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Learning Ground Cp-logic Theories By Leveraging Bayesian Network Learning Techniques

机译:利用贝叶斯网络学习技术学习基础Cp逻辑理论

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摘要

Causal relations are present in many application domains. Causal Probabilistic Logic (CP-logic) is a probabilistic modeling language that is especially designed to express such relations. This paper investigates the learning of CP-logic theories (CP-theories) from training data. Its first contribution is SEM-CP-logic, an algorithm that learns CP-theories by leveraging Bayesian network (BN) learning techniques. SEM-CP-logic is based on a transformation between CP-theories and BNs. That is, the method applies BN learning techniques to learn a CP-theory in the form of an equivalent BN. To this end, certain modifications are required to the BN parameter learning and structure search, the most important one being that the refinement operator used by the search must guarantee that the constructed BNs represent valid CP-theories. The paper's second contribution is a theoretical and experimental comparison between CP-theory and BN learning. We show that the most simple CP-theories can be represented with BNs consisting of noisy-OR nodes, while more complex theories require close to fully connected networks (unless additional unobserved nodes are introduced in the network). Experiments in a controlled artificial domain show that in the latter cases CP-theory learning with SEM-CP-logic requires fewer training data than BN learning. We also apply SEM-CP-logic in a medical application in the context of HIV research, and show that it can compete with state-of-the-art methods in this domain.
机译:因果关系存在于许多应用领域。因果概率逻辑(CP-logic)是一种概率建模语言,专门用于表达这种关系。本文研究了从训练数据中学习CP-逻辑理论(CP-theory)的方法。它的第一个贡献是SEM-CP-logic,这是一种利用贝叶斯网络(BN)学习技术学习CP理论的算法。 SEM-CP逻辑基于CP理论和BN之间的转换。即,该方法应用BN学习技术来学习等效BN形式的CP理论。为此,需要对BN参数学习和结构搜索进行某些修改,最重要的修改是搜索所使用的细化运算符必须保证构造的BN代表有效的CP理论。论文的第二个贡献是CP理论和BN学习之间的理论和实验比较。我们表明,最简单的CP理论可以用由噪声或节点组成的BN表示,而更复杂的理论则需要接近完全连接的网络(除非在网络中引入了其他未观察到的节点)。在受控的人工领域中进行的实验表明,在后一种情况下,带有SEM-CP逻辑的CP理论学习所需的训练数据少于BN学习。我们还将SEM-CP-logic应用于HIV研究背景下的医学应用中,并证明它可以与该领域的最新方法竞争。

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