TY - GEN
T1 - SecMoE
T2 - 40th AAAI Conference on Artificial Intelligence, AAAI 2026
AU - Shen, Bowen
AU - Chen, Yuyue
AU - Yang, Peng
AU - Zhang, Bin
AU - Zhang, Xi
AU - Jiang, Zoe L.
N1 - Publisher Copyright:
© 2026, Association for the Advancement of Artificial Intelligence. All rights reserved.
PY - 2026
Y1 - 2026
N2 - Privacy-preserving Transformer inference has gained attention due to the potential leakage of private information. Despite recent progress, existing frameworks still fall short of practical model scales, with gaps up to a hundredfold. A possible way to close this gap is the Mixture of Experts (MoE) architecture, which has emerged as a promising technique to scale up model capacity with minimal overhead. However, given that the current secure two-party (2-PC) protocols allow the server to homomorphically compute the FFN layer with its plaintext model weight, under the MoE setting, this could reveal which expert is activated to the server, exposing tokenlevel privacy about the client’s input. While naively evaluating all the experts before selection could protect privacy, it nullifies MoE sparsity and incurs the heavy computational overhead that sparse MoE seeks to avoid. To address the privacy and efficiency limitations above, we propose a 2-PC privacy-preserving inference framework, SecMoE. Unifying per-entry circuits in both the MoE layer and piecewise polynomial functions, SecMoE obliviously selects the extracted parameters from circuits and only computes one encrypted entry, which we refer to as Select-Then-Compute. This makes the model for private inference scale to 63× larger while only having a 15.2× increase in end-to-end runtime. Extensive experiments show that, under 5 expert settings, SecMoE lowers the end-to-end private inference communication by 1.8∼7.1× and achieves 1.3∼3.8× speedup compared to the state-of-the-art (SOTA) protocols.
AB - Privacy-preserving Transformer inference has gained attention due to the potential leakage of private information. Despite recent progress, existing frameworks still fall short of practical model scales, with gaps up to a hundredfold. A possible way to close this gap is the Mixture of Experts (MoE) architecture, which has emerged as a promising technique to scale up model capacity with minimal overhead. However, given that the current secure two-party (2-PC) protocols allow the server to homomorphically compute the FFN layer with its plaintext model weight, under the MoE setting, this could reveal which expert is activated to the server, exposing tokenlevel privacy about the client’s input. While naively evaluating all the experts before selection could protect privacy, it nullifies MoE sparsity and incurs the heavy computational overhead that sparse MoE seeks to avoid. To address the privacy and efficiency limitations above, we propose a 2-PC privacy-preserving inference framework, SecMoE. Unifying per-entry circuits in both the MoE layer and piecewise polynomial functions, SecMoE obliviously selects the extracted parameters from circuits and only computes one encrypted entry, which we refer to as Select-Then-Compute. This makes the model for private inference scale to 63× larger while only having a 15.2× increase in end-to-end runtime. Extensive experiments show that, under 5 expert settings, SecMoE lowers the end-to-end private inference communication by 1.8∼7.1× and achieves 1.3∼3.8× speedup compared to the state-of-the-art (SOTA) protocols.
UR - https://www.scopus.com/pages/publications/105034863551
U2 - 10.1609/aaai.v40i30.39721
DO - 10.1609/aaai.v40i30.39721
M3 - 会议稿件
AN - SCOPUS:105034863551
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
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SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
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SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
T3 - Proceedings of the AAAI Conference on Artificial Intelligence
SP - 25286
EP - 25294
BT - Proceedings of the AAAI Conference on Artificial Intelligence
A2 - Koenig, Sven
A2 - Jenkins, Chad
A2 - Taylor, Matthew E.
PB - Association for the Advancement of Artificial Intelligence
Y2 - 20 January 2026 through 27 January 2026
ER -