Laplacian Convolutional Representation for Traffic Time Series Imputation

12/03/2022
by   Xinyu Chen, et al.
0

Spatiotemporal traffic data imputation is of great significance in intelligent transportation systems and data-driven decision-making processes. To make an accurate reconstruction on partially observed traffic data, we assert the importance of characterizing both global and local trends in traffic time series. In the literature, substantial prior works have demonstrated the effectiveness of utilizing low-rankness property of traffic data by matrix/tensor completion models. In this study, we first introduce a Laplacian kernel to temporal regularization for characterizing local trends in traffic time series, which can be formulated in the form of circular convolution. Then, we develop a low-rank Laplacian convolutional representation (LCR) model by putting the nuclear norm of a circulant matrix and the Laplacian temporal regularization together, which is proved to meet a unified framework that takes a fast Fourier transform solution in a relatively low time complexity. Through extensive experiments on some traffic datasets, we demonstrate the superiority of LCR for imputing traffic time series of various time series behaviors (e.g., data noises and strong/weak periodicity). The proposed LCR model is an efficient and effective solution to large-scale traffic data imputation over the existing baseline models. The adapted datasets and Python implementation are publicly available at https://github.com/xinychen/transdim.

READ FULL TEXT

page 1

page 12

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
04/30/2021

Low-Rank Autoregressive Tensor Completion for Spatiotemporal Traffic Data Imputation

Spatiotemporal traffic time series (e.g., traffic volume/speed) collecte...
research
08/07/2020

Scalable Low-Rank Autoregressive Tensor Learning for Spatiotemporal Traffic Data Imputation

Missing value problem in spatiotemporal traffic data has long been a cha...
research
04/18/2023

A Deep Learning Framework for Traffic Data Imputation Considering Spatiotemporal Dependencies

Spatiotemporal (ST) data collected by sensors can be represented as mult...
research
01/27/2023

Large-Scale Traffic Data Imputation with Spatiotemporal Semantic Understanding

Large-scale data missing is a challenging problem in Intelligent Transpo...
research
08/28/2023

BayOTIDE: Bayesian Online Multivariate Time series Imputation with functional decomposition

In real-world scenarios like traffic and energy, massive time-series dat...
research
04/23/2021

Time Series Forecasting via Learning Convolutionally Low-Rank Models

Recently, <cit.> studied the rather challenging problem of time series f...

Please sign up or login with your details

Forgot password? Click here to reset