TY - JOUR
T1 - LIGHTCTS⋆
T2 - Lightweight Correlated Time Series Forecasting Enhanced with Model Distillation
AU - Lai, Zhichen
AU - Zhang, Dalin
AU - Li, Huan
AU - Jensen, Christian S.
AU - Lu, Hua
AU - Zhao, Yan
PY - 2024
Y1 - 2024
N2 - Correlated time series (CTS) forecasting is essential in many practical applications, such as traffic management and server load control. Various deep learning based solutions have been proposed to improve forecasting accuracy. However, while models have become increasingly computationally intensive, they struggle to improve accuracy. This study aims instead to enable more lightweight, accurate models suitable for resource-constrained devices. To achieve this goal, we characterize popular CTS forecasting models, yielding two observations for developing lightweight CTS forecasting. On this basis, we propose the LightCTS framework that adopts plain stacking of temporal and spatial operators instead of alternate stacking which is much more computationally expensive. Moreover, LightCTS features light temporal and spatial operators, L-TCN and GL-Former, offering improved computational efficiency without compromising their feature extraction capabilities. LightCTS also encompasses a last-shot compression scheme to reduce redundant temporal features and speed up subsequent computations. Next, we equip LightCTS with two knowledge distillation modules, Tafd and Caad, that result in LightCTS
★ retaining the original benefits of LightCTS, while also being able to adapt to varying levels of ultra-constrained resources. Experimental studies offer detailed insight into these proposals and provide evidence that both LightCTS and LightCTS
★ are capable of nearly state-of-the-art accuracy at substantially reduced computational costs.
AB - Correlated time series (CTS) forecasting is essential in many practical applications, such as traffic management and server load control. Various deep learning based solutions have been proposed to improve forecasting accuracy. However, while models have become increasingly computationally intensive, they struggle to improve accuracy. This study aims instead to enable more lightweight, accurate models suitable for resource-constrained devices. To achieve this goal, we characterize popular CTS forecasting models, yielding two observations for developing lightweight CTS forecasting. On this basis, we propose the LightCTS framework that adopts plain stacking of temporal and spatial operators instead of alternate stacking which is much more computationally expensive. Moreover, LightCTS features light temporal and spatial operators, L-TCN and GL-Former, offering improved computational efficiency without compromising their feature extraction capabilities. LightCTS also encompasses a last-shot compression scheme to reduce redundant temporal features and speed up subsequent computations. Next, we equip LightCTS with two knowledge distillation modules, Tafd and Caad, that result in LightCTS
★ retaining the original benefits of LightCTS, while also being able to adapt to varying levels of ultra-constrained resources. Experimental studies offer detailed insight into these proposals and provide evidence that both LightCTS and LightCTS
★ are capable of nearly state-of-the-art accuracy at substantially reduced computational costs.
KW - Accuracy
KW - Computational modeling
KW - Computed tomography
KW - Correlated Time Series Forecasting
KW - Feature extraction
KW - Forecasting
KW - Knowledge Distillation
KW - Lightweight Neural Networks
KW - Predictive models
KW - Time series analysis
KW - Accuracy
KW - Computational modeling
KW - Computed tomography
KW - Correlated Time Series Forecasting
KW - Feature extraction
KW - Forecasting
KW - Knowledge Distillation
KW - Lightweight Neural Networks
KW - Predictive models
KW - Time series analysis
U2 - 10.1109/TKDE.2024.3424451
DO - 10.1109/TKDE.2024.3424451
M3 - Journal article
AN - SCOPUS:85198301731
SN - 1041-4347
VL - 36
SP - 8695
EP - 8710
JO - IEEE Transactions on Knowledge and Data Engineering
JF - IEEE Transactions on Knowledge and Data Engineering
IS - 12
ER -