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Predictive analytics for machine learning and deep learning

In: Handbook of Big Data Research Methods

Author

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  • Tahajjat Begum

Abstract

Predictive analytics, machine learning, and deep learning are inseparable as machine learning, and deep learning algorithms are used to automate predictive modeling to identify patterns, trends, or future outcomes. We can use different machine learning and deep learning techniques such as classifications, regressions, neural networks, clustering, and dimensionality reduction algorithms to create predictive models. As a result, a business can now predict customers buying behavior, detect fraudulent activity, diagnose health care issues, recommend content, and predict machine maintenance needs. In a nutshell, predictive analytics created a revolution in all sectors such as finance, healthcare, retail, manufacturing, etc.

Suggested Citation

  • Tahajjat Begum, 2023. "Predictive analytics for machine learning and deep learning," Chapters, in: Shahriar Akter & Samuel Fosso Wamba (ed.), Handbook of Big Data Research Methods, chapter 10, pages 148-164, Edward Elgar Publishing.
  • Handle: RePEc:elg:eechap:20820_10
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