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 …
energy management, and distributed energy integration poses new requirements for …
A novel study on machine learning algorithm‐based cardiovascular disease prediction
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 …
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 …
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 …
Various techniques have been utilized to preserve the privacy of random forests from …
Probonite: Private one-branch-only non-interactive decision tree evaluation
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 …
classification, in particular due to their interpretability that makes it easy to explain their …
Privacy-preserving tree-based inference with fully homomorphic encryption
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 …
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
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 …
CKKS homomorphic encryption (HE) in cloud environments, enhancing data privacy from …
Achievable CCA2 relaxation for homomorphic encryption
Homomorphic encryption (HE) protects data in-use, but can be computationally expensive.
To avoid the costly bootstrapping procedure that refreshes ciphertexts, some works have …
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 …
data due to its ability to detect abstract underlying patterns in data. Its practical applications …
Privacy-preserving outsourcing decision tree evaluation from homomorphic encryption
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 …
prediction based on a tree structure. In real-world scenarios, input attribute values may be …