6 matches found
Explainable Machine Learning for Phishing Detection on Heterogeneous Datasets with MCP-Enabled Deployment
With the growth in digital transformation and Internet usage, the Social Engineering techniques such as Phishing have become a major concern for the users and the organizations. Phishing attacks involve deceptive techniques to trick users into revealing confidential information that causes...
AI Native Asset Intelligence
Modern security environments generate fragmented signals across cloud resources, identities, configurations, and third-party security tools. Although AI-native security assistants improve access to this data, they remain largely reactive: users must ask the right questions and interpret...
Coward: toward Practical Proactive Federated Backdoor Defense Via Collision-Based Watermark
Backdoor detection is currently the mainstream defense against backdoor attacks in federated learning FL, where malicious clients upload poisoned updates that compromise the global model and undermine the reliability of FL deployments. Existing backdoor detection techniques fall into two...
A Distributed Generative AI Approach for Heterogeneous Multi-Domain Environments under Data Sharing Constraints
Federated Learning has gained increasing attention for its ability to enable multiple nodes to collaboratively train machine learning models without sharing their raw data. At the same time, Generative AI -- particularly Generative Adversarial Networks GANs -- have achieved remarkable success...
Graph Privacy: a Heterogeneous Federated GNN for Trans-Border Financial Data Circulation
The sharing of external data has become a strong demand of financial institutions, but the privacy issue has led to the difficulty of interconnecting different platforms and the low degree of data openness. To effectively solve the privacy problem of financial data in trans-border flow and sharin...
[SECURITY] Fedora 34 Update: python-rencode-1.0.6-17.fc34
The rencode module is a modified version of bencode from the BitTorrent project. For complex, heterogeneous data structures with many small elements, r-encodings take up significantly less space than b-encodings...