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Highly Efficient Direct Analytics on Semantic-aware Time Series Data Compression

17 March 2025
Guoyou Sun
Panagiotis Karras
Qi Zhang
ArXiv (abs)PDFHTML
Main:5 Pages
9 Figures
Bibliography:1 Pages
1 Tables
Abstract

Semantic communication has emerged as a promising paradigm to tackle the challenges of massive growing data traffic and sustainable data communication. It shifts the focus from data fidelity to goal-oriented or task-oriented semantic transmission. While deep learning-based methods are commonly used for semantic encoding and decoding, they struggle with the sequential nature of time series data and high computation cost, particularly in resource-constrained IoT environments. Data compression plays a crucial role in reducing transmission and storage costs, yet traditional data compression methods fall short of the demands of goal-oriented communication systems. In this paper, we propose a novel method for direct analytics on time series data compressed by the SHRINK compression algorithm. Through experimentation using outlier detection as a case study, we show that our method outperforms baselines running on uncompressed data in multiple cases, with merely 1% difference in the worst case. Additionally, it achieves four times lower runtime on average and accesses approximately 10% of the data volume, which enables edge analytics with limited storage and computation power. These results demonstrate that our approach offers reliable, high-speed outlier detection analytics for diverse IoT applications while extracting semantics from time-series data, achieving high compression, and reducing data transmission.

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@article{sun2025_2503.13246,
  title={ Highly Efficient Direct Analytics on Semantic-aware Time Series Data Compression },
  author={ Guoyou Sun and Panagiotis Karras and Qi Zhang },
  journal={arXiv preprint arXiv:2503.13246},
  year={ 2025 }
}
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