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Intelligent Learning based Opinion Mining Model for Governmental Decision Making

机译:基于智能学习的政府决策意见采矿模式

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Government in a country is the foremost legislative body responsible for taking decisive steps, planning schemes and implementing them with zero margins of error. These schemes and policies directly or indirectly affect the population of the country and direct the rate of social and economic growth. Effective policy framing and implementations have been the primary aim of all governments. But for good governance with long term sustainability taking opinions of the general public becomes indispensable. Twitter is one such open platform for a new type of social interaction where people come forward and express their views not only on products, movies and celebrities but also those critical policies and schemes designed by the government with aim of the overall development. These opinions have a lot more weight and convey a major message to the policymakers if evaluated correctly. This paper elucidates one such framework which mines opinion of general users tweeting on twitter about government policies and classifies them into three different polarities i.e. positive, negative and neutral. Machine Learning and Deep Learning method along with Natural Language Processing techniques has been utilized to extract the sentiments of the tweet and perform analysis on its polarity. The results of this detailed analysis can act as feedback to the governing bodies which can give them a better idea of the demography of the public’s opinion in an effective manner. Thus, this research works presents a technology-based solution for smart governance and interactive policy framing.
机译:一个国家的政府是最重要的立法机构,负责采取决定性的步骤,规划计划,并实施零利润率。这些计划和政策直接或间接影响国家的人口并指导社会和经济增长率。有效的政策框架和实施是所有政府的主要目标。但对于良好的治理,长期可持续性考虑将军的意见变得不可或缺。 Twitter是一个这样一个开放的平台,用于新型社交互动,人们不仅会对产品,电影和名人提出并表达他们的观点,也表达了政府旨在整体发展的批评政策和计划。如果正确评估,这些意见的重量更大,并向政策制定者传达了重大信息。本文阐明了一项这样的框架,将通用用户的意见缩短了关于政府政策的推特,并将它们分为三种不同的极性,即积极,负面和中性。机器学习和深度学习方法以及自然语言处理技术已被利用来提取推文的情绪并对​​其极性进行分析。该详细分析的结果可以充当对理事机构的反馈,这可以使他们以有效的方式更好地了解公众意见的人口统计。因此,本研究作品介绍了智能治理和互动策略框架的基于技术的解决方案。

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