International Journal of Communications, Network and System Sciences

International Journal of Communications, Network and System Sciences

ISSN Print: 1913-3715
ISSN Online: 1913-3723
www.scirp.org/journal/ijcns
E-mail: ijcns@scirp.org
"Improving Knowledge Based Spam Detection Methods: The Effect of Malicious Related Features in Imbalance Data Distribution"
written by Jafar Alqatawna, Hossam Faris, Khalid Jaradat, Malek Al-Zewairi, Omar Adwan,
published by International Journal of Communications, Network and System Sciences, Vol.8 No.5, 2015
has been cited by the following article(s):
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[14] Performance Evaluation of Machine Learning Algorithms on Textual Datasets for Spam Email Classification
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[15] Spam Detection Based on Feature Evolution to Deal with Concept Drift.
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[16] Spam Detection Based on Feature Evolution to Deal with Concept Drift
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[17] Review of Classification Methods on Unbalanced Data Sets
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[18] 不平衡数据集分类方法综述.
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[21] A feature-centric spam email detection model using diverse supervised machine learning algorithms
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[22] Towards Automated Comprehensive Feature Engineering for Spam Detection.
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[23] Multi Sampling Random Subspace Ensemble for Imbalanced Data Stream Classification
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[24] Spam profiles detection on social networks using computational intelligence methods: The effect of the lingual context
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[25] Towards Automated Comprehensive Feature Engineering for Spam Detection
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[26] Classification-based approach for Question Answering Systems: Design and Application in HR operations
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[27] Análisis de la influencia del desbalanceo en conjuntos de datos para la clasificación de imágenes mediante redes neuronales convolucionales.
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[28] An intelligent system for spam detection and identification of the most relevant features based on evolutionary Random Weight Networks
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[29] Cost-Sensitive Learner on Hybrid SMOTE-Ensemble Approach to Predict Software Defects
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[30] Improving email spam detection using content based feature engineering approach
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[31] USING MODIFIED BAT ALGORITHM TO TRAIN NEURAL NETWORKS FOR SPAM DETECTION.
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[32] EMFET: E-mail Features Extraction Tool.
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[33] A new semantic attribute deep learning with a linguistic attribute hierarchy for spam detection
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[34] Online Social Networks Security: Threats, Attacks, and Future Directions
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[35] Spam profile detection in social networks based on public features
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[36] EMFET: E-mail Features Extraction Tool
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[37] Spotting the Islamist Radical within: Religious Extremists Profiling in the United State
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[38] Spam Filtering based on Naïve Bayesian with Information Gain and Ant Colony System
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[39] Optimizing Feedforward Neural Networks Using Biogeography Based Optimization for E-Mail Spam Identification
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[40] EMAIL SPAM CLASSIFICATION USING HYBRID APPROACH OF RBF NEURAL NETWORK AND PARTICLE SWARM OPTIMIZATION
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[41] Voting-based Classification for E-mail Spam Detection
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[42] Statistical Detection of Online Drifting Twitter Spam: Invited Paper
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[43] A Hybrid Approach Based on Particle Swarm Optimization and Random Forests for E-Mail Spam Filtering
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[44] Categorizing Blog Spam
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[45] A Preliminary Analysis of Drive-by Email Attacks in Educational Institutes
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[46] Analyzing CyberCrimes Strategies: The Case of Phishing Attack
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[47] Incremental information gain analysis of input attribute impact on RBF-kernel SVM spam detection
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[48] Auto-tuning of parameters in hybrid sampling method for class imbalance problem
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[49] Voting-based Classification for E-mail Spam Detection.
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[50] Optimizing Feedforward neural networks using Krill Herd algorithm for E-mail spam detection
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