International Journal of Engineering Technology and Management Sciences

2023, Volume 7 Issue 4

The Importance of Data Mining & Predictive Analysis

AUTHOR(S)

Sreejit Ramakrishnan

DOI: https://doi.org/10.46647/ijetms.2023.v07i04.081

ABSTRACT
Data mining is the process of analyzing enormous amounts of information and datasets, extracting (or “mining”) useful intelligence to help organizations solve problems, predict trends, mitigate risks, and find new opportunities. Data mining is like actual mining because, in both cases, the miners are sifting through mountains of material to find valuable resources and elements. Data mining also includes establishing relationships and finding patterns, anomalies, and correlations to tackle issues, creating actionable information in the process. Data mining is a wide-ranging and varied process that includes many different components, some of which are even confused for data mining itself.

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    16. How to Cite This Article:
      Sreejit Ramakrishnan . The Importance of Data Mining & Predictive Analysis . ijetms;7(4):593-598. DOI: 10.46647/ijetms.2023.v07i04.081