Browse By:

Assessing the Predictive Capability of a Machine Learning Model

Ukabuiro, Ikenna Kelechi and Onwubiko, Davidson Chisom and Odikwa, Henry Ndubuisi (2023) Assessing the Predictive Capability of a Machine Learning Model. European Journal of Computer Science and Information Technology, 11 (5). pp. 12-18. ISSN 2054-0957 (Print), 2054-0965 (Online)

[thumbnail of Assessing the Predictive Capability.pdf] Text
Assessing the Predictive Capability.pdf - Published Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (351kB)

Abstract

The purpose of this study was to evaluate the effectiveness of an integrated machine learning system that has been put into place to help professionals predict how patients will respond to steroid treatment for glaucoma. The research employed a quantitative research methodology, utilizing descriptive statistics. Taro Yamane formula was applied in finding a suitable population size. Our study employed linear regression analysis to establish the correlation between the predictors, i.e the novel predicting system, and the dependent variable, which pertains to the effectiveness of forecasting a patient's reaction to steroid treatment. The analysis showed that implementing a novel prediction technique would have a notable impact and efficiency in determining a persons status in pre-trabeculectomy evaluation. The p-value (0.000), which is less than the predefined significance level (Alpha) of 0.05—more specifically, 0.000<0.05—indicates the evidence for a significant finding. The calculated t-value (33.196) exceeds the critical t-value (1.960). Consequently, the correlation coefficient (R) of 0.920 demonstrates a highly robust positive effect.

Item Type: Article
Subjects: T Technology > T Technology (General)
Depositing User: Professor Mark T. Owen
Date Deposited: 15 Oct 2023 16:28
Last Modified: 15 Oct 2023 16:28
URI: https://tudr.org/id/eprint/2301

Actions (login required)

View Item
View Item
UNSPECIFIED UNSPECIFIED