Research on Extraction Method of Financial Knowledge Based on How Net

Chaoyang Geng, Jiejie Zhao, Peng Liu, Dan Yang
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Abstract

Abstract In order to obtain the knowledge information of financial texts more efficiently and make the extracted information such as entity relation attribute more accurate, this paper studies the grammatical features of financial news texts and the semantic features of How Net, and puts forward the scheme of financial information extraction based on How Net. First, the phrase matching is carried out in the dictionary. Then the neural network is used for weighting, BiLSTM is used for character vector feature enhancement training, and then conditional random field (CRF) is used to complete named entity recognition, and then the relationship extraction of entity pairs from the dependency syntax is carried out to complete the research on the construction method of knowledge extraction of text in the financial field. The experimental results show that this model is superior to the other three models in entity recognition, and the overall performance is improved by about 1.2%. In relation extraction, the accuracy and recall rate of the model algorithm adopted in this paper are improved by 5% and 1.5% respectively, which shows that the improvement of the algorithm is effective.
基于How Net的金融知识提取方法研究
摘要为了更高效地获取财经新闻文本的知识信息,使提取的实体关系属性等信息更加准确,本文研究了财经新闻文本的语法特征和How Net的语义特征,提出了基于How Net的财经信息提取方案。首先,在字典中进行短语匹配。然后利用神经网络进行加权,利用BiLSTM进行字符向量特征增强训练,利用条件随机场(conditional random field, CRF)完成命名实体识别,然后从依赖句法中进行实体对的关系提取,完成金融领域文本知识提取构建方法的研究。实验结果表明,该模型在实体识别方面优于其他三种模型,整体性能提高约1.2%。在关联提取方面,本文采用的模型算法的准确率和召回率分别提高了5%和1.5%,表明算法的改进是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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