Applications of artificial intelligence algorithms in the energy sector

H Szczepaniuk, EK Szczepaniuk - Energies, 2022 - mdpi.com
The digital transformation of the energy sector toward the Smart Grid paradigm, intelligent
energy management, and distributed energy integration poses new requirements for …

A novel study on machine learning algorithm‐based cardiovascular disease prediction

A Khan, M Qureshi, M Daniyal… - Health & Social Care in …, 2023 - Wiley Online Library
Cardiovascular disease (CVD) is a life‐threatening disease rising considerably in the world.
Early detection and prediction of CVD as well as other heart diseases might protect many …

Level up: Private non-interactive decision tree evaluation using levelled homomorphic encryption

R Akhavan Mahdavi, H Ni, D Linkov… - Proceedings of the 2023 …, 2023 - dl.acm.org
As machine learning as a service continues gaining popularity, concerns about privacy and
intellectual property arise. Users often hesitate to disclose their private information to obtain …

On the Gini-impurity preservation for privacy random forests

XR Xie, MJ Yuan, X Bai, W Gao… - Advances in Neural …, 2024 - proceedings.neurips.cc
Random forests have been one successful ensemble algorithms in machine learning.
Various techniques have been utilized to preserve the privacy of random forests from …

Probonite: Private one-branch-only non-interactive decision tree evaluation

S Azogagh, V Delfour, S Gambs… - Proceedings of the 10th …, 2022 - dl.acm.org
Decision trees are among the most widespread machine learning models used for data
classification, in particular due to their interpretability that makes it easy to explain their …

Privacy-preserving tree-based inference with fully homomorphic encryption

J Frery, A Stoian, R Bredehoft, L Montero… - Cryptology ePrint …, 2023 - eprint.iacr.org
Privacy enhancing technologies (PETs) have been proposed as a way to protect the privacy
of data while still allowing for data analysis. In this work, we focus on Fully Homomorphic …

Fully homomorphic training and inference on binary decision tree and random forest

H Shin, J Choi, D Lee, K Kim, Y Lee - European Symposium on Research …, 2024 - Springer
This paper introduces a new method for training decision trees and random forests using
CKKS homomorphic encryption (HE) in cloud environments, enhancing data privacy from …

Achievable CCA2 relaxation for homomorphic encryption

A Akavia, C Gentry, S Halevi, M Vald - Journal of Cryptology, 2025 - Springer
Homomorphic encryption (HE) protects data in-use, but can be computationally expensive.
To avoid the costly bootstrapping procedure that refreshes ciphertexts, some works have …

Efficient optimisation framework for convolutional neural networks with secure multiparty computation

C Berry, N Komninos - Computers & Security, 2022 - Elsevier
In recent years, deep learning has become an increasingly popular approach to modelling
data due to its ability to detect abstract underlying patterns in data. Its practical applications …

Privacy-preserving outsourcing decision tree evaluation from homomorphic encryption

K Xu, BHM Tan, LP Wang, KMM Aung… - Journal of Information …, 2023 - Elsevier
A decision tree is a common algorithm in machine learning, which performs classification
prediction based on a tree structure. In real-world scenarios, input attribute values may be …