迁移学习在神经时间序列分类中的应用研究

D. Kearney, S. McLoone, Tomas E. Ward
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引用次数: 2

摘要

目前EEG时间序列分类的方法在很大程度上依赖于特征工程来支持基于广义线性模型、决策树、神经网络或其他机器学习技术的分类器的训练。这种特征工程要求具有相当的数学、数字信号处理、统计学、线性代数等方面的能力。生成这些时间序列的研究人员通常具有临床背景,可能无法手工设计和提取这些特征。然而,他们可能熟悉基本的数据可视化方法。本文的目的是研究将迁移学习应用于这样的分类问题是否可以促进用直接的数据可视化取代复杂的特征工程。虽然实现了超过80%的分类精度,但训练后的神经网络表现出过拟合的特征。我们建议采用替代的数据可视化技术和对迁移学习方法的修改,这可能会对多通道神经时间序列数据产生更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the Application of Transfer Learning to Neural Time Series Classification
Current approaches to EEG time series classification depend heavily on feature engineering to support the training of classifiers based on generalized linear models, decision trees, neural networks, or other machine learning techniques. This feature engineering demands considerable competence in mathematics, digital signal processing, statistics, linear algebra, etc. Researchers generating these time series often have clinical backgrounds, and may not be in a position to design and extract these features by hand. However, they are likely to be familiar with rudimentary - but fundamental - data visualisation methods. The objective of this paper is to investigate whether the application of transfer learning to such a classification problem can facilitate the replacement of involved feature engineering with straightforward data visualisation. While a classification accuracy of over 80% is achieved, the trained neural network exhibits the hallmarks of overfitting. We suggest alternative data visualisation techniques and modifications to the transfer learning method employed that may yield better results for multichannel neural time series data.
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