Privacy-preserving machine learning: Methods, challenges and directions

R Xu, N Baracaldo, J Joshi - arXiv preprint arXiv:2108.04417, 2021 - arxiv.org
Machine learning (ML) is increasingly being adopted in a wide variety of application
domains. Usually, a well-performing ML model relies on a large volume of training data and …

Privacy-preserving support vector machine training over blockchain-based encrypted IoT data in smart cities

M Shen, X Tang, L Zhu, X Du… - IEEE Internet of Things …, 2019 - ieeexplore.ieee.org
Machine learning (ML) techniques have been widely used in many smart city sectors, where
a huge amount of data is gathered from various (IoT) devices. As a typical ML model …

Sok: General purpose compilers for secure multi-party computation

M Hastings, B Hemenway, D Noble… - … IEEE symposium on …, 2019 - ieeexplore.ieee.org
Secure multi-party computation (MPC) allows a group of mutually distrustful parties to
compute a joint function on their inputs without revealing any information beyond the result …

Differentially private machine learning using a random forest classifier

I Nerurkar, C Hockenbrocht, L Damewood… - US Patent …, 2020 - Google Patents
A request from a client is received to generate a differentially private random forest classifier
trained using a set of restricted data. The differentially private random forest classifier is …

Privacy-preserving distributed linear regression on high-dimensional data

A Gascón, P Schoppmann, B Balle… - Cryptology ePrint …, 2016 - eprint.iacr.org
We propose privacy-preserving protocols for computing linear regression models, in the
setting where the training dataset is vertically distributed among several parties. Our main …

Helen: Maliciously secure coopetitive learning for linear models

W Zheng, RA Popa, JE Gonzalez… - 2019 IEEE symposium …, 2019 - ieeexplore.ieee.org
Many organizations wish to collaboratively train machine learning models on their combined
datasets for a common benefit (eg, better medical research, or fraud detection). However …

Toward characterizing blockchain-based cryptocurrencies for highly accurate predictions

M Saad, J Choi, DH Nyang, J Kim… - IEEE Systems …, 2019 - ieeexplore.ieee.org
Recently, the Blockchain-based cryptocurrency market witnessed enormous growth. Bitcoin,
the leading cryptocurrency, reached all-time highs many times over the year leading to …

Secure quantized training for deep learning

M Keller, K Sun - International Conference on Machine …, 2022 - proceedings.mlr.press
We implement training of neural networks in secure multi-party computation (MPC) using
quantization commonly used in said setting. We are the first to present an MNIST classifier …

The development of large-scale de-identified biomedical databases in the age of genomics—principles and challenges

FK Dankar, A Ptitsyn, SK Dankar - Human genomics, 2018 - Springer
Contemporary biomedical databases include a wide range of information types from various
observational and instrumental sources. Among the most important features that unite …

A privacy-preserving and non-interactive federated learning scheme for regression training with gradient descent

F Wang, H Zhu, R Lu, Y Zheng, H Li - Information Sciences, 2021 - Elsevier
In recent years, the extensive application of machine learning technologies has been
witnessed in various fields. However, in many applications, massive data are distributively …