多时间点模式分析(MTPA):利用神经时间序列数据改进分类。

Bear M Goldstein, Agnieszka Pluta, Grace Q Miao, Ashley L Binnquist, Matthew D Lieberman
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引用次数: 0

摘要

长,自然的刺激是有效的唤起有意义的不同组之间的神经反应模式。然而,与有限的样本量相比,得到的时间序列数据通常具有大量的特征,这增加了过拟合的可能性,降低了预测能力。本文介绍了多时间点模式分析(MTPA)作为一种时间降维方法,用于建立具有长神经时间序列数据的模型时提高预测精度。使用弹性网络回归的特征选择,MTPA识别预测神经模式,同时保留数据的时间结构和可解释性。在两个不同人群和目标的实验中,MTPA比使用主成分分析、窗口平均和无降维的方法表现出一致的优势。实验1预测商务人士持续的工作心理状态,准确率高达79.1%。实验2预测大学生观看视频时的认知负荷和叙事语境,准确率高达66.5%。这些发现表明,MTPA可能是分析来自扩展自然设计的神经数据的有用工具,使研究人员能够提高不同结果的预测准确性,并获得对神经反应时间动态的新见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-timepoint pattern analysis (MTPA): Improving classification with neural timeseries data.

Long, naturalistic stimuli are effective in evoking meaningfully differential neural response patterns between groups. However, the resulting timeseries data often have a high number of features compared to a limited sample size, increasing the likelihood of overfitting and reducing predictive power. This paper introduces multi-timepoint pattern analysis (MTPA) as a temporal dimension reduction approach for improving prediction accuracy when building models with long neural timeseries data. Using feature selection with elastic net regression, MTPA identifies predictive neural patterns while preserving the temporal structure and interpretability of the data. Across two experiments with distinct populations and objectives, MTPA demonstrated consistent advantages over approaches using principal component analysis, windowed averaging, and no dimension reduction. Experiment 1 predicted persistent work-related psychological states in business professionals, achieving accuracies up to 79.1%. Experiment 2 predicted cognitive load and narrative context during video viewing in undergraduates, with accuracies up to 66.5%. These findings suggest that MTPA may be a useful tool for analyzing neural data from extended naturalistic designs, enabling researchers to improve prediction accuracy across diverse outcomes and obtain new insights into the temporal dynamics of neural responses.

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