Anomaly Detection via Federated Learning

Machine learning has helped advance the field of anomaly detection by incorporating classifiers and autoencoders to decipher between normal and anomalous behavior. Additionally, federated learning has provided a way for a global model to be trained with multiple clients' data without requiring...

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Hauptverfasser: Vucovich, Marc, Tarcar, Amogh, Rebelo, Penjo, Gade, Narendra, Porwal, Ruchi, Rahman, Abdul, Redino, Christopher, Choi, Kevin, Nandakumar, Dhruv, Schiller, Robert, Bowen, Edward, West, Alex, Bhattacharya, Sanmitra, Veeramani, Balaji
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creator Vucovich, Marc
Tarcar, Amogh
Rebelo, Penjo
Gade, Narendra
Porwal, Ruchi
Rahman, Abdul
Redino, Christopher
Choi, Kevin
Nandakumar, Dhruv
Schiller, Robert
Bowen, Edward
West, Alex
Bhattacharya, Sanmitra
Veeramani, Balaji
description Machine learning has helped advance the field of anomaly detection by incorporating classifiers and autoencoders to decipher between normal and anomalous behavior. Additionally, federated learning has provided a way for a global model to be trained with multiple clients' data without requiring the client to directly share their data. This paper proposes a novel anomaly detector via federated learning to detect malicious network activity on a client's server. In our experiments, we use an autoencoder with a classifier in a federated learning framework to determine if the network activity is benign or malicious. By using our novel min-max scalar and sampling technique, called FedSam, we determined federated learning allows the global model to learn from each client's data and, in turn, provide a means for each client to improve their intrusion detection system's defense against cyber-attacks.
doi_str_mv 10.48550/arxiv.2210.06614
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subjects Computer Science - Artificial Intelligence
Computer Science - Cryptography and Security
Computer Science - Learning
title Anomaly Detection via Federated Learning
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