Text abstraction based on user intent and deep analysis

Lijuan Liu
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Abstract

In recent years, text analysis is mostly inaccurate and incomplete. To solve the above problem, a text abstraction method based on user intent and deep analysis is proposed. This method analyzes user intent, constructs user intent subtree by ontology theory, fully understands the various forms of user search keywords, mines and integrates features that conform to reality, uses deep learning model to train, and outputs text information that meets the requirement. Experiment shows that compared with keyword method and user intent method, by using the text abstraction method based on user intent and deep analysis, the number of returned result of abstraction text on related topics is higher, which indicates that the accuracy rate has been improved to a certain extent.
基于用户意图和深度分析的文本抽象
近年来,文本分析大多是不准确和不完整的。针对上述问题,提出了一种基于用户意图和深度分析的文本抽象方法。该方法对用户意图进行分析,利用本体理论构建用户意图子树,充分理解用户搜索关键词的各种形式,挖掘和整合符合现实的特征,利用深度学习模型进行训练,输出符合需求的文本信息。实验表明,与关键词方法和用户意图方法相比,使用基于用户意图和深度分析的文本抽象方法,相关主题的抽象文本返回结果的数量更高,表明准确率得到了一定程度的提高。
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