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Workshop: Learning from Time Series for Health

Empirical Evaluation of Data Augmentations for Biobehavioral Time Series Data with Deep Learning

Huiyuan Yang · Han Yu · Akane Sano


Abstract: Deep learning has performed remarkably well on many tasks recently. However, the superior performance of deep models relies heavily on the availability of a large number of training data, which limits the wide adaptation of deep models on various clinical and affective computing tasks, as the labeled data are usually very limited. As an effective technique to increase the data variability and thus train deep models with better generalization, data augmentation (DA) is a critical step for the success of deep learning models on biobehavioral time series data. However, the effectiveness of various DAs for different datasets with different tasks and deep models is understudied for biobehavioral time series data. In this paper, we first systematically review eight basic DA methods for biobehavioral time series data, and evaluate the effects on seven datasets with three backbones. Next, we explore adapting more recent DA techniques ($\textit{i.e., automatic augmentation, random augmentation}$) to biobehavioral time series data. Last, we try to answer the question of why a DA is effective ($\textit{or not}$) by first summarizing two desired attributes for augmentations ($\textit{challenging}$ and $\textit{faithful}$), and then utilizing two metrics to quantitatively measure the corresponding attributes. We find that an effective DA needs to generate challenging but still faithful transformations, which can guide us in the search for more effective DA for biobehavioral time series data.

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