A dynamic over-sampling procedure based on sensitivity for multi-class problems
Classification with imbalanced datasets supposes a new challenge for researches in the
framework of machine learning. This problem appears when the number of patterns that …
framework of machine learning. This problem appears when the number of patterns that …
Sensitivity versus accuracy in multiclass problems using memetic pareto evolutionary neural networks
This paper proposes a multiclassification algorithm using multilayer perceptron neural
network models. It tries to boost two conflicting main objectives of multiclassifiers: a high …
network models. It tries to boost two conflicting main objectives of multiclassifiers: a high …
Efficient Out-of-Distribution Detection Using Latent Space of β-VAE for Cyber-Physical Systems
Deep Neural Networks are actively being used in the design of autonomous Cyber-Physical
Systems (CPSs). The advantage of these models is their ability to handle high-dimensional …
Systems (CPSs). The advantage of these models is their ability to handle high-dimensional …
A multi-objective neural network based method for cover crop identification from remote sensed data
One of the objectives of conservation agriculture to reduce soil erosion in olive orchards is to
protect the soil with cover crops between rows. Andalusian and European administrations …
protect the soil with cover crops between rows. Andalusian and European administrations …
Weighting efficient accuracy and minimum sensitivity for evolving multi-class classifiers
Recently, a multi-objective Sensitivity–Accuracy based methodology has been proposed for
building classifiers for multi-class problems. This technique is especially suitable for …
building classifiers for multi-class problems. This technique is especially suitable for …
Determination of relative agrarian technical efficiency by a dynamic over-sampling procedure guided by minimum sensitivity
In this paper, a dynamic over-sampling procedure is proposed to improve the classification
of imbalanced datasets with more than two classes. This procedure is incorporated into a …
of imbalanced datasets with more than two classes. This procedure is incorporated into a …
[PDF][PDF] Evaluating the performance of evolutionary extreme learning machines by a combination of sensitivity and accuracy measures
Accuracy alone can be deceptive when evaluating the performance of a classifier, especially
if the problem involves a high number of classes. This paper proposes an approach used for …
if the problem involves a high number of classes. This paper proposes an approach used for …
Dynamic Safety Assurance of Autonomous Cyber-Physical Systems
S Ramakrishna - 2022 - search.proquest.com
Abstract Cyber-Physical Systems (CPSs) are ubiquitous through our interactions with
applications such as smart homes, medical devices, avionics, and automobiles. However …
applications such as smart homes, medical devices, avionics, and automobiles. However …
A two-stage evolutionary algorithm based on sensitivity and accuracy for multi-class problems
The machine learning community has traditionally used correct classification rates or
accuracy (C) values to measure classifier performance and has generally avoided …
accuracy (C) values to measure classifier performance and has generally avoided …
Using Multivariate Analysis within the Vertebral Column to Identify Individual Vertebrae.
JA Minetz, SD Ousley… - … (University of Florida), 2024 - search.ebscohost.com
This article demonstrates the utility of a multivariate analysis of vertebrae in an applied
context. The human vertebral column is a morphologically complex group of elements …
context. The human vertebral column is a morphologically complex group of elements …