Automated Exploratory Data Analysis
Abstract
Abstract Views: 101This 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
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.
UMT-AIR follow an open-access publishing policy and full text of all published articles is available free, immediately upon publication of an issue. The journal’s contents are published and distributed under the terms of the Creative Commons Attribution 4.0 International (CC-BY 4.0) license. Thus, the work submitted to the journal implies that it is original, unpublished work of the authors (neither published previously nor accepted/under consideration for publication elsewhere). On acceptance of a manuscript for publication, a corresponding author on the behalf of all co-authors of the manuscript will sign and submit a completed the Copyright and Author Consent Form.