Quarterly Journal of Information and Communication Technology ​

Investigating Novel Applications of Data Mining in Industry and Business

Author

Department of Computer Engineering, Islamic Azad University, Science and Research Branch, Tehran, Iran

10.22034/apj.2022.699803
Abstract
 In today's technology-oriented world, we are always faced with the processing of a huge amount of data as a major challenge in various fields of application. Therefore, we need knowledge discovery tools for such massive processing. Data mining is used as an advanced capability in data analysis and knowledge discovery. Data mining is the process of discovering patterns and regular and hidden trends in large and distributed data, using a wide set of algorithms based on mathematical and statistical sciences. In general, data mining can be considered the result of the natural evolution of information technology, which originated from the evolution of the database industry. The main reason for the emergence of data mining science has been the availability of a large amount of data and the strong need to extract useful knowledge and information from these data. Due to the importance of this issue, in this article we reviewed the important aspects of the data mining problem including goals, applications, models and related tools.

Keywords


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