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Keywords = randomizable filtered classifier

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19 pages, 1521 KB  
Article
Potential of Machine Learning for Predicting Sleep Disorders: A Comprehensive Analysis of Regression and Classification Models
by Raed Alazaidah, Ghassan Samara, Mohammad Aljaidi, Mais Haj Qasem, Ayoub Alsarhan and Mohammed Alshammari
Diagnostics 2024, 14(1), 27; https://doi.org/10.3390/diagnostics14010027 - 22 Dec 2023
Cited by 35 | Viewed by 5601
Abstract
Sleep disorder is a disease that can be categorized as both an emotional and physical problem. It imposes several difficulties and problems, such as distress during the day, sleep-wake disorders, anxiety, and several other problems. Hence, the main objective of this research was [...] Read more.
Sleep disorder is a disease that can be categorized as both an emotional and physical problem. It imposes several difficulties and problems, such as distress during the day, sleep-wake disorders, anxiety, and several other problems. Hence, the main objective of this research was to utilize the strong capabilities of machine learning in the prediction of sleep disorders. In specific, this research aimed to meet three main objectives. These objectives were to identify the best regression model, the best classification model, and the best learning strategy that highly suited sleep disorder datasets. Considering two related datasets and several evaluation metrics that were related to the tasks of regression and classification, the results revealed the superiority of the MultilayerPerceptron, SMOreg, and KStar regression models compared with the other twenty three regression models. Furthermore, IBK, RandomForest, and RandomizableFilteredClassifier showed superior performance compared with other classification models that belonged to several learning strategies. Finally, the Function learning strategy showed the best predictive performance among the six considered strategies in both datasets and with respect to the most evaluation metrics. Full article
(This article belongs to the Special Issue Diagnosis of Sleep Disorders Using Machine Learning Approaches)
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16 pages, 3913 KB  
Article
A Machine Learning Method to Estimate Reference Evapotranspiration Using Soil Moisture Sensors
by Antonio Fernández-López, Daniel Marín-Sánchez, Ginés García-Mateos, Antonio Ruiz-Canales, Manuel Ferrández-Villena-García and José Miguel Molina-Martínez
Appl. Sci. 2020, 10(6), 1912; https://doi.org/10.3390/app10061912 - 11 Mar 2020
Cited by 20 | Viewed by 5026
Abstract
One of the most important applications of remote imaging systems in agriculture, with the greatest impact on global sustainability, is the determination of optimal crop irrigation. The methodology proposed by the Food and Agriculture Organization (FAO) is based on estimating crop evapotranspiration (ETc), [...] Read more.
One of the most important applications of remote imaging systems in agriculture, with the greatest impact on global sustainability, is the determination of optimal crop irrigation. The methodology proposed by the Food and Agriculture Organization (FAO) is based on estimating crop evapotranspiration (ETc), which is done by computing the reference crop evapotranspiration (ETo) multiplied by a crop coefficient (Kc). Some previous works proposed methods to compute Kc using remote crop images. The present research aims at complementing these systems, estimating ETo with the use of soil moisture sensors. A crop of kikuyu grass (Pennisetum clandestinum) was used as the reference crop. Four frequency-domain reflectometry sensors were installed, gathering moisture information during the study period from May 2015 to September 2016. Different machine learning regression algorithms were analyzed for the estimation of ETo using moisture and climatic data. The values were compared with respect to the ETo computed in an agroclimatic station using the Penman–Monteith method. The best method was the randomizable filtered classifier technique, based on the K* algorithm. This model achieved a correlation coefficient, R, of 0.9936, with a root-mean-squared error of 0.183 mm/day and 6.52% mean relative error; the second-best model used artificial neural networks, with an R of 0.9470 and 11% relative error. Thus, this new methodology allows obtaining accurate and cost-efficient prediction models for ETo, as well as for the water balance of the crops. Full article
(This article belongs to the Special Issue Applications of Remote Image Capture System in Agriculture)
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