Paper 2025/2188

ALIOTH: An Efficient and Secure Weight-of-Evidence Framework for Privacy-Preserving Data Processing

Ye Dong, National University of Singapore
Xiangfu Song, Nanyang Technological University
W.j Lu, Independent Researcher
Xudong Chen, Institute of Information Engineering, CAS
Yaxi Yang, Nanyang Technological University
Ruonan Chen, Xidian University
Tianwei Zhang, Nanyang Technological University
Jin-Song Dong, National University of Singapore
Abstract

Secure two-party computation (2PC)-based privacy-preserving machine learning (ML) has made remarkable progress in recent years. However, most existing works overlook the privacy challenges that arise during the data preprocessing stage. Although some recent studies have introduced efficient techniques for privacy-preserving feature selection and data alignment on well-structured datasets, they still fail to address the privacy risks involved in transforming raw data features into ML-effective numerical representations. In this work, we present ALIOTH, an efficient 2PC framework that securely transforms raw categorical and numerical features into Weight-of-Evidence (WoE)-based numerical representations under both vertical and horizontal data partitions. By incorporating our proposed partition-aware 2PC protocols and vectorization optimizations, ALIOTH efficiently generates WoE-transformed datasets in secret. To demonstrate scalability, we conduct experiments on diverse datasets. Notably, ALIOTH can transform 3 million data samples with 100 features securely within half an hour over a wide-area network. Furthermore, ALIOTH can be seamlessly integrated with existing 2PC-based ML frameworks. Empirical evaluations on real-world financial datasets show ALIOTH improves both the predictive performance of logistic regression and 2PC training efficiency.

Metadata
Available format(s)
PDF
Category
Applications
Publication info
Preprint.
Keywords
Secure Two-Party ComputatuionPrivacy-PreservingWeight-of-EvidenceMachine Learning
Contact author(s)
dongye @ nus edu sg
xiangfu song @ ntu edu sg
fionser @ gmail com
chenxudong @ iie ac cn
yaxi yang @ ntu edu sg
chenruonan @ xidian edu cn
tianwei zhang @ ntu edu sg
dcsdjs @ nus edu sg
History
2025-12-04: approved
2025-12-02: received
See all versions
Short URL
https://ia.cr/2025/2188
License
Creative Commons Attribution-NonCommercial-NoDerivs
CC BY-NC-ND

BibTeX

@misc{cryptoeprint:2025/2188,
      author = {Ye Dong and Xiangfu Song and W.j Lu and Xudong Chen and Yaxi Yang and Ruonan Chen and Tianwei Zhang and Jin-Song Dong},
      title = {{ALIOTH}: An Efficient and Secure Weight-of-Evidence Framework for Privacy-Preserving Data Processing},
      howpublished = {Cryptology {ePrint} Archive, Paper 2025/2188},
      year = {2025},
      url = {https://eprint.iacr.org/2025/2188}
}
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