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Performance assessment of the Mumbai Indians and Royal Challengers Bangalore in the Indian Premier League by computational data analysis

Vikas Khare

International Journal of Data Science, 2023, vol. 8, issue 4, 295-329

Abstract: The Indian Premier League (IPL) is a professional Twenty20 cricket league in India that features eight teams from eight different cities. The Mumbai Indians (MI) and Royal Challengers Bangalore (RCB) are an IPL franchise cricket team based in Mumbai and Bangalore, respectively. This paper shows the performance assessment of the Mumbai Indians and royal challengers by the NCSS tool-based process of data analysis. The main objective of the comparison of performance assessments of the Mumbai Indians and RCB is that both teams spent almost the same amount of money on their players and also have the same level of players, but there are many differences between the performances of both teams. All the statistical and descriptive analysis shows that MI is a much better team compared to RCB. Results show that in the future, the win% of MI will be approximately 62% and the win% of RCB will be only 46%.

Keywords: NCSS tool; regression analysis; Michaelis-Menten concept; non-linear regression; data analysis; descriptive statistics; cricket. (search for similar items in EconPapers)
Date: 2023
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