利用分类技术改进人工智能的学习步骤

Emil Krsák, Tomas Kello
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引用次数: 0

摘要

本文的目的是提高机器学习的学习阶段。输入数据是学习的主要引擎和第一步。一开始的每一个小的质量缺陷都会导致结果的巨大差异。有两种可能的策略来纠正或过滤。要纠正数据需要对关系有更多的了解。对于滤波,我们可以计算阈值并消除异常。它减少了输入数据量,这也是不希望出现的现象。因此,我们将主要关注对它们的纠正和记录中缺失的特征的补充。我们期待更有效的学习步骤,这将导致更好的机器学习最终(预测)步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving learning step in artificial intelligence with categorization
The aim of this paper is to improve learning stage of machine learning. Input data are the main engine and first step in learning. Every small quality defect in the beginning can cause huge difference in result. There are two possible strategies to correct or filter. To correct data need to have some more knowledge about relations. For filtering we can calculate threshold and eliminate anomalies. It reduce amount of input data, what is also unwanted phenomenon. So we will mainly focus on correcting them and filling missing features in records. We expect more effective learning step which should result in better final (predicting) step of machine learning.
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