Review of Regression Analysis in Data Mining

Authors

  • Afreen Ali, Sarwesh Site

Keywords:

Data Mining, Regression Analysis, Big Data, Statistical Analysis

Abstract

Regression analysis is a statistical processes which is widely used in data mining and big data analysis. In this paper, we are surveying the various regression analysis techniques for analyzing data for Big Data and Data Mining. There are various proposed regression modeling method for the retention of data analysis in the business aspects. The aim of this paper is how the concept of data mining or regression analysis can be used on Big Data and real data sets with positive results. Main focus of univariate regression is analyze the relationship between dependent and independent variable and conveys the linear relation equation between independent and dependent variable.

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How to Cite

Afreen Ali, Sarwesh Site. (2025). Review of Regression Analysis in Data Mining. International Journal of Research & Technology, 6(1), 1–4. Retrieved from https://ijrt.org/j/article/view/49

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