DeCoP: Dependency Controlled Pre-training for Time Series Representation Learning
Access status:
Open Access
Type
ThesisThesis type
Masters by ResearchAuthor/s
Yueming, WuAbstract
Masked time series modeling (MTM) has become a leading approach in self-supervised pre-training for time series data. However, existing frameworks struggle to effectively model dependencies that balance informative signals and noise, often leading to overfitting or missing critical ...
See moreMasked time series modeling (MTM) has become a leading approach in self-supervised pre-training for time series data. However, existing frameworks struggle to effectively model dependencies that balance informative signals and noise, often leading to overfitting or missing critical temporal dependencies due to non-stationarity and limited semantic context in time series data. To address this, we introduce DeCoP, a Dependency Controlled Pre-training framework that enhances self-supervised time series representation by effectively controlling dependency modeling, while significantly reducing computational cost. DeCoP controllably reduces non-stationary noise and disentangles mixed temporal variations from coarse to fine levels, thereby improving representation clarity. Specifically, DeCoP incorporates Instance-wise Patch Normalization (IPN) for controlled dependency, which reduces noise and stabilizes data distributions, establishing a controlled foundation for dependency modeling. Furthermore, a Hierarchical Dependency Controlled Learning (DCL) strategy is employed to selectively control inter-patch dependency ranges, generating robust, generalizable embeddings that enhance model stability across varying time series patterns. Extensive evaluations on ETTh1 datasets reveal that DeCoP achieves up to a 3% improvement in MSE over PatchTST, using only 37% of the FLOPs required.
See less
See moreMasked time series modeling (MTM) has become a leading approach in self-supervised pre-training for time series data. However, existing frameworks struggle to effectively model dependencies that balance informative signals and noise, often leading to overfitting or missing critical temporal dependencies due to non-stationarity and limited semantic context in time series data. To address this, we introduce DeCoP, a Dependency Controlled Pre-training framework that enhances self-supervised time series representation by effectively controlling dependency modeling, while significantly reducing computational cost. DeCoP controllably reduces non-stationary noise and disentangles mixed temporal variations from coarse to fine levels, thereby improving representation clarity. Specifically, DeCoP incorporates Instance-wise Patch Normalization (IPN) for controlled dependency, which reduces noise and stabilizes data distributions, establishing a controlled foundation for dependency modeling. Furthermore, a Hierarchical Dependency Controlled Learning (DCL) strategy is employed to selectively control inter-patch dependency ranges, generating robust, generalizable embeddings that enhance model stability across varying time series patterns. Extensive evaluations on ETTh1 datasets reveal that DeCoP achieves up to a 3% improvement in MSE over PatchTST, using only 37% of the FLOPs required.
See less
Date
2025Rights statement
The author retains copyright of this thesis. It may only be used for the purposes of research and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission.Faculty/School
Faculty of Engineering, School of Computer ScienceAwarding institution
The University of SydneySubjects
time series analysisShare