组合挖掘:从复杂数据中发现信息知识。

Longbing Cao, Huaifeng Zhang, Yanchang Zhao, Dan Luo, Chengqi Zhang
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引用次数: 91

摘要

企业数据挖掘应用程序通常涉及复杂的数据,例如多个大型异构数据源、用户首选项和业务影响。在这种情况下,单一方法或一步挖掘往往在发现信息性知识方面受到限制。连接相关的大型数据源来挖掘由多个信息方面组成的模式,如果不是不可能的话,也会非常耗费时间和空间。开发有效的方法来挖掘结合来自多个相关业务线的必要信息的模式,满足实际业务设置和决策操作的需要,而不仅仅是提供单行模式,这一点至关重要。近年来,人们在挖掘更多信息模式方面做了越来越多的努力,例如,将频繁的模式挖掘与分类相结合,以生成频繁的基于模式的分类器。本文不是提出一个特定的算法,而是基于我们现有的工作,并提出组合挖掘作为一种通用方法,用于从多个数据集或多个特征中组合组件,或按需使用多种方法来挖掘信息模式。总结了多特征组合挖掘、多源组合挖掘和多方法组合挖掘的一般框架、范式和基本过程。新的组合模式类型,如增量集群模式,可以从这些框架中产生,而这些框架不能由现有方法直接产生。已经进行了一组实际案例研究来测试这些框架,本文简要介绍了其中的一些。他们确定了为政府债务预防提供信息和改善政府服务目标的组合模式,显示了组合挖掘在复杂数据中发现信息知识的灵活性和实例化能力。
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Combined mining: discovering informative knowledge in complex data.

Enterprise data mining applications often involve complex data such as multiple large heterogeneous data sources, user preferences, and business impact. In such situations, a single method or one-step mining is often limited in discovering informative knowledge. It would also be very time and space consuming, if not impossible, to join relevant large data sources for mining patterns consisting of multiple aspects of information. It is crucial to develop effective approaches for mining patterns combining necessary information from multiple relevant business lines, catering for real business settings and decision-making actions rather than just providing a single line of patterns. The recent years have seen increasing efforts on mining more informative patterns, e.g., integrating frequent pattern mining with classifications to generate frequent pattern-based classifiers. Rather than presenting a specific algorithm, this paper builds on our existing works and proposes combined mining as a general approach to mining for informative patterns combining components from either multiple data sets or multiple features or by multiple methods on demand. We summarize general frameworks, paradigms, and basic processes for multifeature combined mining, multisource combined mining, and multimethod combined mining. Novel types of combined patterns, such as incremental cluster patterns, can result from such frameworks, which cannot be directly produced by the existing methods. A set of real-world case studies has been conducted to test the frameworks, with some of them briefed in this paper. They identify combined patterns for informing government debt prevention and improving government service objectives, which show the flexibility and instantiation capability of combined mining in discovering informative knowledge in complex data.

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