KinRob:一个基于本体的机器人,用于解决运动学问题

Jiarong Zhang, Jinsha Yuan, Jianing Xu, Shuangshuang Ban, Xinyu Zan, Jin Zhang
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引用次数: 1

摘要

智能答疑技术使计算机能够自动解决问题,常用于开发导师制,具有广泛的应用前景。然而,由于缺乏语言分析和理解方法,求解运动学问题的智能算法研究很少。开发这样的算法是具有挑战性的,因为解决运动学问题是一项复杂的任务,包括文本理解、问题分析和自动解决。要理解运动学问题中涉及的所有这些复杂性,需要一些背景知识。而自动求解器只有具备强大的内部知识表示系统才能完成这些任务。因此,我们开发了KinRob,一个结合神经网络和本体来解决运动学问题的教程系统。首先,我们提出了KinRob的本体,定义了运动学知识,可以帮助机器人理解运动学问题。其次,为了将自然语言文本与本体进行匹配,提出了一种基于命名实体识别(NER)中运动学问题理解模型的标记方案。最后,进行了大量的实验,实验结果表明,该方法在权威来源的运动问题数据集上的性能优于基线算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KinRob: An ontology based robot for solving kinematic problems
Intelligent answering technology, which enables computers to solve problems automatically, is often used to develop tutorial systems, and has a wide range of application prospects. However, due to the lack of linguistic analysis and understanding methods, there are few researches on intelligent algorithms for solving kinematics problems. Developing such an algorithm is challenging, because solving kinematics problems is a complex task that includes text understanding, problem analysis, and automatic solution. To understand all these complexities involved in kinematics problems requires background knowledge. And only when an automatic solver contains a powerful internal knowledge representation system can it perform these tasks. We, thus, develop KinRob, an tutorial system for solving kinematics problems by combining neural network and ontology. Firstly, we propose an ontology for KinRob, which defines the knowledge of kinematics, and can help the robot understand a kinematics problem. Secondly, to match the text in natural language with the ontology, we propose a novel tagging scheme based on the kinematic problem understanding model in named entity recognition (NER). Finally, extensive experiments are conducted, and the experimental results show that the performance of the proposed method on a dataset of kinematic problems from authoritative sources better than the baseline algorithms.
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