• Corpus ID: 38653726

A systematic literature review on features of deep learning in big data analytics

  title={A systematic literature review on features of deep learning in big data analytics},
  author={Nur Farhana Hordri and Alireza Samar and Siti Sophiayati Yuhaniz and Siti Mariyam Hj. Shamsuddin},
The aims of this study are to identify the existing features of DL approaches for using in BDA and identify the key features that affect the effectiveness of DL approaches. [] Key Method Method: A Systematic Literature Review (SLR) was carried out and reported based on the preferred reporting items for systematic reviews. 4065 papers were retrieved by manual search in four databases which are Google Scholar, Taylor & Francis, Springer Link and Science Direct. 34 primary studies were finally included. Result…

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