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Implementation of Decision Tree Algorithm to Classify Knowledge Quality in a Knowledge Intensive System

机译:确定决策树算法在知识密集系统中对知识质量进行分类

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Knowledge is an important asset for an organisation as it facilitates organisational growth. To facilitate knowledge creation and sharing, this is where a knowledge-intensive system is required. One key area that hinders the effective use of knowledge-intensive systems in an organisation is the lack of knowledge quality. This causes the system to be underutilised, and as a result, knowledge will not be captured or shared effectively. Recent KM findings identified that machine learning could be beneficial to knowledge management. A literature review was conducted to identify knowledge of quality attributes and machine learning algorithms. From the findings, it was identified that the decision tree algorithm has a strong potential at classifying knowledge quality. An experiment was then devised to identify the training model required and measure its effectiveness using a pilot test. This involved using a knowledge-intensive system and mapping its variables to the respective knowledge quality attributes. From the experimentation result, the training model is then devised before implemented in a pilot test. The pilot test involved collecting knowledge using the same knowledge-intensive system before running the training model. From the results, it was identified that the decision tree could classify knowledge quality though the results yielded four different outputs at classifying knowledge quality. It was concluded that machine learning is beneficial in the area of knowledge management.
机译:知识是组织促进组织增长的重要资产。为了促进知识创建和共享,这是需要知识密集型系统的地方。阻碍组织中有效利用知识密集型系统的一个关键领域是缺乏知识质量。这使得系统未结束,因此,不会有效地捕获或共享知识。近期的KM结果确定了机器学习可能有利于知识管理。进行了一个文献综述,以确定质量属性和机器学习算法的知识。从调查结果中,确定决策树算法在分类知识质量方面具有很强的潜力。然后设计了一个实验,以识别所需的培训模型,并使用试验试验测量其有效性。这涉及使用知识密集型系统并将其变量映射到各个知识质量属性。从实验结果中,然后在试验试验中实施之前设计了训练模型。试点测试涉及在运行培训模型之前使用相同知识密集型系统收集知识。从结果中,确定决策树可以对知识质量进行分类,尽管结果在分类知识质量时产生了四种不同的输出。它的结论是,机器学习在知识管理领域有益。

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