基于Naïve贝叶斯分类器的社交媒体人类情感分析

Akhilesh Kumar, Awadhesh Kumar
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引用次数: 0

摘要

摘要:从一连串的单词中破译情感和思想是最复杂和最艰巨的任务之一。识别情感和情绪是通过写作表达情感和情绪的最有效方式之一。它比基于人脸或语音的系统更需要研究人员的兴趣。基于文本的情感分析引起了许多研究者的关注,他们继续研究如何从自然语言中区分独特的情感。来自文本字段的情感识别用于一系列应用程序,例如推荐系统、基于用户当前情绪状态推荐音乐的文化内容服务、情绪跟踪、从遗书中检索情感、在多媒体标记中捕获情感、在聊天中检测令人反感的短语等等。在当今信息丰富的文化中,智能社会技术系统正在获得牵引力,各种技术被用于从这些系统中收集数据并分析这些数据,以获得对我们日常活动有用的见解。最近在健康监测和通信技术方面取得的进展,以及其他值得注意的成就,有助于情绪识别。近年来,人工智能(AI)研究的趋势是将人工智能技术融入日常生活物品中。众所周知,人工智能系统将对大多数人类有益。情绪是由各种感觉、想法和行为引起的心理状态的集合。人们在交流过程中不断地传递情感线索;情感意识在人际交往和日常生活的许多方面都是至关重要的。本研究对厌恶、中性、快乐、悲伤、愤怒、惊讶、无聊这七种情绪状态进行了广泛的描述,目的是利用基于相关性的朴素贝叶斯分类器将用户文本情绪通过社交媒体平台进行整合,准确率达到99.99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Sentiment Analysis on Social Media through Naïve Bayes Classifier
350 DOI: 10.37398/JSR.2022.660137 Abstract: Deciphering feelings and thoughts from a succession of words is one of the most complex and demanding undertakings. Recognizing sentiments and emotions is one of the most effective ways of expressing feelings and sentiments by writing text. It requires more interest from researchers in advancement than face or voice-based systems. Text based emotion analysis has sparked the attention of many individual researchers to continue their research into distinguishing unique emotions from natural language. The emotion recognition from text field is used in a range of applications, such as recommendation systems, cultural content services that recommend music based on a user's current emotional state, mood tracking, emotion retrieval from suicide notes, capturing emotions in multimedia tagging, detecting objectionable phrases in chats, and so on. In today's informationrich culture, smart sociotechnical systems are gaining traction, with various technologies being employed to gather data from such systems and analyze that data for useful insights into our daily activities. Recent advancements in health monitoring and communications technologies, among other noteworthy achievements, have helped sentiment identification. The trend in artificial intelligence (AI) research in recent years has been to incorporate AI techniques into daily living objects. It is well understood that AI systems will be beneficial to the majority of humans. Emotions are a collection of mental states brought on by a variety of feelings, ideas, and behaviors. People continually communicate emotional cues during the communication process; emotional awareness is vital in human interaction and in many facets of daily life. The seven emotional states (disgust, neutral, happy, sad, angry, astonished, and bored) are extensively described in this study in order to incorporate user text emotions through social media platforms using Correlation based Naive Bayes Classifier and achieve an accuracy rate of 99.99%.
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