PSO-SVM在通货膨胀预测中的表现

Yizhou Tang, Jiawen Zhou
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引用次数: 31

摘要

在分析通货膨胀预测问题的基础上,提出了一种基于支持向量机的方法。本文首先回顾了以往关于通货膨胀预测和预测方法的研究,发现支持向量机是一种非线性自适应数据驱动模型,具有较强的近似和泛化能力,可以应用于复杂的预测任务。其次,建立了支持向量机模型,讨论了核函数的选取。第三,引入粒子群算法和遗传算法对模型进行优化。然后将基于svm的模型(Fixed-SVM、PSO-SVM、GA-SVM)与BP神经网络结合,对中国通货膨胀率进行预测。结果表明,PSO-SVM的性能优于BP和其他基于svm的模型,其测试组的MSE为0.006,预测值与实际值的绝对误差均小于0.02。结果表明,最终的PSO-SVM模型在短期通货膨胀预测中具有较好的应用前景。
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The performance of PSO-SVM in inflation forecasting
Analyzing inflation forecast problem, this paper proposes a SVM-based approach. Firstly, the paper reviews some former studies about inflation forecasting and predicting methodology, finding that SVM is a nonlinear adaptive data-driven model with strong approximation and generalization ability, which can be applied to complex forecasting tasks. Secondly, the paper establishes a SVM model and discusses the selection of kernel functions. Thirdly, the Particle Swarm Optimization (PSO) and the Genetic Algorithm (GA) are introduced to optimize the models. Then the SVM-based models (Fixed-SVM, PSO-SVM, GA-SVM) together with a BP neural network are employed to forecast Chinese inflation rate. The results show that the PSO-SVM performs better than BP and any other SVM-based model since its MSE of testing group is 0.006 and its absolute errors between predictions and real values are all below 0.02. It reveals that the final PSO-SVM model is promising in short-term inflation forecast.
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