从可视化到关联规则:一种自动方法

Gwenael Bothorel, M. Serrurier, C. Hurter
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引用次数: 3

摘要

数据挖掘的主要目标是从海量数据中研究相关信息。它通常是通过自动算法或通过数据的可视化探索来实现的。多亏了算法,可以找到一组详尽的模式来匹配特定的度量。但是提取的信息量可能大于初始数据的信息量。可视化数据挖掘允许专家专注于可能描述有趣模式的特定数据区域。然而,由于难以处理大量的多维数据,它往往受到限制。在本文中,我们提出了一种混合的自动和手动方法,通过使用数据散点图可视化驱动自动提取。这种可视化会影响找到的规则的数量及其构造。我们在两个数据库上演示了我们的方法。第一个描述了一个月的法国空中交通,第二个来自2012年的KDD杯数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Visualization to Association Rules: an automatic approach
The main goal of Data Mining is the research of relevant information from a huge volume of data. It is generally achieved either by automatic algorithms or by the visual exploration of data. Thanks to algorithms, an exhaustive set of patterns matching specific measures can be found. But the volume of extracted information can be greater than the volume of initial data. Visual Data Mining allows the specialist to focus on a specific area of data that may describe interesting patterns. However, it is often limited by the difficulty to deal with a great number of multi dimensional data. In this paper, we propose to mix an automatic and a manual method, by driving the automatic extraction using a data scatter plot visualization. This visualization affects the number of rules found and their construction. We illustrate our method on two databases. The first describes one month French air traffic and the second stems from 2012 KDD Cup database.
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