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Data Streams Curation for Better Machine Learning Functionality and Result to Serve IoT and other Applications: A Survey

机译:用于更好的机器学习功能和结果的数据流策策,以服务IOT和其他应用程序:调查

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Data Curation on data streams is effective in operating and reducing costs of BIG DATA analytic. Basically, analytic preparation requires data curation of available heterogeneous data sets available in big data clusters and such analytic process becomes harder when it comes to the concept of conducting the curation process on Data-on-Motion, in order to come at actionable insights and valuable analytic on a real-time basis including the Machine Learning further analytic and processing. In our paper, we identified and surveyed the different issues and challenges among different areas that are related to the big data. In addition to investigate, the most common techniques and methods followed through the implementations including Streams Curation, the Machine Learning Different Algorithms used in such implementations and the Feature Engineering different techniques that can be considered as curation pre-processing paradigm for data streams analytic. Furthermore, our paper shows the different application areas were data curation concept plays a critical role. Finally, we draw the map between the techniques and methods that are related to the data curation field to emphasize on its main critical role among Business, Retails, Culture, Arts, Health, Medicine, Social Media, Wireless Sensor Networks, Natural Language Processing (NLP) and Automated Feature Engineering (FE). On other hand, we identified the different issues and challenges among different areas including the IoT and Media Streams Curation to help the scholars in this region accordingly.
机译:数据流上的数据策委是有效的操作和降低大数据分析的成本。基本上,分析准备需要在大数据集群中提供的可用异质数据集的数据策委,并且在涉及在动作数据上进行策策过程的概念时,这种分析过程变得更加困难,以便在可操作的见解和有价值分析在实时基础上,包括机器学习进一步的分析和处理。在我们的论文中,我们确定并调查了与大数据相关的不同领域的不同问题和挑战。除了调查之外,最常见的技术和方法之后是通过流策策的实施方式,该机器学习在这种实现中使用的不同算法和特征工程不同的技术,这些算法可以被视为用于数据流分析的策序预处理范例。此外,我们的论文显示了不同的应用领域是数据策择概念发挥着关键作用。最后,我们在与数据策策相关的技术和方法之间绘制了地图,以强调业务,零售,文化,艺术,健康,医学,社交媒体,无线传感器网络,自然语言处理( NLP)和自动特征工程(FE)。另一方面,我们确定了不同领域的不同问题和挑战,包括物联网和媒体流策划,以帮助该地区的学者相应。

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