Learning from Multiple Time Series: A Deep Disentangled Approach to Diversified Time Series Forecasting

11/09/2021
by   Ling Chen, et al.
0

Time series forecasting is a significant problem in many applications, e.g., financial predictions and business optimization. Modern datasets can have multiple correlated time series, which are often generated with global (shared) regularities and local (specific) dynamics. In this paper, we seek to tackle such forecasting problems with DeepDGL, a deep forecasting model that disentangles dynamics into global and local temporal patterns. DeepDGL employs an encoder-decoder architecture, consisting of two encoders to learn global and local temporal patterns, respectively, and a decoder to make multi-step forecasting. Specifically, to model complicated global patterns, the vector quantization (VQ) module is introduced, allowing the global feature encoder to learn a shared codebook among all time series. To model diversified and heterogenous local patterns, an adaptive parameter generation module enhanced by the contrastive multi-horizon coding (CMC) is proposed to generate the parameters of the local feature encoder for each individual time series, which maximizes the mutual information between the series-specific context variable and the long/short-term representations of the corresponding time series. Our experiments on several real-world datasets show that DeepDGL outperforms existing state-of-the-art models.

READ FULL TEXT

page 1

page 4

page 11

research
05/09/2019

Think Globally, Act Locally: A Deep Neural Network Approach to High-Dimensional Time Series Forecasting

Forecasting high-dimensional time series plays a crucial role in many ap...
research
12/15/2022

Put Attention to Temporal Saliency Patterns of Multi-Horizon Time Series

Time series, sets of sequences in chronological order, are essential dat...
research
03/13/2023

Hybrid Variational Autoencoder for Time Series Forecasting

Variational autoencoders (VAE) are powerful generative models that learn...
research
10/17/2022

Temporal-Spatial dependencies ENhanced deep learning model (TSEN) for household leverage series forecasting

Analyzing both temporal and spatial patterns for an accurate forecasting...
research
02/18/2020

Conditional Mutual information-based Contrastive Loss for Financial Time Series Forecasting

We present a method for financial time series forecasting using represen...
research
01/31/2023

Time Series Forecasting via Semi-Asymmetric Convolutional Architecture with Global Atrous Sliding Window

The proposed method in this paper is designed to address the problem of ...
research
09/30/2021

PIETS: Parallelised Irregularity Encoders for Forecasting with Heterogeneous Time-Series

Heterogeneity and irregularity of multi-source data sets present a signi...

Please sign up or login with your details

Forgot password? Click here to reset