TL;DR
This study investigates how data augmentation strategies affect the effectiveness of knowledge distillation in wearable sensor data classification, revealing dataset-specific impacts and providing general guidelines.
Contribution
First comprehensive analysis of data augmentation choices in knowledge distillation for wearable time-series data, with practical recommendations for diverse datasets.
Findings
Data augmentation impacts vary across datasets
Optimal strategies are dataset-specific
General baseline recommendations are proposed
Abstract
Deep neural networks are parametrized by several thousands or millions of parameters, and have shown tremendous success in many classification problems. However, the large number of parameters makes it difficult to integrate these models into edge devices such as smartphones and wearable devices. To address this problem, knowledge distillation (KD) has been widely employed, that uses a pre-trained high capacity network to train a much smaller network, suitable for edge devices. In this paper, for the first time, we study the applicability and challenges of using KD for time-series data for wearable devices. Successful application of KD requires specific choices of data augmentation methods during training. However, it is not yet known if there exists a coherent strategy for choosing an augmentation approach during KD. In this paper, we report the results of a detailed study that…
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Taxonomy
MethodsKnowledge Distillation
