预测社交媒体用户的集体同步情绪状态

Nida Saddaf Khan, Muhammad Sayeed Ghani
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引用次数: 1

摘要

越来越多地使用社交媒体为研究人员提供了一个机会,将情感分析技术应用于从社交媒体网站收集的数据。这些技术有望提供对用户在许多领域的观点的洞察。本研究提出了一种基于隐马尔可夫链(Hidden Markov Chains, HMC)和K-Means算法的情感分析模型,用于预测社交媒体用户情感的集体同步状态。HMC用于寻找收敛状态,K-Means用于寻找具有代表性的用户组。为此,我们使用了来自知名社交媒体网站Twitter的数据,该数据由巴基斯坦一个著名政党的推文组成。每个用户情绪的时间序列序列被传递给系统进行时间分析。发现具有3个和4个簇数的聚类对于具有代表性的组是显著的。对于三个集群,代表性群体占82%的用户;对于四个集群,两个代表性群体分别占45%和36%的用户。分析这些群体有助于找到用户对相关政党最普遍的行为。此外,这些团体可能倾向于影响网络中其他用户的意见,导致他们对该政党的看法发生变化。实验结果表明,该模型能够区分网络中不同个体的行为模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Collective Synchronous State of Sentiments for Users in Social Media
The increasing use of social media offers researchers with an opportunity to apply the sentiment analysis techniques over the data collected from social media websites. These techniques promise to provide an insight into the users’ perspectives on many areas. In this research, a sentiment analysis model is proposed based on HMC (Hidden Markov Chains) and K-Means algorithm to predict the collective synchronous state of sentiments for users on social media. HMC are used to find the converged state while K-Means is used to find the representative group of users. For this purpose, we have used data from a well-known social media site, Twitter, which consists of the tweets about a famous political party in Pakistan. The time series sequences of sentiments, of each user are passed on to the system to perform temporal analysis. The clustering with three and four number of clusters are found to be significant giving the representative groups. With three clusters, the representative group constitute of 82% of users and with four clusters, two representative groups are found having 45 and 36% of users. Analyzing these groups helps in finding the most popular behavior of users towards the concerned political party. Moreover, the groups perhaps tend to influence the opinion of other users in the network causing changes in their sentiments towards this party. The experimental results show that the proposed model has the power to distinguish behavior patterns of different individuals in a network.
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