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Logical scalability and efficiency of relational learning algorithms

机译:关系学习算法的逻辑可扩展性和效率

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摘要

Relational learning algorithms learn the definition of a new relation in terms of existing relations in the database. The same database may be represented under different schemas for various reasons, such as efficiency, data quality, and usability. Unfortunately, the output of current relational learning algorithms tends to vary quite substantially over the choice of schema, both in terms of learning accuracy and efficiency. We introduce the property of schema independence of relational learning algorithms, and study both the theoretical and empirical dependence of existing algorithms on the common class of (de) composition schema transformations. We show theoretically and empirically that current relational learning algorithms are generally not schema independent. We propose Castor, a relational learning algorithm that achieves schema independence.
机译:关系学习算法根据数据库中的现有关系来学习新关系的定义。出于各种原因(例如效率,数据质量和可用性),同一数据库可能以不同的方案表示。不幸的是,就学习准确性和效率而言,当前的关系学习算法的输出往往会在模式选择上发生相当大的变化。我们介绍了关系学习算法的模式独立性的特性,并研究了现有算法对(de)组成模式转换的常见类的理论和经验依赖性。我们从理论和经验上表明,当前的关系学习算法通常不是架构无关的。我们提出Castor,一种实现模式独立性的关系学习算法。

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