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A Technique to Calculate National Happiness Index by Analyzing Roman Urdu Messages Posted on Social Media

机译:通过分析在社交媒体上分析罗马URDU消息来计算国家幸福指数的技术

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National Happiness Index (NHI) is a national indicator of development that estimates the economic and social well-being of the nation's individuals. With the proliferation of the internet, people share a significant amount of data on social media websites. We can process the data with different sentiment analysis techniques to calculate the NHL In the literature, different approaches have been used to calculate NHI, which include the lexicon-based approach and machine learning approach. All of these existing approaches are proposed to calculate NHI for the sentiments written in the English language. However, these methods fail for complex Roman Urdu tweets that contain more than two sub-opinions. There are three primary objectives of the research: (1) to investigate current sentiment analysis techniques are sufficient for the classification of complex Roman Urdu sentiments; (2) to propose rule-based classifier for the classification of Roman Urdu sentiments comprising multiple sub-opinions; (3) to calculate NI-II using Roman Urdu sentiments. For this purpose, we proposed the discourse information extractor, the rule-based method (3-RBC), and the machine learning classifier. The experimental results show that 3-RBC is efficient for feature identification, and it is more statistically significant than the baseline classifiers. The 3-RBC has successfully increased the accuracy by 7% and precision by 8%, which provides evidence that the proposed technique significantly increased the calculation of NHI.
机译:国家幸福指数(NHI)是一个国家发展指标,估计民族的个人的经济和社会福祉。随着互联网的扩散,人们在社交媒体网站上分享大量数据。我们可以通过不同的情感分析技术处理数据来计算文献中的NHL,已经使用不同的方法来计算NHI,其包括基于词汇的方法和机器学习方法。提出所有这些现有方法来计算以英语编写的情绪计算NHI。但是,这些方法失败了包含超过两个子意见的复杂罗马URDU推文。研究有三个主要目标:(1)调查当前的情感分析技术足以进行复杂罗马乌尔都语情绪的分类; (2)提出基于规则的分类器,用于分类罗马URDU情绪,包括多个子意见; (3)使用罗马URDU情绪计算NI-II。为此,我们提出了语篇信息提取器,基于规则的方法(3-RBC)和机器学习分类器。实验结果表明,3-RBC对于特征鉴定是有效的,并且比基线分类器更为显着。 3-RBC成功提高了7%和精度的精度,提高了8%,这提供了证据表明该技术显着增加了NHI的计算。

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