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Learning and Representing Temporal Knowledge in Recurrent Networks

机译:在递归网络中学习和表示时间知识

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摘要

The effective integration of knowledge representation, reasoning, and learning in a robust computational model is one of the key challenges of computer science and artificial intelligence. In particular, temporal knowledge and models have been fundamental in describing the behavior of computational systems. However, knowledge acquisition of correct descriptions of a system's desired behavior is a complex task. In this paper, we present a novel neural-computation model capable of representing and learning temporal knowledge in recurrent networks. The model works in an integrated fashion. It enables the effective representation of temporal knowledge, the adaptation of temporal models given a set of desirable system properties, and effective learning from examples, which in turn can lead to temporal knowledge extraction from the corresponding trained networks. The model is sound from a theoretical standpoint, but it has also been tested on a case study in the area of model verification and adaptation. The results contained in this paper indicate that model verification and learning can be integrated within the neural computation paradigm, contributing to the development of predictive temporal knowledge-based systems and offering interpretable results that allow system researchers and engineers to improve their models and specifications. The model has been implemented and is available as part of a neural-symbolic computational toolkit.
机译:在强大的计算模型中有效地集成知识表示,推理和学习是计算机科学和人工智能的主要挑战之一。特别地,时间知识和模型已经成为描述计算系统行为的基础。但是,获得对系统所需行为的正确描述的知识是一项复杂的任务。在本文中,我们提出了一种新颖的神经计算模型,该模型能够表示和学习循环网络中的时间知识。该模型以集成方式工作。它使时间知识的有效表示,给定一组所需的系统属性的时间模型的适应以及对示例的有效学习成为可能,这反过来又可以导致从相应的训练网络中提取时间知识。从理论的角度来看,该模型是合理的,但也已在模型验证和适应领域的案例研究中对其进行了测试。本文包含的结果表明,模型验证和学习可以集成到神经计算范式中,从而有助于基于预测性时态知识的系统的开发,并提供可解释的结果,从而使系统研究人员和工程师能够改进其模型和规格。该模型已经实现,可以作为神经系统符号计算工具箱的一部分使用。

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