Opinion mining analytics of IoT ecosystem by Profile of Mood State with Logistic Regression

T. Olaleye, Adeola Olaleye, Emmanuel Ofoegbunam, Gbenga Abodunrin, Temitope Abioye, W. Ahiara
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Abstract

Internet of Things continues to redefine modus operandi across diverse socioeconomic and professional domains thereby generating an un-abating global discuss on the adoption and functionalities of smart devices. Since emotions play a critical role in decision making according to the psychological domain of emotion science, the paramount importance of periodic delineation of stakeholders' mood is imperative for policy makers. Whereas opinion mining analytics of IoT discussions have returned state-of-the-arts, there is need to address germane factors seldom factored into existing literatures. This study therefore consolidates on current frameworks through a bi-modal descriptive and content-based analytics of IoT ecosystem for detecting key mood domain and the BlueCheckCredibility status of IoT tweeters using Profile of Mood State and Nomogram-based analytics. With a 99.5% precision rate by Logistic regression model, social characteristic attributes of acquired ethnographic data points turns mutually exclusive to the credibility status of IoT opinion molders while tweet properties contributes higher discriminative tendencies for identifying negative IoT emotions. The impact of Internet of Things on data science is likewise unraveled through bi-gram content analytics to identify topical discussions encapsulated in the acquired tweet corpus.
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基于Logistic回归的情绪状态剖面物联网生态系统意见挖掘分析
物联网继续在不同的社会经济和专业领域重新定义运作方式,从而引发了一场关于智能设备采用和功能的持续全球讨论。根据情绪科学的心理领域,情绪在决策中起着至关重要的作用,因此对利益相关者的情绪进行定期描述至关重要,这对政策制定者来说是势在必行的。虽然物联网讨论的意见挖掘分析已经回到了最先进的水平,但需要解决现有文献中很少考虑的相关因素。因此,本研究通过物联网生态系统的双模态描述性和基于内容的分析来巩固当前框架,用于检测关键情绪域和物联网推特者的BlueCheckCredibility状态,使用情绪状态概况和基于nomogram分析。通过Logistic回归模型,获得的民族志数据点的社会特征属性与物联网意见塑造者的可信度状态互斥,推特属性对物联网负面情绪的识别具有较高的判别倾向,准确率为99.5%。物联网对数据科学的影响同样是通过双图内容分析来揭示的,以确定所获得的推文语料库中包含的主题讨论。
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