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Enhanced Feature Engineering Symmetry Model Based on Novel Dolphin Swarm Algorithm
by
Gao, Fei
, Abisado, Mideth
in
Ablation
/ Accuracy
/ Algorithms
/ Analysis
/ Automation
/ Civil engineering
/ Datasets
/ Efficiency
/ Ensemble learning
/ Feature selection
/ Goodness of fit
/ Machine learning
/ Marine mammals
/ Methods
/ Optimization algorithms
/ Optimization techniques
/ Parameter robustness
/ Parameter sensitivity
/ Portfolio management
/ Rank tests
/ Redundancy
/ Regression analysis
/ Statistical analysis
/ Symmetry
/ Technological change
/ Time series
2025
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Enhanced Feature Engineering Symmetry Model Based on Novel Dolphin Swarm Algorithm
by
Gao, Fei
, Abisado, Mideth
in
Ablation
/ Accuracy
/ Algorithms
/ Analysis
/ Automation
/ Civil engineering
/ Datasets
/ Efficiency
/ Ensemble learning
/ Feature selection
/ Goodness of fit
/ Machine learning
/ Marine mammals
/ Methods
/ Optimization algorithms
/ Optimization techniques
/ Parameter robustness
/ Parameter sensitivity
/ Portfolio management
/ Rank tests
/ Redundancy
/ Regression analysis
/ Statistical analysis
/ Symmetry
/ Technological change
/ Time series
2025
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Do you wish to request the book?
Enhanced Feature Engineering Symmetry Model Based on Novel Dolphin Swarm Algorithm
by
Gao, Fei
, Abisado, Mideth
in
Ablation
/ Accuracy
/ Algorithms
/ Analysis
/ Automation
/ Civil engineering
/ Datasets
/ Efficiency
/ Ensemble learning
/ Feature selection
/ Goodness of fit
/ Machine learning
/ Marine mammals
/ Methods
/ Optimization algorithms
/ Optimization techniques
/ Parameter robustness
/ Parameter sensitivity
/ Portfolio management
/ Rank tests
/ Redundancy
/ Regression analysis
/ Statistical analysis
/ Symmetry
/ Technological change
/ Time series
2025
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Enhanced Feature Engineering Symmetry Model Based on Novel Dolphin Swarm Algorithm
Journal Article
Enhanced Feature Engineering Symmetry Model Based on Novel Dolphin Swarm Algorithm
2025
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Overview
This study addresses the challenges of high-dimensional data, such as the curse of dimensionality and feature redundancy, which can be viewed as an inherent asymmetry in the data space. To restore a balanced symmetry and build a more complete feature representation, we propose an enhanced feature engineering model (EFEM) that employs a novel dual-strategy approach. First, we present a symmetrical feature selection algorithm that combines an improved Dolphin Swarm Algorithm (DSA) with the Maximum Relevance–Minimum Redundancy (mRMR) criterion. This method not only selects an optimal, high-relevance feature subset, but also identifies the remaining features as a complementary, redundant subset. Second, an ensemble learning-based feature reconstruction algorithm is introduced to mine potential information from these redundant features. This process transforms fragmented, redundant information into a new, synthetic feature, thereby establishing a form of information symmetry with the selected optimal subset. Finally, the EFEM constructs a high-performance feature space by symmetrically integrating the optimal feature subset with the synthetic feature. The model’s superior performance is extensively validated on nine standard UCI regression datasets, with comparative analysis showing that it significantly outperforms similar algorithms and achieves an average goodness-of-fit of 0.9263. The statistical significance of this improvement is confirmed by the Wilcoxon signed-rank test. Comprehensive analyses of parameter sensitivity, robustness, convergence, and runtime, as well as ablation experiments, further validate the efficiency and stability of the proposed algorithm. The successful application of the EFEM in a real-world product demand forecasting task fully demonstrates its practical value in complex scenarios.
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