Federated learning can achieve comparable performance to centralized training for cyber threat detection tasks like SMS spam detection and Android malware detection, while being resilient to practical adversarial attacks and efficient in realistic non-IID data distribution scenarios.
A machine learning-based model is developed to predict individuals who may be victims of cyber attacks by analyzing socioeconomic factors. Key risk factors are identified through association rule mining.