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University of Texas at Austin KBP 2013 Slot Filling System: Bayesian Logic Programs for Textual Inference

机译:德克萨斯大学奥斯汀·kbp 2013老虎机灌装系统:贝叶斯逻辑计划进行文本推理

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This document describes the University of Texas at Austin 2013 system for the Knowledge Base Population (KBP) English Slot Filling (SF) task. The UT Austin system builds upon the output of an existing relation extractor by augmenting relations that are explicitly stated in the text with ones that are inferred from the stated relations using probabilistic rules that encode commonsense world knowledge. Such rules are learned from linked open data and are encoded in the form of Bayesian Logic Programs (BLPs), a statistical relational learning framework based on directed graphical models. In this document, we describe our methods for learning these rules, estimating their associated weights, and performing probabilistic and logical inference to infer unseen relations. In the KBP SF task, our system was able to infer several unextracted relations, but its performance was limited by the base level extractor.
机译:本文件描述了德克萨斯大学奥斯汀2013年知识库人口(KBP)英语插槽填充(SF)任务的系统。 UT AUSTIN系统通过增强关系的建立在现有关系提取器的输出时构建,这些关系在文本中明确说明的关系,其中使用概率规则从所述概率规则中推断出来,该规则是编码勤杂度世界知识的概率规则。 这些规则是从链接的开放数据中学到的,并以贝叶斯逻辑程序(BLPS)的形式编码,基于定向图形模型的统计关系学习框架。 在本文档中,我们描述了我们学习这些规则的方法,估计其相关权重,以及对推断不间断关系的概率和逻辑推理进行概率和逻辑推理。 在KBP SF任务中,我们的系统能够推断出几种未提示的关系,但其性能受到基础提取器的限制。

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