Review of swarm intelligence-based feature selection methods
In the past decades, the rapid growth of computer and database technologies has led to the
rapid growth of large-scale datasets. On the other hand, data mining applications with high …
rapid growth of large-scale datasets. On the other hand, data mining applications with high …
Gravitational search algorithm: Theory, literature review, and applications
A Hashemi, MB Dowlatshahi… - Handbook of AI-based …, 2021 - taylorfrancis.com
Today, many metaheuristics algorithms have been developed are inspired by the physical
phenomena or behaviors of natural creatures that are very effective in solving complex …
phenomena or behaviors of natural creatures that are very effective in solving complex …
SemiACO: A semi-supervised feature selection based on ant colony optimization
Feature selection is one of the most efficient procedures for reducing the dimensionality of
high-dimensional data by choosing a practical subset of features. Since labeled samples are …
high-dimensional data by choosing a practical subset of features. Since labeled samples are …
Multiclass skin lesion localization and classification using deep learning based features fusion and selection framework for smart healthcare
S Maqsood, R Damaševičius - Neural networks, 2023 - Elsevier
Background: The idea of smart healthcare has gradually gained attention as a result of the
information technology industry's rapid development. Smart healthcare uses next-generation …
information technology industry's rapid development. Smart healthcare uses next-generation …
MLACO: A multi-label feature selection algorithm based on ant colony optimization
M Paniri, MB Dowlatshahi… - Knowledge-Based Systems, 2020 - Elsevier
Nowadays, with emerge the multi-label datasets, the multi-label learning processes attracted
interest and increasingly applied to different fields. In such learning processes, unlike single …
interest and increasingly applied to different fields. In such learning processes, unlike single …
Group-preserving label-specific feature selection for multi-label learning
In many real-world application domains, eg, text categorization and image annotation,
objects naturally belong to more than one class label, giving rise to the multi-label learning …
objects naturally belong to more than one class label, giving rise to the multi-label learning …
Noise-resistant multilabel fuzzy neighborhood rough sets for feature subset selection
Feature selection attempts to capture the more discriminative features and plays a significant
role in multilabel learning. As an efficient mathematical tool to handle incomplete and …
role in multilabel learning. As an efficient mathematical tool to handle incomplete and …
Ensemble of feature selection algorithms: a multi-criteria decision-making approach
A Hashemi, MB Dowlatshahi… - International Journal of …, 2022 - Springer
For the first time, the ensemble feature selection is modeled as a Multi-Criteria Decision-
Making (MCDM) process in this paper. For this purpose, we used the VIKOR method as a …
Making (MCDM) process in this paper. For this purpose, we used the VIKOR method as a …
Exploiting feature multi-correlations for multilabel feature selection in robust multi-neighborhood fuzzy β covering space
Multilabel data contains rich label semantic information, and its data structure conforms to
the cognitive laws of the actual world. However, these data usually involve many irrelevant …
the cognitive laws of the actual world. However, these data usually involve many irrelevant …
Ant-TD: Ant colony optimization plus temporal difference reinforcement learning for multi-label feature selection
M Paniri, MB Dowlatshahi… - Swarm and Evolutionary …, 2021 - Elsevier
In recent years, multi-label learning becomes a trending topic in machine learning and data
mining. This type of learning deals with data that each instance is associated with more than …
mining. This type of learning deals with data that each instance is associated with more than …