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Multi-Relational Pattern Mining System for General Database Systems

机译:通用数据库系统的多关系模式挖掘系统

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摘要

Multi-relational data mining (MRDM) is to enumerate frequently appeared patterns in data, the patterns which are appeared not only in a relational table but over a collection of tables. Although a database usually consists of many relational tables, most of data mining approaches treat patterns only on a table. An approach based on ILP (inductive logic programming) is a promising approach and it treats patterns on many tables. Pattern miners based on the ILP approach produce expressive patterns and are wide-applicative but computationally expensive. MAPIX[2] has an advantage that it constructs patterns by combining atomic properties extracted from sampled examples. By restricting patterns into combinations of the atomic properties it gained efficiency compared with other algorithms. In order to scale MAPIX to treat large dataset on standard relational database systems, this paper studies implementation issues.
机译:多重关系数据挖掘(MRDM)旨在枚举数据中经常出现的模式,这些模式不仅出现在关系表中,而且出现在表的集合中。尽管数据库通常由许多关系表组成,但是大多数数据挖掘方法仅在表上处理模式。基于ILP(归纳逻辑编程)的方法是一种很有前途的方法,它可以处理许多表上的模式。基于ILP方法的模式挖掘器产生了可表达的模式,具有广泛的应用范围,但计算量大。 MAPIX [2]的优势在于,它通过组合从采样示例中提取的原子特性来构造模式。通过将模式限制为原子特性的组合,与其他算法相比,它可以提高效率。为了扩展MAPIX来处理标准关系数据库系统上的大型数据集,本文研究了实现问题。

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