CNN VE LSTM TABANLI HİBRİT BİR DERİN ÖĞRENME MODELİ İLE ÇOK ETİKETLİ METİN ANALİZİ

Halit Çetiner
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引用次数: 0

Abstract

In this article, it is aimed to categorize meaningful content from uncontrolled growing written social sharing data using natural language processing. Uncategorized data can disturb social sharing users with an increasing user network due to deprecating and negative content. For the stated reason, a hybrid model based on CNN and LSTM has been proposed to automatically classify all written social sharing content, both positive and negative, into defined target tags. With the proposed hybrid model, it is aimed at automatically classifying the content of the social sharing system into different categories by using the simplest embedding layer, keras. As a result of the experimental studies carried out, a better result was obtained than in the different studies in the literature using the same data set with the proposed method. The obtained performance results show that the proposed method can be applied to different multilabel text analysis problems.
在本文中,它旨在使用自然语言处理从不受控制的不断增长的书面社交共享数据中对有意义的内容进行分类。未分类的数据可能会干扰社交共享用户,因为用户网络越来越多,不推荐和负面的内容。基于上述原因,本文提出了一种基于CNN和LSTM的混合模型,将所有书面的社交分享内容(包括正面的和负面的)自动分类到定义的目标标签中。该混合模型旨在利用最简单的嵌入层keras将社交分享系统的内容自动分类为不同的类别。通过实验研究,得到了比文献中使用相同数据集的不同研究更好的结果。实验结果表明,该方法可以应用于不同的多标签文本分析问题。
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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