2023
DOI: 10.4236/jdaip.2023.113012
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Application of Regularized Logistic Regression and Artificial Neural Network Model for Ozone Classification across El Paso County, Texas, United States

Callistus Obunadike,
Adekunle Adefabi,
Somtobe Olisah
et al.

Abstract: This paper focuses on ozone prediction in the atmosphere using a machine learning approach. We utilize air pollutant and meteorological variable datasets from the El Paso area to classify ozone levels as high or low. The LR and ANN algorithms are employed to train the datasets. The models demonstrate a remarkably high classification accuracy of 89.3% in predicting ozone levels on a given day. Evaluation metrics reveal that both the ANN and LR models exhibit accuracies of 89.3% and 88.4%, respectively. Addition… Show more

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“…The phishing detection techniques enable us to identify the phishing URLs by evaluating the URLs. To assess the URLs, several methods are available, i.e., blacklist and whitelistbased techniques, statistical analysis-based techniques, and machine learning-based techniques [6]. Amongst the available methods, machine learning techniques are more efficacious and accurate.…”
Section: M-2024-485mentioning
confidence: 99%
“…The phishing detection techniques enable us to identify the phishing URLs by evaluating the URLs. To assess the URLs, several methods are available, i.e., blacklist and whitelistbased techniques, statistical analysis-based techniques, and machine learning-based techniques [6]. Amongst the available methods, machine learning techniques are more efficacious and accurate.…”
Section: M-2024-485mentioning
confidence: 99%