通过规则归纳捕获数据库语义

W. Chu, R. Lee
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引用次数: 2

摘要

为了捕捉数据库特征,P.P.S. Chen提出了一个基于知识的实体关系(KER)模型来扩展基本的实体关系模型。数据库系统。, vol.1, no.1(1976))提供知识规范能力。知识规范功能允许在每个对象定义中指定和维护数据库特征。在KER模型中,每个实体或关系都有其特定的特征。这些特征可分为对象内知识和对象间知识。对象内知识指定对象实例如何属于实体类型,而对象间知识描述了当对象受到相同关系约束时,它们如何相互关联。数据库对象的实例必须遵循这些规则,因为每个数据库状态都是应用程序的一个实例。因此,基于KER模型中指定的模式,机器学习可以从数据库实例中归纳出语义知识。开发了一种基于KER模型和机器学习技术的知识获取方法,从数据库中提取数据库特征知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capture database semantics by rule induction
To capture database characteristics, a knowledge-based entity-relationship (KER) model is proposed to extend the basic ER model by P.P.S. Chen (see ACM Trans. Database Syst., vol.1, no.1 (1976)) to provide knowledge specification capability. The knowledge specification capability allows database characteristics to be specified and maintained with each object definition. In the KER model, each entity or relationship has its specific characteristics. These characteristics can be classified into intraobject knowledge and interobject knowledge. Intraobject knowledge specifies how an object instance belongs to an entity type, and interobject knowledge describes how objects are correlated with each other when they are bounded by the same relationship. Instances of the database objects have to follow these rules since each database state is an instance of the application. Therefore, semantic knowledge can be induced from the database instances by machine learning based on the schema specified in the KER model. A knowledge acquisition methodology that is based upon the KER Model and machine learning techniques is developed to induce the database characteristics knowledge from the database.<>
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