TY - JOUR
T1 - Distributional drift adaptation with temporal conditional variational autoencoder for multivariate time series forecasting
AU - He, Hui
AU - Zhang, Qi
AU - Yi, Kun
AU - Shi, Kaize
AU - Niu, Zhendong
AU - Cao, Longbing
PY - 2025/4
Y1 - 2025/4
N2 - Due to the nonstationary nature, the distribution of real-world
multivariate time series (MTS) changes over time, which is known as
distribution drift. Most existing MTS forecasting models greatly suffer
from distribution drift and degrade the forecasting performance over
time. Existing methods address distribution drift via adapting to the
latest arrived data or self-correcting per the meta knowledge derived
from future data. Despite their great success in MTS forecasting, these
methods hardly capture the intrinsic distribution changes, especially
from a distributional perspective. Accordingly, we propose a novel
framework temporal conditional variational autoencoder (TCVAE) to model
the dynamic distributional dependencies over time between historical
observations and future data in MTSs and infer the dependencies as a
temporal conditional distribution to leverage latent variables.
Specifically, a novel temporal Hawkes attention (THA) mechanism
represents temporal factors that subsequently fed into feedforward
networks to estimate the prior Gaussian distribution of latent
variables. The representation of temporal factors further dynamically
adjusts the structures of Transformer-based encoder and decoder to
distribution changes by leveraging a gated attention mechanism (GAM).
Moreover, we introduce conditional continuous normalization flow (CCNF)
to transform the prior Gaussian to a complex and form-free distribution
to facilitate flexible inference of the temporal conditional
distribution. Extensive experiments conducted on six real-world MTS
datasets demonstrate the TCVAE’s superior robustness and effectiveness
over the state-of-the-art MTS forecasting baselines. We further
illustrate the TCVAE applicability through multifaceted case studies and
visualization in real-world scenarios.
AB - Due to the nonstationary nature, the distribution of real-world
multivariate time series (MTS) changes over time, which is known as
distribution drift. Most existing MTS forecasting models greatly suffer
from distribution drift and degrade the forecasting performance over
time. Existing methods address distribution drift via adapting to the
latest arrived data or self-correcting per the meta knowledge derived
from future data. Despite their great success in MTS forecasting, these
methods hardly capture the intrinsic distribution changes, especially
from a distributional perspective. Accordingly, we propose a novel
framework temporal conditional variational autoencoder (TCVAE) to model
the dynamic distributional dependencies over time between historical
observations and future data in MTSs and infer the dependencies as a
temporal conditional distribution to leverage latent variables.
Specifically, a novel temporal Hawkes attention (THA) mechanism
represents temporal factors that subsequently fed into feedforward
networks to estimate the prior Gaussian distribution of latent
variables. The representation of temporal factors further dynamically
adjusts the structures of Transformer-based encoder and decoder to
distribution changes by leveraging a gated attention mechanism (GAM).
Moreover, we introduce conditional continuous normalization flow (CCNF)
to transform the prior Gaussian to a complex and form-free distribution
to facilitate flexible inference of the temporal conditional
distribution. Extensive experiments conducted on six real-world MTS
datasets demonstrate the TCVAE’s superior robustness and effectiveness
over the state-of-the-art MTS forecasting baselines. We further
illustrate the TCVAE applicability through multifaceted case studies and
visualization in real-world scenarios.
UR - http://www.scopus.com/inward/record.url?scp=85192216508&partnerID=8YFLogxK
U2 - 10.1109/TNNLS.2024.3384842
DO - 10.1109/TNNLS.2024.3384842
M3 - Article
C2 - 38683706
AN - SCOPUS:85192216508
SN - 2162-237X
VL - 36
SP - 7287
EP - 7301
JO - IEEE Transactions on Neural Networks and Learning Systems
JF - IEEE Transactions on Neural Networks and Learning Systems
IS - 4
ER -