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      A Multilayer Perceptron Neural Network with Selective-Data Training for Flight Arrival Delay Prediction

      1 , 1 , 1
      Scientific Programming
      Hindawi Limited

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          Abstract

          Flight delay is the most common preoccupation of aviation stakeholders around the world. Airlines, which suffer from a monetary and customer loyalty loss, are the most affected. Various studies have attempted to analyze and solve flight delays using machine learning algorithms. This research aims to predict flights’ arrival delay using Artificial Neural Network (ANN). We applied a MultiLayer Perceptron (MLP) to train and test our data. Two approaches have been adopted in our work. In the first one, we used historical flight data extracted from Bureau of Transportation Statistics (BTS). The second approach improves the efficiency of the model by applying selective-data training. It consists of selecting only most relevant instances from the training dataset which are delayed flights. According to BTS, a flight whose difference between scheduled and actual arrival times is 15 minutes or greater is considered delayed. Departure delays and flight distance proved to be very contributive to flight delays. An adjusted and optimized hyperparameters using grid search technique helped us choose the right architecture of the network and have a better accuracy and less error than the existing literature. The results of both traditional and selective training were compared. The efficiency and time complexity of the second method are compared against those of the traditional training procedure. The neural network MLP was able to predict flight arrival delay with a coefficient of determination R 2 of 0.9048, and the selective procedure achieved a time saving and a better R 2 score of 0.9560. To enhance the reliability of the proposed method, the performance of the MLP was compared with that of Gradient Boosting (GB) and Decision Trees (DT). The result is that the MLP outperformed all existing benchmark methods.

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          Most cited references33

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          Artificial neural networks (the multilayer perceptron)—a review of applications in the atmospheric sciences

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            Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes.

            J V Tu (1996)
            Artificial neural networks are algorithms that can be used to perform nonlinear statistical modeling and provide a new alternative to logistic regression, the most commonly used method for developing predictive models for dichotomous outcomes in medicine. Neural networks offer a number of advantages, including requiring less formal statistical training, ability to implicitly detect complex nonlinear relationships between dependent and independent variables, ability to detect all possible interactions between predictor variables, and the availability of multiple training algorithms. Disadvantages include its "black box" nature, greater computational burden, proneness to overfitting, and the empirical nature of model development. An overview of the features of neural networks and logistic regression is presented, and the advantages and disadvantages of using this modeling technique are discussed.
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              Convolutional capsnet: A novel artificial neural network approach to detect COVID-19 disease from X-ray images using capsule networks

              Highlights • In this study, unlike CNN architectures, COVID-19 was determined from chest X-ray images with a smaller number of layers. • More COVID-19, pneumonia, and no-findings images were used than in previous studies. This increases the reliability of the system more. • As is known, reducing the size of the image may cause some information in the image to be lost. Given these facts, good classification accuracy has been achieved with capsule networks, even the image size has been reduced to 128 × 128 pixels.
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                Author and article information

                Contributors
                Journal
                Scientific Programming
                Scientific Programming
                Hindawi Limited
                1875-919X
                1058-9244
                June 14 2021
                June 14 2021
                : 2021
                : 1-12
                Affiliations
                [1 ]Laboratory of Mathematics, Computer and Engineering Sciences, Mathematics and Computer Science Department, Faculty of Science and Techniques, Hassan First University of Settat, Settat, Morocco
                Article
                10.1155/2021/5558918
                cccfd7ec-5df8-4535-8baf-ecbab94da957
                © 2021

                https://creativecommons.org/licenses/by/4.0/

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