4.5 Article

Forecasting carbon price using a multi-objective least squares support vector machine with mixture kernels

Journal

JOURNAL OF FORECASTING
Volume 41, Issue 1, Pages 100-117

Publisher

WILEY
DOI: 10.1002/for.2784

Keywords

least squares support vector machine; machine learning; mixture kernels; multi-objective fitness function; particle swarm optimization

Funding

  1. Guangzhou key Base of Humanities and Social Science-Centre for Low Carbon Economic Research
  2. Guangdong Key Base of Humanities and Social Science-Enterprise Development Research
  3. Guangdong Young Zhujiang Scholar [[2016]95]
  4. National Philosophy and Social Science Foundation of China [16ZZD049]
  5. National Natural Science Foundation of China [71771105, 71974077, 72074120]

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This paper introduces a new multi-objective least squares support vector machine model to improve asset price forecasting accuracy and trading performance by incorporating mixture kernel function and multi-objective fitness function. Results show that high directional forecasting typically leads to higher trading performance.
For improving forecasting accuracy and trading performance, this paper proposes a new multi-objective least squares support vector machine with mixture kernels to forecast asset prices. First, a mixture kernel function is introduced into taking full use of global and local kernel functions, which is adaptively determined following a data-driven procedure. Second, a multi-objective fitness function is proposed by incorporating level forecasting and trading performance, and particle swarm optimization is used to synchronously search the optimal model selections of least squares support vector machine with mixture kernels. Taking CO2 assets as examples, the results obtained show that compared with the popular models, the proposed model can achieve higher forecasting accuracy and higher trading performance. The advantages of the mixture kernel function and the multi-objective fitness function can improve the forecasting ability of the asset price. The findings also show that the models with a high-level forecasting accuracy cannot always have a high trading performance of asset price forecasting. In contrast, high directional forecasting usually means a high trading performance.

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