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Home/Authors/Randeep Bhatia

Randeep Bhatia

1 indexed paper

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Publications per year

1
26

Top categories

ML×1Crypto×1Distributed×1Networking×1

Frequent co-authors

Iason Ofeidis1×
Nikos Papadis1×
Leandros Tassiulas1×
TV Lakshman1×

Research Timeline

2026
CLAD: A Clustered Label-Agnostic Federated Learning Framework for Joint Anomaly Detection and Attack Classification

CLAD is a federated learning framework that jointly performs anomaly detection and attack classification in heterogeneous IoT environments by combining clustered learning with a dual-mode architecture, significantly improving performance with minimal communication overhead.

Highlighted terms show continued research focus across papers

Papers

cs.LGcs.CRcs.DCRecentMay 7, 2026

CLAD: A Clustered Label-Agnostic Federated Learning Framework for Joint Anomaly Detection and Attack Classification

Iason Ofeidis, Nikos Papadis, Randeep Bhatia, Leandros Tassiulas +1 more

CLAD is a federated learning framework that jointly performs anomaly detection and attack classification in heterogeneous IoT environments by combining clustered learning with a dual-mode architecture…

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