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Information retrieval and machine learning for probabilistic schema matching

机译:信息检索和机器学习用于概率模式匹配

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摘要

Schema matching is the problem of finding correspondences (mapping rules, e.g. logical formulae) between heterogeneous schemas. This paper presents a probabilistic framework, called sPLMap, for automatically learning schema mapping rules. Similar to LSD, different techniques, mostly from the IR field, are combined.Our approach, however, is also able to give a probabilistic interpretation of the prediction weights of the candidates, and to select the rule set with highest matching probability.
机译:模式匹配是寻找异构模式之间的对应关系(映射规则,例如逻辑公式)的问题。本文提出了一种称为sPLMap的概率框架,用于自动学习架构映射规则。与LSD相似,我们结合了主要来自IR领域的各种技术,但是我们的方法还能够对候选人的预测权重进行概率解释,并选择具有最高匹配概率的规则集。

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