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      False Alert Detection Based on Deep Learning and Machine Learning

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      International Journal on Semantic Web and Information Systems
      IGI Global

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          Abstract

          Among the large number of network attack alerts generated every day, actual security incidents are usually overwhelmed by a large number of redundant alerts. Therefore, how to remove these redundant alerts in real time and improve the quality of alerts is an urgent problem to be solved in large-scale network security protection. This paper uses the method of combining machine learning and deep learning to improve the effect of false alarm detection and then more accurately identify real alarms, that is, in the process of training the model, the features of a hidden layer output of the DNN model are used as input to train the machine learning model. In order to verify the proposed method, we use the marked alert data to do classification experiments, and finally use the accuracy recall rate, precision, and F1 value to evaluate the model. Good results have been obtained.

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          Blockchain-based authentication and authorization for smart city applications

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            CorrAUC: A Malicious Bot-IoT Traffic Detection Method in IoT Network Using Machine-Learning Techniques

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              Efficient deep learning approach for augmented detection of Coronavirus disease

              The new Coronavirus disease 2019 (COVID-19) is rapidly affecting the world population with statistics quickly falling out of date. Due to the limited availability of annotated Coronavirus X-ray and CT images, the detection of COVID-19 remains the biggest challenge in diagnosing this disease. This paper provides a promising solution by proposing a COVID-19 detection system based on deep learning. The proposed deep learning modalities are based on convolutional neural network (CNN) and convolutional long short-term memory (ConvLSTM). Two different datasets are adopted for the simulation of the proposed modalities. The first dataset includes a set of CT images, while the second dataset includes a set of X-ray images. Both of these datasets consist of two categories: COVID-19 and normal. In addition, COVID-19 and pneumonia image categories are classified in order to validate the proposed modalities. The proposed deep learning modalities are tested on both X-ray and CT images as well as a combined dataset that includes both types of images. They achieved an accuracy of 100% and an F1 score of 100% in some cases. The simulation results reveal that the proposed deep learning modalities can be considered and adopted for quick COVID-19 screening.
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                Author and article information

                Journal
                International Journal on Semantic Web and Information Systems
                IGI Global
                1552-6283
                1552-6291
                January 2022
                January 1 2022
                : 18
                : 1
                : 1-21
                Article
                10.4018/IJSWIS.297035
                e5c4c435-4d8e-4eef-9d27-a6e3491e4e11
                © 2022

                http://creativecommons.org/licenses/by/3.0/deed.en_US

                http://creativecommons.org/licenses/by/3.0/deed.en_US

                http://creativecommons.org/licenses/by/3.0/deed.en_US

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