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DIRT @SBT@discovery of inference rules from text

机译:DIRT @ SBT @从文本中发现推理规则

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摘要

In this paper, we propose an unsupervised method for discovering inference rules from text, such as "X is author of Y ≈ X wrote Y", "X solved Y ≈ X found a solution to Y", and "X caused Y ≈ Y is triggered by X". Inference rules are extremely important in many fields such as natural language processing, information retrieval, and artificial intelligence in general. Our algorithm is based on an extended version of Harris' Distributional Hypothesis, which states that words that occurred in the same contexts tend to be similar. Instead of using this hypothesis on words, we apply it to paths in the dependency trees of a parsed corpus.
机译:在本文中,我们提出了一种从文本中发现推理规则的无监督方法,例如“ X是Y≈ X编写Y 的作者”,“ X解决了Y≈ X发现了一个Y 的解决方案”,以及“ X导致Y≈ Y由X 触发”。推理规则在自然语言处理,信息检索和人工智能等许多领域中极为重要。我们的算法基于哈里斯分布假设的扩展版本,该假设指出在相同上下文中出现的单词往往相似。与其在单词上使用此假设,不如将其应用于解析后的语料库的依赖树中的路径。

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