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Multi-level Search of a Knowledgebase for Semantic Parsing

机译:知识库的多级搜索以进行语义解析

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In this paper, we present a semantic parser using a knowledgebase. Instead of relying on filtering the concepts extracted from the knowledgebase, we use all the concepts to create the parser. A simple search is conducted on ConceptNet for the words in the input sentence. In this paper, two proposed techniques are used to extract concepts from the ConceptNet 5. The reason for proposing two techniques in this paper is to address the issue of removing the supervision and training process. The first approach extracts all concepts from ConceptNet 5 for each input word. The extracted concepts are used to search again in ConceptNet 5, which creates multiple levels of search results. This deep concept structure creates a multi-level search to create the semantic parse result. The second approach follows the same first step of extracting concepts using the input text. However, the extracted concepts are passed through a relationship check and then used for the second level search. Concepts are drawn from 2 levels of searching in ConceptNet. The extracted concepts are used to create the parser. Furthermore, we use the initial concepts extracted to search again in ConceptNet. The parser we created is tested on Free917, Stanford Sentiment dataset and the WebQ. We achieve recall of 93.82%, 94.91% for Stanford Sentiment dataset, accuracy of 77.1%, 79.2% for Free917 and 26.5%, 38.2% for WebQ respectively for the two approaches. This shows state-of-the-art results compared to other methods for each datasets.
机译:在本文中,我们提出了一个使用知识库的语义解析器。我们不依赖于过滤从知识库中提取的概念,而是使用所有概念来创建解析器。在ConceptNet上可以对输入句子中的单词进行简单搜索。在本文中,使用了两种提议的技术从ConceptNet 5中提取概念。之所以提出两种技术,是为了解决消除监督和培训过程的问题。第一种方法是从ConceptNet 5中为每个输入单词提取所有概念。提取的概念用于在ConceptNet 5中再次搜索,这将创建多个级别的搜索结果。这种深层的概念结构创建了一个多级搜索来创建语义解析结果。第二种方法遵循第一步,即使用输入文本提取概念。但是,提取的概念将通过关系检查,然后用于第二级搜索。概念是从ConceptNet中的2个搜索级别中得出的。提取的概念用于创建解析器。此外,我们使用提取的初始概念在ConceptNet中再次进行搜索。我们创建的解析器已在Free917,Stanford Sentiment数据集和WebQ上进行了测试。两种方法的斯坦福感叹数据集的召回率分别为93.82%,94.91%,Free917和WebQ分别为77.1%,79.2%和26.5%,38.2%。与每个数据集的其他方法相比,这显示了最新的结果。

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