论文标题

自然语言交流中概念,动机和情感过程的知识表示

Knowledge Representation for Conceptual, Motivational, and Affective Processes in Natural Language Communication

论文作者

Ho, Seng-Beng, Wang, Zhaoxia, Quek, Boon-Kiat, Cambria, Erik

论文摘要

自然语言交流是一个复杂而复杂的过程。演讲者通常从要传达的内容的意图和动机开始,并从交流中期望得到什么影响,同时考虑到听众的心理模型来策划适当的句子。听众同样也必须解释说话者的含义,并同时考虑说话者的精神状态。必须适当地代表成功,概念,动机和情感过程,以推动语言的产生和理解过程。语言处理在诸如聊天机器人和机器翻译等应用程序中的大数据方法方面取得了良好的成功。但是,在人类机器人的协作社会交流和使用自然语言向机器人提供精确的指示时,需要更深入地表示概念,动机和情感过程。本文利用了ugalrs(统一的一般自主和语言推理系统)框架和CD+(概念代表加)代表方案,以说明如何通过语言通过语言进行社交交流,以一种以深层和一般方式处理概念,动机和情感过程的知识代表方案。尽管在本文中培养了一小部分概念,动机和情感,但其主要贡献是阐明知识表示和处理的一般框架,以将这些方面联系在一起,以将自然语言交流的目的为智能系统服务。

Natural language communication is an intricate and complex process. The speaker usually begins with an intention and motivation of what is to be communicated, and what effects are expected from the communication, while taking into consideration the listener's mental model to concoct an appropriate sentence. The listener likewise has to interpret what the speaker means, and respond accordingly, also with the speaker's mental state in mind. To do this successfully, conceptual, motivational, and affective processes have to be represented appropriately to drive the language generation and understanding processes. Language processing has succeeded well with the big data approach in applications such as chatbots and machine translation. However, in human-robot collaborative social communication and in using natural language for delivering precise instructions to robots, a deeper representation of the conceptual, motivational, and affective processes is needed. This paper capitalizes on the UGALRS (Unified General Autonomous and Language Reasoning System) framework and the CD+ (Conceptual Representation Plus) representational scheme to illustrate how social communication through language is supported by a knowledge representational scheme that handles conceptual, motivational, and affective processes in a deep and general way. Though a small set of concepts, motivations, and emotions is treated in this paper, its main contribution is in articulating a general framework of knowledge representation and processing to link these aspects together in serving the purpose of natural language communication for an intelligent system.

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