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Large Multivariate Time Series Forecasting: Survey on Methods and Scalability

Large Multivariate Time Series Forecasting: Survey on Methods and Scalability

Youssef Hmamouche, Piotr Marian Przymus, Hana Alouaoui, Alain Casali, Lotfi Lakhal
Copyright: © 2019 |Pages: 28
ISBN13: 9781522549635|ISBN10: 1522549633|ISBN13 Softcover: 9781522588139|EISBN13: 9781522549642
DOI: 10.4018/978-1-5225-4963-5.ch006
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MLA

Hmamouche, Youssef, et al. "Large Multivariate Time Series Forecasting: Survey on Methods and Scalability." Utilizing Big Data Paradigms for Business Intelligence, edited by Jérôme Darmont and Sabine Loudcher, IGI Global, 2019, pp. 170-197. https://doi.org/10.4018/978-1-5225-4963-5.ch006

APA

Hmamouche, Y., Przymus, P. M., Alouaoui, H., Casali, A., & Lakhal, L. (2019). Large Multivariate Time Series Forecasting: Survey on Methods and Scalability. In J. Darmont & S. Loudcher (Eds.), Utilizing Big Data Paradigms for Business Intelligence (pp. 170-197). IGI Global. https://doi.org/10.4018/978-1-5225-4963-5.ch006

Chicago

Hmamouche, Youssef, et al. "Large Multivariate Time Series Forecasting: Survey on Methods and Scalability." In Utilizing Big Data Paradigms for Business Intelligence, edited by Jérôme Darmont and Sabine Loudcher, 170-197. Hershey, PA: IGI Global, 2019. https://doi.org/10.4018/978-1-5225-4963-5.ch006

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Abstract

Research on the analysis of time series has gained momentum in recent years, as knowledge derived from time series analysis can improve the decision-making process for industrial and scientific fields. Furthermore, time series analysis is often an essential part of business intelligence systems. With the growing interest in this topic, a novel set of challenges emerges. Utilizing forecasting models that can handle a large number of predictors is a popular approach that can improve results compared to univariate models. However, issues arise for high dimensional data. Not all variables will have direct impact on the target variable and adding unrelated variables may make the forecasts less accurate. Thus, the authors explore methods that can effectively deal with time series with many predictors. The authors discuss state-of-the-art methods for optimizing the selection, dimension reduction, and shrinkage of predictors. While similar research exists, it exclusively targets small and medium datasets, and thus, the research aims to fill the knowledge gap in the context of big data applications.

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