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COMBINING LONG MEMORY AND NONLINEAR MODEL OUTPUTS FOR INFLATION FORECAST | Science Publications

机译:结合长记忆和非线性模型输出进行预测科学出版物

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> Long memory and nonlinearity have been proven as two models that are easily to be mistaken. In other words, nonlinearity is a strong candidate of spurious long memory by introducing a certain degree of fractional integration that lies in the region of long memory. Indeed, nonlinear process belongs to short memory with zero integration order. The idea of the forecast is to obtain the future condition with minimum error. Some researches argued that no matter what the model is, the important thing is we can generate a reliable forecast. Several tests have been proposed to solve the problem of distinguishing long memory and nonlinearity appears in a series. The power of the tests is somehow questionable in the sense that there is still a probability to obtain spurious result. To overcome this, model combination will be one of the solutions dealing with uncertainty in the model selection. In this case, it is assumed that both processes are candidates of best models with certain power to generate a good forecast. This research investigates the performance three model combination approaches to forecast the Indonesia inflation i.e., simple combination using balance weight as well as inverse Mean Prediction Error (MSPE) weight and Bayesian Model Averaging (BMA). These methods are capable to generate a reliable forecast in very short lead time. Combination using BMA outperforms the simple averaging for 1 ahead forecast, while MSPE performs best for long lead forecasts.
机译: >长记忆和非线性已被证明是两个容易被误解的模型。换句话说,通过引入一定程度的位于长记忆区域内的分数积分,非线性是虚假长记忆的强烈候选者。实际上,非线性过程属于零积分阶的短记忆。预测的思想是获得具有最小误差的未来条件。一些研究认为,不管模型是什么,重要的是我们可以生成可靠的预测。已经提出了几种测试来解决区分长记忆和非线性出现的问题。从仍然存在获得虚假结果的可能性的意义上说,测试的力量在某种程度上值得怀疑。为了克服这个问题,模型组合将成为解决模型选择中不确定性的解决方案之一。在这种情况下,假定两个过程都是具有一定能力以生成良好预测的最佳模型的候选。这项研究调查了三种用于预测印度尼西亚通货膨胀的模型组合方法,即使用平衡权重,逆平均预测误差(MSPE)权重和贝叶斯模型平均(BMA)的简单组合。这些方法能够在很短的交货时间内生成可靠的预测。使用BMA的组合优于1次提前预测的简单平均,而MSPE在长期潜在客户预测方面表现最佳。

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