Nonstationary Temporal Matrix Factorization for Multivariate Time Series Forecasting

03/20/2022
by   Xinyu Chen, et al.
0

Modern time series datasets are often high-dimensional, incomplete/sparse, and nonstationary. These properties hinder the development of scalable and efficient solutions for time series forecasting and analysis. To address these challenges, we propose a Nonstationary Temporal Matrix Factorization (NoTMF) model, in which matrix factorization is used to reconstruct the whole time series matrix and vector autoregressive (VAR) process is imposed on a properly differenced copy of the temporal factor matrix. This approach not only preserves the low-rank property of the data but also offers consistent temporal dynamics. The learning process of NoTMF involves the optimization of two factor matrices and a collection of VAR coefficient matrices. To efficiently solve the optimization problem, we derive an alternating minimization framework, in which subproblems are solved using conjugate gradient and least squares methods. In particular, the use of conjugate gradient method offers an efficient routine and allows us to apply NoTMF on large-scale problems. Through extensive experiments on Uber movement speed dataset, we demonstrate the superior accuracy and effectiveness of NoTMF over other baseline models. Our results also confirm the importance of addressing the nonstationarity of real-world time series data such as spatiotemporal traffic flow/speed.

READ FULL TEXT
research
09/28/2015

High-dimensional Time Series Prediction with Missing Values

High-dimensional time series prediction is needed in applications as div...
research
03/13/2019

Matrix factorization for multivariate time series analysis

Matrix factorization is a powerful data analysis tool. It has been used ...
research
06/24/2020

On Multivariate Singular Spectrum Analysis

We analyze a variant of multivariate singular spectrum analysis (mSSA), ...
research
12/23/2017

Online Forecasting Matrix Factorization

In this paper the problem of forecasting high dimensional time series is...
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
09/08/2020

Topology-based Clusterwise Regression for User Segmentation and Demand Forecasting

Topological Data Analysis (TDA) is a recent approach to analyze data set...
research
01/17/2023

Enhancing Deep Traffic Forecasting Models with Dynamic Regression

A common assumption in deep learning-based multivariate and multistep tr...

Please sign up or login with your details

Forgot password? Click here to reset