SVM-based knowledge topic identification toward the autonomous knowledge acquisition

Keedong Yoo
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引用次数: 5

Abstract

One of the most serious problems that conventional knowledge management (KM) encompasses has been pointed out tardy and ineffective acquisition of knowledge. To resolve this problem, knowledge must be autonomously acquired according to its context of use by applying the technique of keyword extraction in machine learning algorithm-based text mining. Once the topic of the given knowledge can be identified in an automated manner, then a set of knowledge can be explicitly stored in a knowledge repository; fully automated acquisition of knowledge can be achieved. This paper, therefore, suggests an amended knowledge acquisition framework, especially focused on the autonomous acquisition of knowledge in ordinary dialogues. The suggested methodology is underpinned by the functionality of the support vector machine (SVM) which was demonstrated to identify the topic of knowledge in the most accurate and efficient way. To validate the feasibility of the proposed concepts, CKAS (Context-based Knowledge Acquisition System), a prototype system, is implemented.
基于支持向量机的知识主题识别走向自主知识获取
传统知识管理的一个最严重的问题是知识获取的缓慢和无效。为了解决这一问题,必须在基于机器学习算法的文本挖掘中应用关键字提取技术,根据知识的使用情境自主获取知识。一旦给定知识的主题可以自动识别,那么一组知识就可以显式地存储在知识存储库中;完全自动化的知识获取可以实现。因此,本文提出了一个改进的知识获取框架,特别关注普通对话中的知识自主获取。所建议的方法是由支持向量机(SVM)的功能支撑的,该功能被证明以最准确和有效的方式识别知识主题。为了验证所提出概念的可行性,实现了一个原型系统CKAS(基于上下文的知识获取系统)。
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