Role of Mixup in Topological Persistence Based Knowledge Distillation for Wearable Sensor Data
Eun Som Jeon, Hongjun Choi, Matthew P. Buman, Pavan Turaga

TL;DR
This paper investigates how mixup augmentation influences topological knowledge distillation for wearable sensor data, aiming to improve model efficiency and performance by combining topological data analysis with advanced training techniques.
Contribution
It introduces an analysis of the role of mixup in topological knowledge distillation, integrating multiple teachers and topological features for wearable sensor data.
Findings
Mixup enhances the performance of knowledge distillation models.
Topological features can be effectively transferred via multiple teachers.
Mixup contributes to more robust and efficient model training.
Abstract
The analysis of wearable sensor data has enabled many successes in several applications. To represent the high-sampling rate time-series with sufficient detail, the use of topological data analysis (TDA) has been considered, and it is found that TDA can complement other time-series features. Nonetheless, due to the large time consumption and high computational resource requirements of extracting topological features through TDA, it is difficult to deploy topological knowledge in various applications. To tackle this problem, knowledge distillation (KD) can be adopted, which is a technique facilitating model compression and transfer learning to generate a smaller model by transferring knowledge from a larger network. By leveraging multiple teachers in KD, both time-series and topological features can be transferred, and finally, a superior student using only time-series data is distilled.…
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Taxonomy
MethodsMixup · Knowledge Distillation
