Sentiment and Semantic Deep Hierarchical Attention Neural Network for Fine Grained News Classification

Sri Teja Allaparthi, Ganesh Yaparla, Vikram Pudi
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引用次数: 1

Abstract

The purpose of this study is to examine the differences between different types of news stories. Given the huge impact of social networks, online content plays an important role in forming or changing the opinions of people. Unlike traditional journalism where only certain news organizations can publish content, online journalism has given chance even for individuals to publish. This has its own advantages like individual empowerment but has given a chance to a lot of malicious entities to spread misinformation for their own benefit. As reported by many organizations in recent history, this even has influence on major events like the outcome of elections. Therefore, it is of great importance now, to have some sort of automated classification of news stories. In this work, we propose a deep hierarchical attention neural architecture combining sentiment and semantic embeddings for more accurate fine grained classification of news stories. Experimental results show that the sentiment embedding along with semantic information outperform several state-of-the art methods in this task.
面向细粒度新闻分类的情感和语义深度层次注意神经网络
本研究的目的是检验不同类型的新闻故事之间的差异。鉴于社交网络的巨大影响,在线内容在形成或改变人们的观点方面发挥着重要作用。与只有特定新闻机构才能发布内容的传统新闻不同,网络新闻甚至为个人提供了发布内容的机会。这有其自身的优势,比如个人赋权,但也给了很多恶意实体为了自己的利益传播错误信息的机会。正如最近历史上许多组织所报道的那样,这甚至对选举结果等重大事件产生了影响。因此,对新闻故事进行某种自动分类是非常重要的。在这项工作中,我们提出了一种结合情感和语义嵌入的深度分层注意力神经结构,以更准确地对新闻故事进行细粒度分类。实验结果表明,结合语义信息的情感嵌入方法在该任务中的表现优于几种最先进的方法。
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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