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ALLPAD: approximate learning of logic programs with annotated disjunctions

机译:ALLPAD:带注释析取的逻辑程序的近似学习

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摘要

Logic Programs with Annotated Disjunctions (LPADs) provide a simple and elegant framework for representing probabilistic knowledge in logic programming. In this paper we consider the problem of learning ground LPADs starting from a set of interpretations annotated with their probability. We present the system ALLPAD for solving this problem. ALLPAD modifies the previous system LLPAD in order to tackle real world learning problems more effectively. This is achieved by looking for an approximate solution rather than a perfect one. A number of experiments have been performed on real and artificial data for evaluating ALLPAD, showing the feasibility of the approach.
机译:具有带注释的析取逻辑程序(LPAD)提供了一个简单而优雅的框架来表示逻辑编程中的概率知识。在本文中,我们考虑了从基础LPAD的学习开始的问题,这些解释以一组带有其概率的解释开始。我们提出了ALLPAD系统来解决这个问题。 ALLPAD修改了以前的系统LLPAD,以便更有效地解决现实世界中的学习问题。这是通过寻找一种近似的解决方案而不是完美的解决方案来实现的。已经对真实和人工数据进行了许多实验,以评估ALLPAD,表明了该方法的可行性。

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