The paper addresses the limitations of traditional segmentation approaches in IoT-based activity recognition systems. It identifies two families of uncontrollable biases introduced by the segmentation process: 1) changes made to the initial problem space, and 2) the fixation of the segmentation method and its parameters.
To address these biases, the authors redefine the segmentation problem as a data decomposition problem, which includes three key components: a decomposer, resolutions, and a composer. The composer task transforms the results of the resolutions (ML models) back to the global problem space, allowing for a better evaluation of the impact of the segmentation biases.
The authors then propose a novel meta-decomposition or learning-to-decompose approach, which learns how to decompose the original task (recognizing activities from long data) into smaller sub-tasks. This allows the segmentation method and its hyperparameters to be treated as hyperparameters that are optimized by the outer learning problem, reducing the segmentation biases and improving the overall system performance.
The experiments are conducted on four real-world IoT datasets, demonstrating the effectiveness of the meta-decomposition approach in dynamically selecting the appropriate segmentation method and its hyperparameters, outperforming the individual segmentation methods with their best hyperparameters.
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by Seyed M.R. M... às arxiv.org 04-19-2024
https://arxiv.org/pdf/2404.11742.pdfPerguntas Mais Profundas