使用 LGBM 和 XGBoost 梯度提升技术预测生物医学信号与癫痫发作之间的关系

Q3 Social Sciences
Bhaskar Kapoor, Bharti Nagpal
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引用次数: 0

摘要

背景和目的:近年来,随着人工智能、机器学习和深度学习的迅猛发展,脑机接口技术及相关领域的研究也在飞速发展。方法:然而,从脑电信号中进行有效的特征提取并使用高效的分类器对其进行准确分类仍然是一项重要任务,并在这一领域引起了广泛关注。因此,在本文中,我们对这些方法进行了详细的数学分析,并介绍了基于集合学习的脑电信号分类方法,该方法利用极端梯度提升模型(如光梯度提升机器学习(LGBM)和 XGBoost)对脑电图中的癫痫发作进行分类:从预处理后的脑电图数据集中选择基于时频域的非线性特征,并使用 PCA(主成分分析)进行特征工程的降维处理,然后通过 LGBM 和 XGBoost 这两种集合学习方法对两类分类进行基于特征的优化训练和测试。最后,用德国波恩大学的数据集对这两个模型进行了测试,以对信号进行分类:此外,本文还重点介绍了相关性分析方法,以识别强预测因子和基于相关性的特征工程属性排序,事实证明这种方法在脑电信号分类中更为有效,并提供了与其他现有模型的性能评估比较分析,LBGM 和 XGBoost 的准确率分别为 87.34 和 92.31,灵敏度分别为 85.21 和 90.18,特异性分别为 83.0 和 90.04。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gradient Boosting for Predicting the Relation Between Bio-medical Signals and Seizures Using LGBM and XGBoost
Background and aim: In recent years, research in the fields of brain-computer interfacing techniques and related areas are developing at a very rapid rate with the help of exploding of Artificial Intelligence, Machine Learning and Deep Learning. A new concept of Gradient Boosting has become popular research area among the researchers related to the field of automatic classification of Electroencephalograph (EEG) signals for predication of mental health issues like seizures. Methods: However effective feature extraction from EEG and accurately classify them with efficient classifiers is still an important task and attracted wide attention in this area. Therefore in this paper, we presented the detailed mathematical analysis of these methods and ensemble learnings based EEG signals classification method for seizures classification in EEG using Extreme Gradient Boosting Model such as Light Gradient Boosting Machine Learning (LGBM) and XGBoost. Results: Time-frequency domain based non-linear features are selected from preprocessed EEG Dataset, and PCA (Principal Component Analysis) is used for dimensionality reduction for features engineering, then optimized feature based training and testing is done for two class classification in ensemble learning method i.e. LGBM and XGBoost. Finally, both models are tested with dataset of University of Bonn, Germany to classify the signals. Conclusions: In addition this paper highlights the Correlation Analysis Methodology to Identify Strong Predictor and Attributes Correlation-based Attribute Ranking for the Feature Engineering which has proved to be more efficient in EEG signals Classification and provide comparative analysis with other existing models for performance evaluation in terms of accuracy which is 87.34 and 92.31 for LBGM and XGBoost, sensitivity of 85.21 and 90.18 and specificity of 83.0 and 90.04 for LBGM and XGBoost.
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来源期刊
Journal of Mobile Multimedia
Journal of Mobile Multimedia Social Sciences-Communication
CiteScore
1.90
自引率
0.00%
发文量
80
期刊介绍: The scope of the journal will be to address innovation and entrepreneurship aspects in the ICT sector. Edge technologies and advances in ICT that can result in disruptive concepts of major impact will be the major focus of the journal issues. Furthermore, novel processes for continuous innovation that can maintain a disruptive concept at the top level in the highly competitive ICT environment will be published. New practices for lean startup innovation, pivoting methods, evaluation and assessment of concepts will be published. The aim of the journal is to focus on the scientific part of the ICT innovation and highlight the research excellence that can differentiate a startup initiative from the competition.
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