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

conference contribution
posted on 2024-11-03, 14:37 authored by Futoon Abu Shaqra, Hao XueHao Xue, Yongli RenYongli Ren, Flora SalimFlora Salim
Heterogeneity and irregularity of multi-source data sets present a significant challenge to time-series analysis. In the literature, the fusion of multi-source time-series has been achieved either by using ensemble learning models which ignore temporal patterns and correlation within features or by defining a fixed-size window to select specific parts of the data sets. On the other hand, many studies have shown major improvement to handle the irregularity of time-series, yet none of these studies has been applied to multi-source data. In this work, we design a novel architecture, PIETS, to model heterogeneous time-series. PIETS has the following characteristics: (1) irregularity encoders for multi-source samples that can leverage all available information and accelerate the convergence of the model; (2) parallelised neural networks to enable flexibility and avoid information overwhelming; and (3) attention mechanism that highlights different information and gives high importance to the most related data. Through extensive experiments on real-world data sets related to COVID-19, we show that the proposed architecture is able to effectively model heterogeneous temporal data and outperforms other state-of-the-art approaches in the prediction task.

Funding

Multi-resolution situation recognition for urban-aware smart assistant

Australian Research Council

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  1. 1.
    DOI - Is published in 10.1109/ICDM51629.2021.00109

Start page

1

End page

6

Total pages

6

Outlet

Proceedings of the 21st IEEE International Conference on Data Mining (ICDM 2021)

Name of conference

ICDM 2021

Publisher

IEEE

Place published

United States

Start date

2021-12-07

End date

2021-12-10

Language

English

Copyright

© 2021 IEEE

Former Identifier

2006112050

Esploro creation date

2022-01-21

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