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Learning probabilistic datalog rules for information classification and transformation

机译:学习概率数据记录规则以进行信息分类和转换

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Probabilistic Datalog is a combination of classical Datalog (i.e., function-free Horn clause predicate logic) with probability theory. Therefore, probabilistic weights may be attached to both facts and rules. But it is often impossible to assign exact rule weights or even to construct the rules themselves. Instead of specifying them manually, learning algorithms can be used to learn both rules and weights. In practice, these algorithms are very slow because they need a large example set and have to test a high number of rules. We apply a number of extensions to these algorithms in order to improve efficiency. Several applications demonstrate the power of learning probabilistic Datalog rules, showing that learning rules is suitable for low dimensional problems (e.g., schema mapping) but inappropriate for higher dimensions like e.g. in text classification.
机译:概率数据记录是经典数据记录(即无功能的Horn子句谓词逻辑)与概率论的结合。因此,事实和规则都可能带有概率权重。但是,通常不可能分配确切的规则权重,甚至无法自己构建规则。代替手动指定它们,可以使用学习算法来学习规则和权重。实际上,这些算法非常慢,因为它们需要大量示例集,并且必须测试大量规则。为了提高效率,我们对这些算法应用了许多扩展。几个应用程序演示了学习概率数据记录规则的强大功能,表明学习规则适用于低维问题(例如,模式映射),但不适用于较高维(例如,模式映射)。在文本分类中。

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