数据分析中的有意义误差估计

René Villeda-Ruz, Javier García-García
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引用次数: 2

摘要

近年来,在知识发现过程中,特别是在分类任务中,设计技术作为支持工具已经做了很多工作。在大多数情况下,假设应用这些技术的数据没有错误,或者数据在前一个阶段被清理过。然而,数据清理过程对于一般的知识发现过程来说是非常耗费时间和精力的。在本文中,我们提出了初步结果,以设计一种方法来确定将通过朴素贝叶斯分类器处理的数据集中的错误数量是否会影响结果。我们的结果可以用作确定是否有必要对将由分类器处理的数据执行数据清理任务的标准。由于清理过程需要花费大量的时间和精力,我们的结果在整个知识发现过程中是一个有用的工具。
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Meaningful Error Estimations for Data Analysis
Much work has been done in recent years on designing techniques used as support tools in the knowledge discovery process, particularly in classification tasks. In most cases it is assumed that the data where these techniques are applied is free of errors or the data was cleaned in a previous phase. However the data cleaning process represents a great amount of time and effort to the general knowledge discovery process.In this paper, we present preliminary results to devise a method to determine if the amount of errors in a dataset that will be processed by means of Naive Bayes classifier will influence the results. Our results may be used as a criterion to determine if it is necessary to carry out the data cleaning tasks over the data that will be processed by the classifier. Since the cleaning process takes a lot of time and effort our results are a helpful tool in the overall knowledge discovery process.
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