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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >C-TREND: Temporal Cluster Graphs for Identifying and Visualizing Trends in Multiattribute Transactional Data
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C-TREND: Temporal Cluster Graphs for Identifying and Visualizing Trends in Multiattribute Transactional Data

机译:C-TREND:时间聚类图,用于识别和可视化多属性交易数据中的趋势

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摘要

Organizations and firms are capturing increasingly more data about their customers, suppliers, competitors, and business environment. Most of this data is multi-attribute (multi-dimensional) and temporal in nature. Data mining and business intelligence techniques are often used to discover patterns in such data; however, mining temporal relationships typically is a complex task. We propose a new data analysis and visualization technique for representing trends in multi-attribute temporal data using a clustering-based approach. We introduce C-TREND, a system that implements the temporal cluster graph construct, which maps multi-attribute temporal data to a two-dimensional directed graph that identifies trends in dominant data types over time. In this paper, we present our temporal clustering-based technique, discuss its algorithmic implementation and performance, demonstrate applications of the technique by analyzing data on wireless networking technologies and baseball batting statistics, and introduce a set of metrics for further analysis of discovered trends.
机译:组织和公司正在捕获有关其客户,供应商,竞争对手和商业环境的越来越多的数据。本质上,这些数据大多数是多属性(多维)的和时间的。数据挖掘和商业智能技术通常用于发现此类数据中的模式。但是,挖掘时间关系通常是一项复杂的任务。我们提出了一种新的数据分析和可视化技术,用于使用基于聚类的方法表示多属性时间数据中的趋势。我们介绍C-TREND,这是一个实现时态聚类图构造的系统,该系统将多属性时态数据映射到一个二维有向图,该图可识别随时间变化的主导数据类型的趋势。在本文中,我们介绍了基于时间聚类的技术,讨论了其算法实现和性能,通过分析无线网络技术和棒球打击统计数据演示了该技术的应用,并介绍了一套用于进一步分析发现趋势的指标。

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