EASTER: Embedding Aggregation-based Heterogeneous Models Training in Vertical Federated Learning
Shuo Wang, Keke Gai, Jing Yu, Liehuang Zhu, Kim-Kwang Raymond Choo, Bin Xiao

TL;DR
This paper introduces VFedMH, a novel vertical federated learning approach that enables training multiple heterogeneous models collaboratively while protecting local embeddings, improving convergence and model performance.
Contribution
VFedMH is the first method to aggregate local embeddings in VFL for heterogeneous models with embedding protection and gradient assistance.
Findings
VFedMH effectively trains multiple heterogeneous models simultaneously.
The method outperforms recent VFL approaches in model accuracy.
Embedding protection maintains privacy during training.
Abstract
Vertical federated learning has garnered significant attention as it allows clients to train machine learning models collaboratively without sharing local data, which protects the client's local private data. However, existing VFL methods face challenges when dealing with heterogeneous local models among participants, which affects optimization convergence and generalization. To address this challenge, this paper proposes a novel approach called Vertical federated learning for training multiple Heterogeneous models (VFedMH). VFedMH focuses on aggregating the local embeddings of each participant's knowledge during forward propagation. To protect the participants' local embedding values, we propose an embedding protection method based on lightweight blinding factors. In particular, participants obtain local embedding using local heterogeneous models. Then the passive party, who owns only…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
