2021
DOI: 10.48084/etasr.4383
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Multi-Layer Perceptron Neural Network Model Development for Chili Pepper Disease Diagnosis Using Filter and Wrapper Feature Selection Methods

Abstract: The goal of the current study is to develop a diagnosis model for chili pepper disease diagnosis by applying filter and wrapper feature selection methods as well as a Multi-Layer Perceptron Neural Network (MLPNN). The data used for developing the model include 1) types, 2) causative agents, 3) areas of infection, 4) growth stages of infection, 5) conditions, 6) symptoms, and 7) 14 types of chili pepper diseases. These datasets were applied to the 3 feature selection techniques, including information gain, gain… Show more

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Cited by 8 publications
(6 citation statements)
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“…In [23], medical insurance data from a large urban area were engaged to build a Bayesian network model to predict future high-cost COPD patients. In [24], a chili pepper disease diagnosis model was developed implementing MLPNN, achieving 98.91% accuracy and suggesting its potential for disease prevention and treatment, aligning with previous studies showcasing MLP's effectiveness in disease diagnosis.…”
Section: Introductionsupporting
confidence: 55%
“…In [23], medical insurance data from a large urban area were engaged to build a Bayesian network model to predict future high-cost COPD patients. In [24], a chili pepper disease diagnosis model was developed implementing MLPNN, achieving 98.91% accuracy and suggesting its potential for disease prevention and treatment, aligning with previous studies showcasing MLP's effectiveness in disease diagnosis.…”
Section: Introductionsupporting
confidence: 55%
“…Through cross-validation, the accuracy, precision, and recall of the model reached 98.93%, 98.92%, and 98.89%, respectively. However, the key features of the disease may not be selected by filtering and packaging feature selection methods, so there may be a certain risk of overfitting the model [ 16 ]; the methods of Chen, W et al were conducive to processing pepper images in an HSV color space, enabling a convolutional neural network (CNN) to extract additional features. Compared with the RGB color space, this method improved its accuracy and other indicators, and it was more suitable for diseases with prominent color features, such as viral diseases, but for diseases that do not pay attention to color space, it has certain limitations [ 17 ]; Sharma, R et al proposed the detection of Pepper Leaf Blight Disease (PLBD) in pepper leaves based on the faster region-based convolutional neural network, R-CNN, and a multi-classification method to evaluate the model’s performance, the detection accuracy and multi-classification accuracy were 99.39% and 98.38%, respectively, and the computational efficiency of the model was evaluated.…”
Section: Introductionmentioning
confidence: 99%
“…In addition, IoT and cloud computing technology are interdependent and have become beneficial areas for remotely managing the patient's condition to provide ongoing facilities by providing helpful information to patients and clinicians [7]. Many services use cloud solutions and machine learning algorithms to keep and process patient data [8][9][10][11]. In [2], a multi-objective successive approximation (EMSA) technique was introduced to maintain an adequate measure of privacy in healthcare clouds based on Euclidean L3P.…”
Section: Introductionmentioning
confidence: 99%