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Goethite Quantum Dots as Multifunctional Additives for Highly Efficient and Stable Perovskite Solar Cells

DOI:10.1002/smll.201904372 期刊:Small 出版年份:2019 更新时间:2025-09-19 17:13:59
摘要: The “curse of dimensionality” is one of the largest problems that influences the quality of the optimization process in most data mining, pattern recognition, and machine learning tasks. Using high-dimensional datasets to train a classification model may reduce the generalization performance of the learned model. In addition, high dimensionality of the dataset results in high computational and memory costs. Feature selection is an important data preprocessing approach in many practical application domains that are relevant to expert and intelligent systems. Feature selection aims at selecting a subset of informative and relevant features from an original feature dataset. Therefore, using a feature selection approach to process the original data prior to the learning process is essential for enhancing the performance on the classification task. In this paper, hybrid particle swarm optimization with a spiral-shaped mechanism (HPSO-SSM) is proposed for selecting the optimal feature subset for classification via a wrapper-based approach. In HPSO-SSM, we make three improvements: First, a logistic map sequence is used to enhance the diversity in the search process. Second, two new parameters are introduced into the original position update formula, which can effectively improve the position quality of the next generation. Finally, a spiral-shaped mechanism is adopted as a local search operator around the known optimal solution region. For a complete evaluation, the proposed HPSO-SSM method is compared with six state-of-the-art meta-heuristic optimization algorithms, ten well-known wrapper-based feature selection techniques, and six classic filter-based feature selection methods. Various assessment indicators are used to properly evaluate and compare the performances of these approaches on twenty classic benchmark classification datasets from the UCI machine learning repository. According to the experimental results and statistical tests, the developed methods effectively and efficiently improve the classification accuracy compared with other wrapper-based approaches and filter-based approaches. The results demonstrate the high performance of the HPSO-SSM method in searching the feasible feature space and selecting the most informative attributes for solving classification problems. Therefore, the HPSO-SSM method has broad application prospects as a new feature selection approach.
作者: Ke Chen,Feng-Yu Zhou,Xian-Feng Yuan
AI智能分析
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研究概述 实验方案

The main objective of this paper is to develop an innovative PSO-based feature selection technique for identifying fewer features that yield similar or higher classification accuracy than all features or features that are selected via other feature selection approaches.

The proposed HPSO-SSM approach can be effectively and successfully used to perform feature selection tasks, selecting fewer features and realizing higher classification accuracy compared to using all available features and other state-of-the-art feature selection approaches. The HPSO-SSM method has broad application prospects as a new feature selection approach.

The main limitation of the proposed method is that the number of selected features is large for many datasets, indicating the need to strengthen the ability of the proposed approach to remove redundant and irrelevant features.

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