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An Approach to Construct Semantic Networks with Confidence Scores Based on Data Analysis - Case Study in Osaka Wholesale Market -

机译:基于数据分析的基于数据分析构建语义网络的方法 - 大阪批发市场案例研究 -

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In recent years, several large-scale knowledge bases (KBs) have been constructed, such as YAGO, DBpedia, and Google Knowledge Graph. Although automatic extraction techniques that extract facts and rules from the Web is necessary for constructing such large-scale KBs, incorporation of noisy, unreliable knowledge cannot be unavoidable. Thus, Google Knowledge Vault assigns extracted knowledge with confidence scores based on consistency with the existing KBs. In this paper, we propose a new approach for associating confidence scores with knowledge based on a large amount of raw data for domains, where there is no existing KB. We first construct knowledge in a specific domain as a semantic network, and then design a probabilistic network, that corresponds to the semantic network. To associate the confidence scores with the semantic network, we train the probabilistic network with a large amount of open data, provided by the Osaka central wholesale market in Japan. We also confirm the validity of the confidence scores with the accuracy of reasoning on the probabilistic network. A semantic network associated with confidence scores, that is, a weighted labeled graph is advantageous not only for reducing the noisy, unreliable knowledge with low confidence, but also for making retrieval results ranking on the KB. In the future, probabilistic reasoning on semantic networks may also be possible.
机译:近年来,已经构建了几个大型知识库(KBS),例如Yago,DBPedia和Google知识图表。尽管从网络中提取事实和规则的自动提取技术对于构建这种大规模的KBS,但纳入嘈杂的知识是必要的,但不可靠的知识不能是不可避免的。因此,Google知识库基于与现有KBS的一致性,将提取的知识分配了置信度分数。在本文中,我们提出了一种新的方法,可以根据域的大量原始数据将置信度分数与知识相关联,其中没有现有的KB。我们首先在特定域中构建知识作为语义网络,然后设计一个对应于语义网络的概率网络。为了将置信度分数与语义网络联系起来,我们用大阪中央批发市场提供的大量开放数据训练概率网络。我们还通过对概率网络的推理准确性证实了置信度分数的有效性。一种与置信度分数相关的语义网络,即加权标记图是有利的,不仅用于降低具有低置信度的嘈杂,不可靠的知识,还用于在KB上进行检索结果排名。在未来,也可能在语义网络上的概率推理。

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