Architectural Support for Data Mining

KDD Workshop Pub Date : 1994-07-31 DOI:10.1201/b16553-13
M. Holsheimer, M. Kersten
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引用次数: 40

Abstract

One of the main obstacles in applying data mining techniques to large, real-world databases is the lack of efficient data management. In this paper, we present the design and implementation of an effective two-level architecture for a data mining environment. It consists of a mining tool and a parallel DBMS server. The mining tool organizes and controls the search process, while the DBMS provides optimal response times for the few query types being used by the tool. Key elements of our architecture are its use of fast and simple database operations, its re-use of results obtained by previous queries, its maximal use of main-memory to keep the database hot-set resident, and its parallel computation of queries. Apart from a clear separation of responsibilities, we show that this architecture leads to competitive performance on large data sets. Moreover, this architecture provides a flexible experimentation platform for further studies in optimization of repetitive database queries and quality driven rule discovery schemes.
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数据挖掘的架构支持
将数据挖掘技术应用于大型真实数据库的主要障碍之一是缺乏有效的数据管理。在本文中,我们提出了一个有效的数据挖掘环境的两层架构的设计和实现。它由一个挖掘工具和一个并行DBMS服务器组成。挖掘工具组织和控制搜索过程,而DBMS为工具使用的几种查询类型提供最佳响应时间。我们架构的关键要素是使用快速和简单的数据库操作,重用以前查询获得的结果,最大限度地使用主存来保持数据库热集驻留,以及查询的并行计算。除了明确的职责分离之外,我们还展示了这种架构在大型数据集上具有竞争力的性能。此外,该体系结构为进一步研究重复数据库查询和质量驱动规则发现方案的优化提供了一个灵活的实验平台。
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Architectural Support for Data Mining Rule Induction for Semantic Query Optimization
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