CloudMamba combines uncertainty-guided refinement with a dual-scale Mamba network to outperform prior methods on cloud segmentation accuracy while maintaining linear computational cost.
Support-vector networks
3 Pith papers cite this work. Polarity classification is still indexing.
years
2026 3verdicts
UNVERDICTED 3representative citing papers
Ensemble of three binary DNNs classifies network flows as benign, DoS or DDoS at 99.84% and 95.30% accuracy on CICIDS2018 and UNSW-NB15, paired with RAG to generate mitigation reports that outperform vanilla LLM outputs.
A data-driven pipeline reduces EIS measurements by 99% and achieves 80% accuracy with AUC 0.90 for healthy vs. cancer classification plus AUCs above 0.82 in multi-class oral lesion tasks using leave-one-patient-group-out validation.
citing papers explorer
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CloudMamba: An Uncertainty-Guided Dual-Scale Mamba Network for Cloud Detection in Remote Sensing Imagery
CloudMamba combines uncertainty-guided refinement with a dual-scale Mamba network to outperform prior methods on cloud segmentation accuracy while maintaining linear computational cost.
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From Detection to Response: A Deep Learning and Retrieval-Augmented Generation Framework for Network Intrusion Mitigation
Ensemble of three binary DNNs classifies network flows as benign, DoS or DDoS at 99.84% and 95.30% accuracy on CICIDS2018 and UNSW-NB15, paired with RAG to generate mitigation reports that outperform vanilla LLM outputs.
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Optimizing In Vivo Oral Lesion Classification from Electrical Impedance Spectroscopy Using Data-driven Approaches
A data-driven pipeline reduces EIS measurements by 99% and achieves 80% accuracy with AUC 0.90 for healthy vs. cancer classification plus AUCs above 0.82 in multi-class oral lesion tasks using leave-one-patient-group-out validation.