An event driven neural network system for evaluating public moods from online users' comments

S. Fong, S. Deb, Io-Weng Chan, P. Vijayakumar
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引用次数: 4

Abstract

It has become a prevalent lifestyle nowadays that netizens voice their opinions on social networks (Web 2.0), for matters of all sizes, and on a regular basis. The opinions which initially should be intended for their groups of friends propagate to all public users. This pond of opinions in the forms of forum posts, messages written on micro-blogs, Twitter and Facebook, are largely contributed by communities of online users (or sometimes bloggers). The messages though might seem to be trivial when each of them is viewed singularly, the converged sum of them serves as a potentially useful source of information to be analysed. A government of a city, for instance, may be interested to know the response of the citizens after a new policy is announced, from their voices collected from the Internet. However, such online messages are unstructured in nature, their contexts vary greatly, and that poses a tremendous difficulty in correctly interpreting them. In this paper we propose an innovative analytical model that evaluates such messages by representing them in different moods. The model comprises of several data analytics such as cultural moods analyzer implemented by neural networks, text mining and hierarchical visualization that reflects public moods over a large population of Internet comments.
一个事件驱动的神经网络系统,用于从在线用户评论中评估公众情绪
网民们在社交网络(web2.0)上定期发表各种规模的意见已成为一种流行的生活方式。最初应该针对他们的朋友群体的意见传播到所有公众用户。论坛帖子、微博、Twitter和Facebook上的信息等形式的意见池,主要是由在线用户社区(有时是博主)贡献的。虽然这些信息在单独观察时可能显得微不足道,但它们的聚合和可以作为分析的潜在有用信息源。例如,一个城市的政府可能有兴趣知道在一项新政策宣布后,市民的反应,从他们从互联网上收集的声音。然而,这些在线信息本质上是非结构化的,它们的上下文变化很大,这给正确解释它们带来了巨大的困难。在本文中,我们提出了一个创新的分析模型,通过在不同的情绪中表示这些信息来评估这些信息。该模型包括多种数据分析,如通过神经网络实现的文化情绪分析器、文本挖掘和分层可视化,以反映大量互联网评论中的公众情绪。
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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