机器学习前景:社交媒体数据挖掘和分析的见解

Anu Sharma, Vivek Kumar
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引用次数: 0

摘要

近十年来,社交网络越来越受到人们的关注。社交网络处理大量的复合数据和非结构化数据,这些数据很难处理。由于规模和需求的不断扩大,社交网络成为一个令人鼓舞和感兴趣的研究领域。数据挖掘强调通过发现数据中的模式来获取知识。我们已经讨论了社交媒体挖掘和社交媒体分析。我们对社交媒体对我们生活的影响有一些见解,一些来自不同来源的事实和报告。我们将这个不断发展的社交网络研究领域与机器学习结合起来,并使用机器学习对Twitter数据进行情感分析的一个简单例子。我们还提出了使用机器学习改进社交媒体分析结果的算法。在本文中,我们将展示如何将机器学习用于社交网络系统,如Twitter。在这个过程中,提出了一个框架,该框架将收集推文消息,我们将检查条目的输入以显示积极,消极或无党派的推文,为此,我们提出了新的机器学习算法朴素贝叶斯,最大熵来找到这些输出。我们提出的模型将帮助新的研究人员、公司、行业、商业社区、从业者、新的集成应用设计人员和全球社区解决新的研究问题,并可能通过社交媒体挖掘和网络大规模降低80%的设计失败率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Prospects: Insights for Social Media Data Mining and Analytics
Social network has increased surprising consideration in the most recent decade. Social network deals with enormous volume of composite as well as unstructured data and they are very hard to handle. Due to expanding dimensions and demand, one of the encouraging and interesting research field becomes social network. Data Mining affirms to get knowledge by discovery patterns among data. We have discussed social media mining and Social Media analytics. We have insights on the social media effect of our lives, some facts and reports from various sources. We have Integrated this growing research field of social networks with Machine Learning with one simple example of sentiment analysis of Twitter data using Machine Learning. We have also proposed the algorithms to improve the social media analytics results using Machine Learning. In this paper, we will exhibit how machine learning will utilizing for social networking systems like Twitter. In this procedure, a framework is proposed that will collect the tweets messages from the and we will inspect the item’s input to show the positive, negative, or nonpartisan tweets, for this this purpose we have proposed new machine learning algorithms Naive Bayes, maximum entropy to find these outputs. Our proposed Model will help new researchers, companies, Industries, business community, practitioners, new integrated application designers, and the global community to solve the new research problem and may reducing design failure rate of 80% by large through social media mining and networks.
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