可视化文本挖掘的顺序模式

P. C. Wong, W. Cowley, Harlan Foote, E. Jurrus, James J. Thomas
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引用次数: 79

摘要

数据挖掘中的顺序模式是A/spl rarr/B/spl rarr/C/spl rarr/D等元素的有限序列,其中A、B、C和D是同一域的元素。序列模式挖掘的目的是找到离散事件的模式,这些事件经常沿着时间轴以相同的排列方式发生。与关联和聚类一样,顺序模式挖掘是最流行的知识发现技术之一,它应用统计度量从大型数据集中提取有用的信息。随着我们的计算机变得越来越强大,我们能够挖掘更大的数据集,并获得数十万个完整细节的顺序模式。面对如此庞大的数据量,我们认为无论是数据挖掘还是可视化本身都不能有效地管理信息和反映知识。随后,我们在大型文本语料库的顺序模式研究中应用可视化来增强数据挖掘。结果表明,在集成的可视化数据挖掘环境中,我们可以更快地学习到更多的内容。
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Visualizing sequential patterns for text mining
A sequential pattern in data mining is a finite series of elements such as A/spl rarr/B/spl rarr/C/spl rarr/D where A, B, C, and D are elements of the same domain. The mining of sequential patterns is designed to find patterns of discrete events that frequently happen in the same arrangement along a timeline. Like association and clustering, the mining of sequential patterns is among the most popular knowledge discovery techniques that apply statistical measures to extract useful information from large datasets. As out computers become more powerful, we are able to mine bigger datasets and obtain hundreds of thousands of sequential patterns in full detail. With this vast amount of data, we argue that neither data mining nor visualization by itself can manage the information and reflect the knowledge effectively. Subsequently, we apply visualization to augment data mining in a study of sequential patterns in large text corpora. The result shows that we can learn more and more quickly in an integrated visual data-mining environment.
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