LGMLJan 11, 2014

Multi-Step-Ahead Time Series Prediction using Multiple-Output Support Vector Regression

arXiv:1401.2504v1231 citations
Originality Incremental advance
AI Analysis

This work addresses forecasting challenges for practitioners and academics, but it is incremental as it builds on existing SVR techniques with a novel combination.

The study tackled multi-step-ahead time series prediction by proposing a multiple-output support vector regression (M-SVR) with MIMO strategy, which achieved the best forecast accuracy with accredited computational load compared to standard SVR methods.

Accurate time series prediction over long future horizons is challenging and of great interest to both practitioners and academics. As a well-known intelligent algorithm, the standard formulation of Support Vector Regression (SVR) could be taken for multi-step-ahead time series prediction, only relying either on iterated strategy or direct strategy. This study proposes a novel multiple-step-ahead time series prediction approach which employs multiple-output support vector regression (M-SVR) with multiple-input multiple-output (MIMO) prediction strategy. In addition, the rank of three leading prediction strategies with SVR is comparatively examined, providing practical implications on the selection of the prediction strategy for multi-step-ahead forecasting while taking SVR as modeling technique. The proposed approach is validated with the simulated and real datasets. The quantitative and comprehensive assessments are performed on the basis of the prediction accuracy and computational cost. The results indicate that: 1) the M-SVR using MIMO strategy achieves the best accurate forecasts with accredited computational load, 2) the standard SVR using direct strategy achieves the second best accurate forecasts, but with the most expensive computational cost, and 3) the standard SVR using iterated strategy is the worst in terms of prediction accuracy, but with the least computational cost.

Foundations

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