An Impact of Empirical Data Analysis in the World of Business Environment

Authors

  • Merla Swetha School of Management Studies, Reva University, Bangalore, Rukmini Knowledge Park, Kattigenahalli, SH 104, Srinivasa Nagar, Bengaluru, Karnataka 560064
  • Naresh E. Department of ISE, M S Ramaiah Institute of Technology, Bangalore, MSRIT Post, M S Ramaiah Nagar, MSR Nagar, Bengaluru, Karnataka 560054
  • Santosh Parakh Department of MCA, Vidya Pratishthan's Institute of Information Technology, Vidyanagari, Vidya Nagari, Baramati, Maharashtra 413133

DOI:

https://doi.org/10.21632/irjbs.15.1.97-109

Keywords:

data science, data analysis methods, qualitative analysis, quantitative analysis, regression analysis

Abstract

Data Analysis plays a key role in all the fields of (Production and Operations, Finance, Marketing, Human Resource Analysis and Management) for successful market share. Data science can raise the value of any business who can effectively utilize their data. The proposed work presents heterogeneous types of data analysis techniques that are useful for changing the needs of the business. This study showcases how effective data analysis is carried out both qualitatively and quantitatively. The utilization of data analysis is to identify and distinguish the relationship in data and the trends among the factors which represent the data. It plays a vital role in making a business decision more effectively. With the aid of different data analysis techniques, data scientists can perform many operations on datasets that are useful for business organizations and it can also, help in many industrial applications. 

References

B, Kawulich B., Data Analysis Techniques in Qualitative Research», Journal of Research in Education, vol. 14, no. 1, pp. 96-113,

2004.

B. Carolina, Towards Data Science», Hypothesis Testing In Real Life, vol., pp. 5-9, 2018.

B. Owen, Monte Carlo Theory», International Conference on Monte Carlo and quasi-Monte Carlo methods: MCQMC 2016.

D. John, The Data Analysis Process: 5 Steps To Better Decision Making», Big Sky , 2017.

Elgendy, N.: Big Data Analytics in Support of the Decision Making Process», MSc Thesis, German University in Cairo, p. 164,

2013.

Famili A, Shen W-M, Weber R, Simoudis E. Data preprocessing and intelligent data analysis», Intel Data Anal. 1997;1(1-4):3-23.

Kelly J, Floyer D, Vellante D, Miniman S. Big data vendor revenue and market fore?cast», PP.2012-2017, Wikibon, Tech. Rep.

2014.

L. Dana, 5 techniques to take your data analysis to another level, tech talk», Sisense Publications, 2019.

Lee, R., Luo, T., Huai, Y., Wang, F., He, Y., Zhang, X.: Ysmart: Yet Another SQL-to- MapReduce Translator. In: IEEE International

Conference on Distributed Computing Systems (ICDCS), pp. 25-36, 2011.

M. Bhatia, Your Guide to Qualitative and Quantitative Data Analysis Methods», SocialCops Publishers, 2018.

T. Jolliffe, Principal Component Analysis», Springer, New York, 2002.

V. Patel, The Data Science Process», Derive Publications, 2018.

Z. Hongjun, H. Wenning, H. Dengchao and M. Yuxing, Survey of research on information security in big data», Congresso da

sociedada Brasileira de Computacao, pp.1-6, 2014

Downloads

Submitted

09/19/2024

Published

09/19/2024

How to Cite

Swetha, M., E., N., & Parakh, S. (2024). An Impact of Empirical Data Analysis in the World of Business Environment. International Research Journal of Business Studies, 15(1), 97-109. https://doi.org/10.21632/irjbs.15.1.97-109

How to Cite

Swetha, M., E., N., & Parakh, S. (2024). An Impact of Empirical Data Analysis in the World of Business Environment. International Research Journal of Business Studies, 15(1), 97-109. https://doi.org/10.21632/irjbs.15.1.97-109