数据挖掘的概念和技术

S. Gnanapriya, R. Suganya, G. Devi, M. S. Kumar
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引用次数: 3514

摘要

了解对大型、复杂、信息丰富的数据集进行分析的需求。确定数据挖掘过程的目标和主要任务。描述数据挖掘技术的根源。认识到数据挖掘过程的迭代特征,并指定其基本步骤。解释数据质量对数据挖掘过程的影响。建立数据仓库和数据挖掘之间的关系。数据挖掘是一个迭代过程,在这个过程中,通过自动或手动方法,进度由发现来定义。数据挖掘在探索性分析场景中最有用,在这种场景中,对于什么将构成“有趣”的结果没有预先确定的概念。数据挖掘是在大量数据中搜索新的、有价值的和重要的信息。这是人类和计算机共同努力的结果。通过平衡人类专家在描述问题和目标方面的知识与计算机的搜索能力,可以获得最佳结果。在实践中,数据挖掘的两个主要目标往往是预测和描述。预测包括使用数据集中的一些变量或字段来预测其他感兴趣的变量的未知值或未来值。另一方面,描述侧重于寻找描述可由人类解释的数据的模式。因此,可以将数据挖掘活动分为两类:预测性数据挖掘,它产生由给定数据集描述的系统模型;描述性数据挖掘,它产生基于可用数据集的新的、重要的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining Concepts and Techniques
Understand the need for analyses of large, complex, information-rich data sets. Identify the goals and primary tasks of the data-mining process. Describe the roots of data-mining technology. Recognize the iterative character of a data-mining process and specify its basic steps. Explain the influence of data quality on a data-mining process. Establish the relation between data warehousing and data mining. Data mining is an iterative process within which progress is defined by discovery, through either automatic or manual methods. Data mining is most useful in an exploratory analysis scenario in which there are no predetermined notions about what will constitute an "interesting" outcome. Data mining is the search for new, valuable, and nontrivial information in large volumes of data. It is a cooperative effort of humans and computers. Best results are achieved by balancing the knowledge of human experts in describing problems and goals with the search capabilities of computers. In practice, the two primary goals of data mining tend to be prediction and description. Prediction involves using some variables or fields in the data set to predict unknown or future values of other variables of interest. Description, on the other hand, focuses on finding patterns describing the data that can be interpreted by humans. Therefore, it is possible to put data-mining activities into one of two categories: Predictive data mining, which produces the model of the system described by the given data set, or Descriptive data mining, which produces new, nontrivial information based on the available data set.
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