8 results on '"Dahou, Abdelghani"'
Search Results
2. Terrorism Attack Classification Using Machine Learning: The Effectiveness of Using Textual Features Extracted from GTD Dataset.
- Author
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Abdalsalam, Mohammed, Li, Chunlin, Dahou, Abdelghani, and Kryvinska, Natalia
- Abstract
One of the biggest dangers to society today is terrorism, where attacks have become one of the most significant risks to international peace and national security. Big data, information analysis, and artificial intelligence (AI) have become the basis for making strategic decisions in many sensitive areas, such as fraud detection, risk management, medical diagnosis, and counter-terrorism. However, there is still a need to assess how terrorist attacks are related, initiated, and detected. For this purpose, we propose a novel framework for classifying and predicting terrorist attacks. The proposed framework posits that neglected text attributes included in the Global Terrorism Database (GTD) can influence the accuracy of the model's classification of terrorist attacks, where each part of the data can provide vital information to enrich the ability of classifier learning. Each data point in a multiclass taxonomy has one or more tags attached to it, referred as "related tags." We applied machine learning classifiers to classify terrorist attack incidents obtained from the GTD. A transformer-based technique called DistilBERT extracts and learns contextual features from text attributes to acquire more information from text data. The extracted contextual features are combined with the "key features" of the dataset and used to perform the final classification. The study explored different experimental setups with various classifiers to evaluate the model's performance. The experimental results show that the proposed framework outperforms the latest techniques for classifying terrorist attacks with an accuracy of 98.7% using a combined feature set and extreme gradient boosting classifier. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Improved Feature Selection Based on Chaos Game Optimization for Social Internet of Things with a Novel Deep Learning Model.
- Author
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Dahou, Abdelghani, Chelloug, Samia Allaoua, Alduailij, Mai, and Elaziz, Mohamed Abd
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DEEP learning , *INTERNET of things , *FEATURE selection , *FEATURE extraction , *DATA management , *SOCIAL networks - Abstract
The Social Internet of Things (SIoT) ecosystem tends to process and analyze extensive data generated by users from both social networks and Internet of Things (IoT) systems and derives knowledge and diagnoses from all connected objects. To overcome many challenges in the SIoT system, such as big data management, analysis, and reporting, robust algorithms should be proposed and validated. Thus, in this work, we propose a framework to tackle the high dimensionality of transferred data over the SIoT system and improve the performance of several applications with different data types. The proposed framework comprises two parts: Transformer CNN (TransCNN), a deep learning model for feature extraction, and the Chaos Game Optimization (CGO) algorithm for feature selection. To validate the framework's effectiveness, several datasets with different data types were selected, and various experiments were conducted compared to other methods. The results showed that the efficiency of the developed method is better than other models according to the performance metrics in the SIoT environment. In addition, the average of the developed method based on the accuracy, sensitivity, specificity, number of selected features, and fitness value is 88.30%, 87.20%, 92.94%, 44.375, and 0.1082, respectively. The mean rank obtained using the Friedman test is the best value overall for the competitive algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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4. Multi-ResAtt: Multilevel Residual Network With Attention for Human Activity Recognition Using Wearable Sensors.
- Author
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Al-qaness, Mohammed A. A., Dahou, Abdelghani, Elaziz, Mohamed Abd, and Helmi, A. M.
- Abstract
Human activity recognition (HAR) applications have received much attention due to their necessary implementations in various domains, including Industry 5.0 applications such as smart homes, e-health, and various Internet of Things applications. Deep learning (DL) techniques have shown impressive performance in different classification tasks, including HAR. Accordingly, in this article, we develop a comprehensive HAR system based on a novel DL architecture called Multi-ResAtt (multilevel residual network with attention). This model incorporates initial blocks and residual modules aligned in parallel. Multi-ResAtt learns data representations on the inertial measurement units level. Multi-ResAtt integrates a recurrent neural network with attention to extract time-series features and perform activity recognition. We consider complex human activities collected from wearable sensors to evaluate the Multi-ResAtt using three public datasets, Opportunity; UniMiB-SHAR; and PAMAP2. Additionally, we compared the proposed Multi-ResAtt to several DL models and existing HAR systems, and it achieved significant performance. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
5. A Novel Text Classification Technique Using Improved Particle Swarm Optimization: A Case Study of Arabic Language.
- Author
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Alhaj, Yousif A., Dahou, Abdelghani, Al-qaness, Mohammed A. A., Abualigah, Laith, Abbasi, Aaqif Afzaal, Almaweri, Nasser Ahmed Obad, Elaziz, Mohamed Abd, and Damaševičius, Robertas
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PARTICLE swarm optimization ,ARABIC language ,FEATURE selection ,MACHINE learning ,NP-hard problems - Abstract
We propose a novel text classification model, which aims to improve the performance of Arabic text classification using machine learning techniques. One of the effective solutions in Arabic text classification is to find the suitable feature selection method with an optimal number of features alongside the classifier. Although several text classification methods have been proposed for the Arabic language using different techniques, such as feature selection methods, an ensemble of classifiers, and discriminative features, choosing the optimal method becomes an NP-hard problem considering the huge search space. Therefore, we propose a method, called Optimal Configuration Determination for Arabic text Classification (OCATC), which utilized the Particle Swarm Optimization (PSO) algorithm to find the optimal solution (configuration) from this space. The proposed OCATC method extracts and converts the features from the textual documents into a numerical vector using the Term Frequency-Inverse Document Frequency (TF–IDF) approach. Finally, the PSO selects the best architecture from a set of classifiers to feature selection methods with an optimal number of features. Extensive experiments were carried out to evaluate the performance of the OCATC method using six datasets, including five publicly available datasets and our proposed dataset. The results obtained demonstrate the superiority of OCATC over individual classifiers and other state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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6. A social media event detection framework based on transformers and swarm optimization for public notification of crises and emergency management.
