to verify statements about objects and relations. On the other hand, neural network researchers have tried to teach models to learn spatial relations from data with limited reasoning capabilities. Bridging the gap between these two approaches in a mutually beneficial way could allow us to tackle many complex real-world problems, such as natural language processing, visual question answering, and semantic image segmentation. In this chapter, we view this integration problem from the perspective of Neuro-Symbolic AI. Specifically, we propose a synergy between logical reasoning and machine learning that will be grounded on spatial and temporal knowledge. Describing some successful applications, remaining challenges, and evaluation datasets pertaining to this direction is the main topic of this contribution.

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