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Conference Paper An Augmentation-agnostic Semantic Preserving Technique for Data Generation
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Authors
Jang-Ho Choi, Moonyoung Chung, Jiyong Kim
Issue Date
2023-12
Citation
International Conference on Big Data (Big Data) 2023, pp.6119-6121
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/BigData59044.2023.10386610
Abstract
Data generation is becoming an increasingly important issue in the field of machine learning due to the high cost of data collection and the privacy concerns associated with raw data. Generating new data with high fidelity is extremely challenging because even a minor perturbation in high-dimensional data may alter its semantic meaning. The challenge becomes particularly acute in multivariate time-series data as it often exhibits human-imperceptible temporal patterns and lacks standard representation. To address this issue, we propose a straightforward yet effective technique that helps preserve the fidelity of the original data. Experimental results demonstrate that our technique enhances the performance of time-series forecasting model.
KSP Keywords
Data Collection, Data generation, Forecasting model, High fidelity, High-dimensional data, Multivariate time series, Privacy concerns, Raw Data, Temporal patterns, Time series data, Time-series forecasting