- Author
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Dahou, Abdelghani, Mabrouk, Alhassan, Ewees, Ahmed A., Gaheen, Marwa A., and Abd Elaziz, Mohamed
- Subjects
EMERGENCY management ,SOCIAL media ,DEEP learning ,SEARCH algorithms ,FEATURE extraction - Abstract
Social media allows the spread of vital information regarding crises and emergencies. Thus, emergency management systems can benefit from social media because they can be used to inform the public to take the appropriate precautions. However, social media is riddled with irrelevant information. Therefore, researchers have recently focused on developing robust event detection (ED) systems to extract relevant events and to define their types by relying on deep learning techniques (DL). Hence, this paper proposes an event detection model that merges the DL approach (e.g., MobileBERT) and a novel feature selection (FS) method to improve performance. MobileBERT is a transformer-based model designed to extract features from a text dataset, while the FS is used to preserve the relevant features and to reduce feature representation space. The developed FS method depends on improving the sparrow search algorithm (SSA) using manta ray foraging optimization (MRFO) operators. The modification is conducted to enhance the exploitation ability of the SSA using the operators of MRFO as a local search method. To validate the proposed framework, experiments are conducted using real-world datasets, namely Maven, C6, and C36. The results show the ability of the modified FS method to improve the performance of the proposed framework for ED tasks over other existing methods. • Apply MobileBERT to extract features from event detection text data. • Improve efficiency of SSA using MRFO to find relevant features. • Evaluate efficiency of proposed method using various datasets and compare it with other methods. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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7. Advanced Feature Extraction and Selection Approach Using Deep Learning and Aquila Optimizer for IoT Intrusion Detection System.
- Author
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Fatani, Abdulaziz, Dahou, Abdelghani, Al-qaness, Mohammed A. A., Lu, Songfeng, and Elaziz, Mohamed Abd
- Subjects
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FEATURE selection , *SWARM intelligence , *INTERNET of things , *MACHINE learning , *DEEP learning , *FEATURE extraction , *ALGORITHMS - Abstract
Developing cyber security is very necessary and has attracted considerable attention from academy and industry organizations worldwide. It is also very necessary to provide sustainable computing for the the Internet of Things (IoT). Machine learning techniques play a vital role in the cybersecurity of the IoT for intrusion detection and malicious identification. Thus, in this study, we develop new feature extraction and selection methods and for the IDS system using the advantages of the swarm intelligence (SI) algorithms. We design a feature extraction mechanism depending on the conventional neural networks (CNN). After that, we present an alternative feature selection (FS) approach using the recently developed SI algorithm, Aquila optimizer (AQU). Moreover, to assess the quality of the developed IDS approach, four well-known public datasets, CIC2017, NSL-KDD, BoT-IoT, and KDD99, were used. We also considered extensive comparisons to other optimization methods to verify the competitive performance of the developed method. The results show the high performance of the developed approach using different evaluation indicators. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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8. Boosting COVID-19 Image Classification Using MobileNetV3 and Aquila Optimizer Algorithm.
- Author
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Abd Elaziz, Mohamed, Dahou, Abdelghani, Alsaleh, Naser A., Elsheikh, Ammar H., Saba, Amal I., and Ahmadein, Mahmoud
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BOOSTING algorithms , *COVID-19 , *DEEP learning , *FEATURE selection , *ALGORITHMS , *COMPUTED tomography , *FEATURE extraction - Abstract
Currently, the world is still facing a COVID-19 (coronavirus disease 2019) classified as a highly infectious disease due to its rapid spreading. The shortage of X-ray machines may lead to critical situations and delay the diagnosis results, increasing the number of deaths. Therefore, the exploitation of deep learning (DL) and optimization algorithms can be advantageous in early diagnosis and COVID-19 detection. In this paper, we propose a framework for COVID-19 images classification using hybridization of DL and swarm-based algorithms. The MobileNetV3 is used as a backbone feature extraction to learn and extract relevant image representations as a DL model. As a swarm-based algorithm, the Aquila Optimizer (Aqu) is used as a feature selector to reduce the dimensionality of the image representations and improve the classification accuracy using only the most essential selected features. To validate the proposed framework, two datasets with X-ray and CT COVID-19 images are used. The obtained results from the experiments show a good performance of the proposed framework in terms of classification accuracy and dimensionality reduction during the feature extraction and selection phases. The Aqu feature selection algorithm achieves accuracy better than other methods in terms of performance metrics. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
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