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Integration of Language and Sensor Information

机译:语言和传感器信息的整合

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摘要

The talk describes the development of basic technologies of intelligent systems fusing data from multiple domains and leading to automated computational techniques for understanding data contents. Understanding involves inferring appropriate decisions and recommending proper actions, which in turn requires fusion of data and knowledge about objects, situations, and actions. Data might include sensory data, verbal reports, intelligence intercepts, or public records, whereas knowledge ought to encompass the whole range of objects, situations, people and their behavior, and knowledge of languages. In the past, a fundamental difficulty in combining knowledge with data was the combinatorial complexity of computations, too many combinations of data and knowledge pieces had to be evaluated. Recent progress in understanding of natural intelligent systems, including the human mind, leads to the development of neurophysiologically motivated architectures for solving these challenging problems, in particular the role of emotional neural signals in overcoming combinatorial complexity of old logic-based approaches. Whereas past approaches based on logic tended to identify logic with language and thinking, recent studies in cognitive linguistics have led to appreciation of more complicated nature of linguistic models. Little is known about the details of the brain mechanisms integrating language and thinking. Understanding and fusion of linguistic information with sensory data represent a novel challenging aspect of the development of integrated fusion systems. The presentation will describe a non-combinatorial approach to this problem and outline techniques that can be used for fusing diverse and uncertain knowledge with sensory and linguistic data.
机译:演讲描述了智能系统的基本技术的发展,这些技术融合了来自多个域的数据并导致了用于理解数据内容的自动化计算技术。理解涉及推断适当的决策并建议适当的行动,而这反过来又需要融合有关对象,情况和行动的数据和知识。数据可能包括感官数据,口头报告,情报拦截或公共记录,而知识应涵盖对象,情况,人及其行为的全部范围以及语言知识。过去,将知识与数据相结合的一个基本困难是计算的组合复杂性,必须评估太多的数据和知识片段组合。在理解包括人脑在内的自然智能系统方面的最新进展,导致了神经生理学驱动的体系结构的发展,以解决这些难题,特别是情感神经信号在克服基于逻辑的旧方法的组合复杂性方面的作用。过去基于逻辑的方法倾向于用语言和思维来识别逻辑,而认知语言学的最新研究却导致人们对语言模型更复杂的本质有所了解。关于整合语言和思维的大脑机制的细节知之甚少。语言信息与感官数据的理解和融合代表了集成融合系统发展的新挑战。该演讲将描述针对该问题的非组合方法,并概述可用于将各种不确定性知识与感官和语言数据融合的技术。

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