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Synthetic Tabular Generators Fail to Preserve Behavioral Fraud Patterns: A Benchmark on Temporal, Velocity, and Multi-Account Signals Generalization Guarantees on Data-Driven Tuning of Gradient Descent with Langevin Updates Automated co-design of high-performance thermodynamic cycles via graph-based hierarchical reinforcement learning Does Dimensionality Reduction via Random Projections Preserve Landscape Features? Analog Optical Inference on Million-Record Mortgage Data ASTER: Latent Pseudo-Anomaly Generation for Unsupervised Time-Series Anomaly Detection Context Sensitivity Improves Human-Machine Visual Alignment Artificial intelligence application in lymphoma diagnosis with Vision Transformer using weakly supervised training Design and Behavior of Sparse Mixture-of-Experts Layers in CNN-based Semantic Segmentation Automatic Charge State Tuning of 300 mm FDSOI Quantum Dots Using Neural Network Segmentation of Charge Stability Diagram MyoVision: A Mobile Research Tool and NEATBoost-Attention Ensemble Framework for Real Time Chicken Breast Myopathy Detection The Spectrascapes Dataset: Street-view imagery beyond the visible captured using a mobile platform Deep Spatially-Regularized and Superpixel-Based Diffusion Learning for Unsupervised Hyperspectral Image Clustering DroneScan-YOLO: Redundancy-Aware Lightweight Detection for Tiny Objects in UAV Imagery Rethinking Uncertainty in Segmentation: From Estimation to Decision A High-Resolution Landscape Dataset for Concept-Based XAI With Application to Species Distribution Models KV Packet: Recomputation-Free Context-Independent KV Caching for LLMs Pareto-Optimal Offline Reinforcement Learning via Smooth Tchebysheff Scalarization PatchPoison: Poisoning Multi-View Datasets to Degrade 3D Reconstruction Depth-Resolved Coral Reef Thermal Fields from Satellite SST and Sparse In-Situ Loggers Using Physics-Informed Neural Networks Spatial Atlas: Compute-Grounded Reasoning for Spatial-Aware Research Agent Benchmarks Spectral Entropy Collapse as a Phase Transition in Delayed Generalisation: An Interventional and Predictive Framework for Grokkin LangFlow: Continuous Diffusion Rivals Discrete in Language Modeling Evaluating Cooperation in LLM Social Groups through Elected Leadership Towards Autonomous Mechanistic Reasoning in Virtual Cells Symmetry Reveals Layerwise Dynamics: How Transformers Perform In-Context Classification A Triadic Suffix Tokenization Scheme for Numerical Reasoning Not All Forgetting Is Equal: Architecture-Dependent Retention Dynamics in Fine-Tuned Image Classifiers Revisiting Compositionality in Dual-Encoder Vision-Language Models: The Role of Inference From Attribution to Action: A Human-Centered Application of Activation Steering THEIA: Learning Complete Kleene Three-Valued Logic in a Pure-Neural Modular Architecture Cost-optimal Sequential Testing via Doubly Robust Q-learning Lightweight Low-Light Image Enhancement via Distribution-Normalizing Preprocessing and Depthwise U-Net A Faster Path to Continual Learning Where Hindsight Credit Can Reside: A Signed-Capacity View of Token Updates in RLVR Optimal Stability of KL Divergence under Gaussian Perturbations Memory-Guided Trust-Region Bayesian Optimization (MG-TuRBO) for High Dimensions EngageTriBoost: Predictive Modeling of User Engagement in Digital Mental Health Intervention Using Explainable Machine Learning Reservoir observer enhanced with residual calibration and attention mechanism Creator Incentives in Recommender Systems: A Cooperative Game-Theoretic Approach for Stable and Fair Collaboration in Multi-Agent Bandits Efficient RL Training for LLMs with Experience Replay Wireless Communication Enhanced Value Decomposition for Multi-Agent Reinforcement Learning A Little Rank Goes a Long Way: Random Scaffolds with LoRA Adapters Are All You Need Adversarial Sensor Errors for Safe and Robust Wind Turbine Fleet Control IKKA: Inversion Classification via Critical Anomalies for Robust Visual Servoing Adaptive Simulation Experiment for LLM Policy Optimization EvoLen: Evolution-Guided Tokenization for DNA Language Model Smartwatch-Based Sitting Time Estimation in Real-World Office Settings Structural Evaluation Metrics for SVG Generation via Leave-One-Out Analysis Loom: A Scalable Analytical Neural Computer Architecture Hierarchical Kernel Transformer: Multi-Scale Attention with an Information-Theoretic Approximation Analysis Spectral Geometry of LoRA Adapters Encodes Training Objective and Predicts Harmful Compliance Finite-Sample Analysis of Nonlinear Independent Component Analysis:Sample Complexity and Identifiability Bounds How does Chain of Thought decompose complex tasks? 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FGAN: Federated Generative Adversarial Networks for Anomaly Detection in Network Traffic
Sankha Das · 2022-03-22 · via cs.LG updates on arXiv.org

Over the last two decades, a lot of work has been done in improving network security, particularly in intrusion detection systems (IDS) and anomaly detection. Machine learning solutions have also been employed in IDSs to detect known and plausible attacks in incoming traffic. Parameters such as packet contents, sender IP and sender port, connection duration, etc. have been previously used to train these machine learning models to learn to differentiate genuine traffic from malicious ones. Generative Adversarial Networks (GANs) have been significantly successful in detecting such anomalies, mostly attributed to the adversarial training of the generator and discriminator in an attempt to bypass each other and in turn increase their own power and accuracy. However, in large networks having a wide variety of traffic at possibly different regions of the network and susceptible to a large number of potential attacks, training these GANs for a particular kind of anomaly may make it oblivious to other anomalies and attacks. In addition, the dataset required to train these models has to be made centrally available and publicly accessible, posing the obvious question of privacy of the communications of the respective participants of the network. The solution proposed in this work aims at tackling the above two issues by using GANs in a federated architecture in networks of such scale and capacity. In such a setting, different users of the network will be able to train and customize a centrally available adversarial model according to their own frequently faced conditions. Simultaneously, the member users of the network will also able to gain from the experiences of the other users in the network.