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Fuzzy Knowledge Inference: Quickly Estimate Evidence via Formula Embedding

机译:模糊知识推理:通过公式嵌入快速估计证据

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摘要

Inference on Knowledge Bases (KBs) is an important way to construct more complete KBs and answer KB questions. Inference can be viewed as a process from evidence to conclusion following specific formulas. Traditional methods usually search on the KB to collect evidence, which cannot apply to large-scale KBs, because the running time of searching increases radically as the scale of KBs increases. What is worse, evidence cannot be found if one fact in it is missing, which may result in the failure of inference. To this end, we propose a fuzzy method of estimating evidence, which replaces searching by estimating the existence of evidence by constructing formula embeddings, and then we merge these estimations into a probabilistic model to infer conclusions. This method can apply to large-scale KBs, because estimating evidence is very fast and is irrelevant to the KB scale. Estimating evidence can also be viewed as fuzzy matching, so this method can handle the situation where facts are missing. We evaluate this method on the knowledge base completion task, and it achieves a better performance than state-of-the-art methods and has a shorter running time.
机译:知识库(KBS)的推论是构建更完整的KBS并回答KB问题的重要途径。推断可以被视为从特定公式后从证据结束的过程。传统方法通常在KB上搜索以收集证据,这不能适用于大规模KBS,因为搜索的运行时间随着KB的规模而增加而增加。更糟糕的是,如果缺少一个事实,就无法找到证据,这可能导致推理的失败。为此,我们提出了一种估计证据的模糊方法,通过构建公式嵌入来估计证据存在的证据来替换搜索,然后我们将这些估计合并到概率模型中以推断结论。该方法可以适用于大规模的KBS,因为估计证据非常快,与KB秤无关。估计证据也可以被视为模糊匹配,因此这种方法可以处理缺少事实的情况。我们在知识库完成任务上评估此方法,而且它可以比最先进的方法实现更好的性能,并且具有更短的运行时间。

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