Automated Exploratory Data Analysis

  • Hubble Dhillon Department of Computer Science, University of Haripur, Pakistan

Abstract

Abstract Views: 101

This study introduces a novel framework that can be generalized for an automated exploratory data analysis to test a given hypothesis. The current work is about a drug-related trend and also provides a specific model to test a motivation-related hypothesis in the case of COVID-19. With the utilization of the right, appropriate, and optimized solution available to solve a problem, it is significant that the user feels motivated to delve into the solution for the betterment of society.

KEYWORDS: automated exploratory data analysis, motivation-related hypothesis

Downloads

Download data is not yet available.

References

P.-W. Wang, D. K. Ahorsu, C.-Y. Lin, I.-H. Chen, C.-F. Yen, Y.-J. Kuo, et al., "Motivation to have COVID-19 vaccination explained using an extended Protection Motivation Theory among university students in China: The role of information sources," Vaccines, vol. 9, p. 380, 2021.

D. E. Rumelhart, J. L. McClelland, and P. R. Group, Parallel distributed processingvol. 1: IEEE New York, 1988.

A. S. Arora, H. Rajput, and R. Changotra, "Current perspective of COVID-19 spread across South Korea: Exploratory data analysis and containment of the pandemic," Environment, development and sustainability, vol. 23, pp. 6553-6563, 2021.

S. Sreedharan, "Analysing the covid-19 cases in kerala: a visual exploratory data analysis approach," SN Comprehensive Clinical Medicine, vol. 2, pp. 1337-1348, 2020.

L. J. Molnar, L. H. Ryan, A. K. Pradhan, D. W. Eby, R. M. S. Louis, and J. S. Zakrajsek, "Understanding trust and acceptance of automated vehicles: An exploratory simulator study of transfer of control between automated and manual driving," Transportation research part F: traffic psychology and behaviour, vol. 58, pp. 319-328, 2018.

M. Boggs, B. Wali, and A. J. Khattak, "Exploratory analysis of automated vehicle crashes in California: A text analytics & hierarchical Bayesian heterogeneity-based approach," Accident Analysis & Prevention, vol. 135, p. 105354, 2020.

T. Murray and V. Estivill-Castro, "Cluster discovery techniques for exploratory spatial data analysis," International journal of geographical information science, vol. 12, pp. 431-443, 1998.

R. S. Amant and P. R. Cohen, "Planning representation for automated exploratory data analysis," in Knowledge-Based Artificial Intelligence Systems in Aerospace and Industry, 1994, pp. 44-52.

S. Putatunda, K. Rama, D. Ubrangala, and R. Kondapalli, "SmartEDA: An R package for automated exploratory data analysis," arXiv preprint arXiv:1903.04754, 2019.

M. Staniak and P. Biecek, "The landscape of R packages for automated exploratory data analysis," arXiv preprint arXiv:1904.02101, 2019.

Published
2021-12-31
How to Cite
Dhillon, H. (2021). Automated Exploratory Data Analysis. UMT Artificial Intelligence Review, 1(2), 36-45. https://doi.org/10.32350/AIR.0102.04
Section
Articles