Publication:
SplitOut: out-of-the-box training-hijacking detection in split learning via outlier detection

Placeholder

Departments

School / College / Institute

Program

KU Authors

Co-Authors

Erdogan, Ege
Teksen, Unat
Celiktenyildiz, M. Salih
Kupcu, Alptekin
Cicek, A. Erciment

Publication Date

Language

Embargo Status

Journal Title

Journal ISSN

Volume Title

Alternative Title

Abstract

Split learning enables efficient and privacy-aware training of a deep neural network by splitting a neural network so that the clients (data holders) compute the first layers and only share the intermediate output with the central compute-heavy server. This paradigm introduces a new attack medium in which the server has full control over what the client models learn, which has already been exploited to infer the private data of clients and to implement backdoors in the client models. Although previous work has shown that clients can successfully detect such training-hijacking attacks, the proposed methods rely on heuristics, require tuning of many hyperparameters, and do not fully utilize the clients' capabilities. In this work, we show that given modest assumptions regarding the clients' compute capabilities, an out-of-the-box outlier detection method can be used to detect existing training-hijacking attacks with almost-zero false positive rates. We conclude through experiments on different tasks that the simplicity of our approach we name SplitOut makes it a more viable and reliable alternative compared to the earlier detection methods.

Source

Publisher

Springer-Verlag Singapore Pte Ltd

Subject

Computer science

Citation

Has Part

Source

CRYPTOLOGY AND NETWORK SECURITY, PT II, CANS 2024

Book Series Title

Edition

DOI

10.1007/978-981-97-8016-7_6

item.page.datauri

Link

Rights

Copyrights Note

Endorsement

Review

Supplemented By

Referenced By

0

Views

0

Downloads

View PlumX Details