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首页> 外文期刊>Journal of International Medical Research >Explanatory Approach for Evaluation of Machine Learning-Induced Knowledge
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Explanatory Approach for Evaluation of Machine Learning-Induced Knowledge

机译:机器学习诱导知识的评估方法

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Progress in biomedical research has resulted in an explosive growth of data. Use of the world wide web for sharing data has opened up possibilities for exhaustive data mining analysis. Symbolic machine learning approaches used in data mining, especially ensemble approaches, produce large sets of patterns that need to be evaluated. Manual evaluation of all patterns by a human expert is almost impossible. We propose a new approach to the evaluation of machine learning-induced knowledge by introducing a pre-evaluation step. Pre-evaluation is the automatic evaluation of patterns obtained from the data mining phase, using text mining techniques and sentiment analysis. It is used as a filter for patterns according to the support found in online resources, such as publicly-available repositories of scientific papers and reports related to the problem. The domain expert can then more easily distinguish between patterns or rules that are potential candidates for new knowledge.
机译:生物医学研究的进步导致数据的爆炸性增长。使用万维网共享数据为详尽的数据挖掘分析开辟了可能性。数据挖掘中使用的符号机器学习方法(尤其是集成方法)会产生大量需要评估的模式。由人类专家手动评估所有模式几乎是不可能的。通过引入预评估步骤,我们提出了一种新的方法来评估机器学习诱导的知识。预评估是使用文本挖掘技术和情感分析来自动评估从数据挖掘阶段获得的模式。根据在线资源(例如可公开获得的科学论文资料库和与问题相关的报告的存储库)中找到的支持,它用作模式的筛选器。然后,领域专家可以更轻松地区分可能是新知识候选对象的模式或规则。

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