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Homogenizing social networking with smart education by means of machine learning and Hadoop: A case study

机译:通过机器学习和Hadoop借助智能教育实现社交网络的均质化:一个案例研究

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In today's age of ever increasing use of internet, there are around 74% active internet users out of which 60% users contribute to social networking and most of them are students from the age group 16-30 [1]. If this young generation is targeted specifically towards educational activities keeping the same social networking environment in the background would create interest in students for educational activities and also yield productive results. Using Big Data analytics, machine learning and recommender system on the student data and activity would provide them with useful information and suggestions which would help them gain knowledge and make proper decisions to make their future in right direction. This can be implemented by creating a social-cum-educational portal with recommender systems, also data can be generated and displayed on the same place after analysis through recommenders. There is large amount of social, educational information generated on a rapid basis on the web which can be analysed and used for the betterment of the students and also the analysed information can be provided to the students based on their interests. Specific information to specific student can be provided. Use of such technology can reduce the gap between students and the information which can lead to their inherent development and success! However, most of the existing Social Recommender systems do not have good scalabilities which are unable to process huge volumes of data. Aiming to this problem we can design a social recommender system based on Hadoop and its parallel computing platform.
机译:在当今互联网使用日益增长的时代,大约有74%的活跃互联网用户,其中60%的用户为社交网络做出了贡献,其中大多数是16至30岁的学生[1]。如果这一年轻一代专门针对教育活动,那么在后台保持相同的社交网络环境将引起学生对教育活动的兴趣,并产生丰硕的成果。使用大数据分析,关于学生数据和活动的机器学习和推荐系统将为他们提供有用的信息和建议,这将帮助他们获得知识并做出正确的决策,以朝着正确的方向发展自己的未来。这可以通过创建带有推荐器系统的社交教育门户来实现,也可以在通过推荐器进行分析之后在同一位置生成并显示数据。在网络上有大量快速生成的社会,教育信息,可以对其进行分析并用于改善学生的状况,并且可以根据他们的兴趣向学生提供分析的信息。可以向特定学生提供特定信息。使用此类技术可以缩小学生与信息之间的距离,从而促进他们的内在发展和成功!但是,大多数现有的Social Recommender系统都不具有良好的可伸缩性,无法处理大量数据。针对这个问题,我们可以设计一个基于Hadoop及其并行计算平台的社交推荐系统。

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