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Learning parameters in a feed forward probabilistic graphical model

机译:前馈概率图形模型中的学习参数

摘要

According to an aspect, learning parameters in a feed forward probabilistic graphical model includes creating an inference model via a computer processor. The creation of the inference model includes receiving a training set that includes multiple scenarios, each scenario comprised of one or more natural language statements, and each scenario corresponding to a plurality of candidate answers. The creation also includes constructing evidence graphs for each of the multiple scenarios based on the training set, and calculating weights for common features across the evidence graphs that will maximize a probability of the inference model locating correct answers from corresponding candidate answers across all of the multiple scenarios. In response to an inquiry from a user that includes a scenario, the inference model constructs an evidence graph and recursively constructs formulas to express a confidence of each node in the evidence graph in terms of its parents in the evidence graph.
机译:根据一个方面,学习前馈概率图形模型中的参数包括经由计算机处理器创建推理模型。推论模型的创建包括:接收包括多个场景的训练集,每个场景包括一个或多个自然语言陈述,并且每个场景对应于多个候选答案。创建还包括根据训练集为多个场景中的每个场景构建证据图,并为证据图上的共同特征计算权重,这将最大程度地提高推理模型从所有多个答案中的相应候选答案中找出正确答案的可能性。场景。响应于来自用户的包括场景的询问,推理模型构造证据图,并递归构造公式以根据证据图中其父节点表示证据图中每个节点的置信度。

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