Bayesian Temporal Factorization for Multidimensional Time Series Prediction

10/14/2019
by   Lijun Sun, et al.
0

Large-scale and multidimensional spatiotemporal data sets are becoming ubiquitous in many real-world applications such as monitoring urban traffic and air quality. Making predictions on these time series has become a critical challenge due to not only the large-scale and high-dimensional nature but also the considerable amount of missing data. In this paper, we propose a Bayesian temporal factorization (BTF) framework for modeling multidimensional time series—in particular spatiotemporal data—in the presence of missing values. By integrating low-rank matrix/tensor factorization and vector autoregressive (VAR) process into a single probabilistic graphical model, this framework can characterize both global and local consistencies in large-scale time series data. The graphical model allows us to effectively perform probabilistic predictions and produce uncertainty estimates without imputing those missing values. We develop efficient Gibbs sampling algorithms for model inference and test the proposed BTF framework on several real-world spatiotemporal data sets for both missing data imputation and short-term/long-term rolling prediction tasks. The numerical experiments demonstrate the superiority of the proposed BTF approaches over many state-of-the-art techniques.

READ FULL TEXT
research
06/18/2020

Low-Rank Autoregressive Tensor Completion for Multivariate Time Series Forecasting

Time series prediction has been a long-standing research topic and an es...
research
08/21/2022

Bayesian Complementary Kernelized Learning for Multidimensional Spatiotemporal Data

Probabilistic modeling of multidimensional spatiotemporal data is critic...
research
04/30/2021

Low-Rank Autoregressive Tensor Completion for Spatiotemporal Traffic Data Imputation

Spatiotemporal traffic time series (e.g., traffic volume/speed) collecte...
research
03/02/2021

Missing Value Imputation on Multidimensional Time Series

We present DeepMVI, a deep learning method for missing value imputation ...
research
04/09/2019

Time-Series Analysis via Low-Rank Matrix Factorization: Applied to Infant-Sleep Data

We propose a nonparametric model for time series with missing data based...
research
01/09/2017

Coupled Compound Poisson Factorization

We present a general framework, the coupled compound Poisson factorizati...
research
03/12/2021

Spatiotemporal Tensor Completion for Improved Urban Traffic Imputation

Effective management of urban traffic is important for any smart city in...

Please sign up or login with your details

Forgot password? Click here to reset