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聚类分析文献英文翻译

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电气信息工程学院 外 文 翻 译 英文名称: Data mining-clu stering 译文名称: 数据挖掘—聚类分析 专 业: 自动化 姓 名: **** 班级学号: **** 指导教师: ****** 译文出 处 : Data mining:Ian H.Witten, Eibe Frank 著 二○一○年四月二十六日 Clu stering 5.1 INTRODUCTION Clustering is similar to classification in that data are grouped. However, unlike classification, the groups are not predefined. Instead, the grouping is accomplished by finding similarities between data according to characteristics found in the actual data. The groups are called clusters. Some authors view clustering as a special type of classification. In this text, however, we follow a more conventional view in that the two are different. Many definitions for clusters have been proposed:  Set of like elements. Elements from different clusters are not alike.  The distance between points in a cluster is less than the distance between a point in the cluster and any point outside it. A term similar to clustering is database segmentation, where like tuple (record) in a database are grouped together. This is done to partition or segment the database into components that then give the user a more general view of the data. In this case text, we do not differentiate between segmentation and clustering. A simple example of clustering is found in Example 5.1. This example illustrates the fact that that determining how to do the clustering is not straightforward. As illustrated in Figure 5.1, a given set of data may be clustered on different attributes. Here a group of homes in a geographic area is shown. The first floor type of clustering is based on the location of the home. Homes that are geographically close to each other are clustered t...

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