Information extraction method of topic webpage based on multi-angle feature learning

Lijuan Liu
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Abstract

It's difficult to find topic information in the web page because it is slow to find specific information by labor in the process and the result of commonly used methods is inaccurate. This paper proposes a multi-angle feature analysis method for web information identifying. With this method, it mines the characteristics of web page information content in a comprehensive way. Focusing on the characteristics of the web page, the text is segmented, and features are extracted and quantified from multiple perspectives. The fully connected neural network deep learning model is used for training. Besides, use linear classifiers to classify web page. The final experiment shows that this method improves the F value by more than 4% compared with the keyword method and the SVM (Support Vector Machine) method.
基于多角度特征学习的主题网页信息提取方法
在网页中查找主题信息的难度很大,因为在查找过程中人工查找具体信息的速度很慢,而且常用方法的结果也不准确。本文提出了一种多角度特征分析的网络信息识别方法。该方法全面挖掘了网页信息内容的特点。针对网页的特点,对文本进行分割,从多个角度提取特征并进行量化。采用全连接神经网络深度学习模型进行训练。此外,使用线性分类器对网页进行分类。最后的实验表明,与关键词方法和支持向量机(SVM)方法相比,该方法的F值提高了4%以上。
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