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Artificial Intelligence and Pattern Recognition Using Data Mining Algorithms

  • Received : 2021.07.05
  • Published : 2021.07.30

Abstract

In recent years, with the existence of huge amounts of data stored in huge databases, the need for developing accurate tools for analyzing data and extracting information and knowledge from the huge and multi-source databases have been increased. Hence, new and modern techniques have emerged that will contribute to the development of all other sciences. Knowledge discovery techniques are among these technologies, one popular technique of knowledge discovery techniques is data mining which aims to knowledge discovery from huge amounts of data. Such modern technologies of knowledge discovery will contribute to the development of all other fields. Data mining is important, interesting technique, and has many different and varied algorithms; Therefore, this paper aims to present overview of data mining, and clarify the most important of those algorithms and their uses.

Keywords

Acknowledgement

The author declares that no direct funding and financial interests in relation to this study. The author thanks the Chinese CSC scholarships foundation and Hefei University of Technology to give the opportunity to continue his higher education through a scholarship.

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