An improved grid search algorithm to optimize SVR for prediction

Y Sun, S Ding, Z Zhang, W Jia - Soft Computing, 2021 - Springer
Parameter optimization is an important step for support vector regression (SVR), since its
prediction performance greatly depends on values of the related parameters. To solve the …

[LIVRE][B] Robust multivariate analysis

DJ Olive, DJ Olive, Chernyk - 2017 - Springer
Statistics is the science of extracting useful information from data, and a statistical model is
used to provide a useful approximation to some of the important characteristics of the …

A geometric framework for outlier detection in high‐dimensional data

M Herrmann, F Pfisterer… - … Reviews: Data Mining and …, 2023 - Wiley Online Library
Outlier or anomaly detection is an important task in data analysis. We discuss the problem
from a geometrical perspective and provide a framework which exploits the metric structure …

Machine learning for sensor-based manufacturing processes

D Moldovan, T Cioara, I Anghel… - 2017 13th IEEE …, 2017 - ieeexplore.ieee.org
The increasing availability of relevant information, events and constraints in the environment
of the modern factories due to deployment of IoT sensor technologies on the production line …

Automated weighted outlier detection technique for multivariate data

SN Thennadil, M Dewar, C Herdsman, A Nordon… - Control Engineering …, 2018 - Elsevier
In the chemical and petrochemical industries, spectroscopy-based online analysers are
becoming common for process monitoring and control applications. A significant challenge …

Phase I distribution-free analysis of multivariate data

G Capizzi, G Masarotto - Technometrics, 2017 - Taylor & Francis
In this study, a new distribution-free Phase I control chart for retrospectively monitoring
multivariate data is developed. The suggested approach, based on the multivariate signed …

ResNet-AE for radar signal anomaly detection

D Cheng, Y Fan, S Fang, M Wang, H Liu - Sensors, 2022 - mdpi.com
Radar signal anomaly detection is an effective method to detect potential threat targets.
Given the low Accuracy of the traditional AE model and the complex network of GAN, an …

PCA leverage: outlier detection for high-dimensional functional magnetic resonance imaging data

AF Mejia, MB Nebel, A Eloyan, B Caffo… - Biostatistics, 2017 - academic.oup.com
Outlier detection for high-dimensional (HD) data is a popular topic in modern statistical
research. However, one source of HD data that has received relatively little attention is …

Change detection using a texture feature space outlier index from mono-temporal remote sensing images and vector data

D Wei, D Hou, X Zhou, J Chen - Remote Sensing, 2021 - mdpi.com
Multi-temporal remote sensing images are the primary sources for change detection.
However, it is difficult to obtain comparable multi-temporal images at the same season and …

Minimum regularized covariance determinant and principal component analysis-based method for the identification of high leverage points in high dimensional sparse …

S Zahariah, H Midi - Journal of Applied Statistics, 2023 - Taylor & Francis
The main aim of this paper is to propose a novel method (RMD-MRCD-PCA) of identification
of High Leverage Points (HLPs) in high-dimensional sparse data. It is to address the …