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Forecasting comparison between two nonlinear models: fuzzy regression versus SETAR

机译:两种非线性模型之间的预测比较:模糊回归与SETAR

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摘要

In this article, we compare the forecasting performances of the Self-Exciting Threshold Autoregressive (SETAR) model and a fuzzy clustering regression model. The series used in this study are high-frequency financial data in the form of seven major stock prices in the US stock markets; the stock indices from seven world stock trading centres; the daily prices for two important commodities, gold and crude oil; and the daily exchange rate between the Canadian dollar and the US dollar. We find that the two models are not too different from each other in terms of the within-sample fit, but in terms of the forecasting performance, the fuzzy model gives better and stable forecasts.
机译:在本文中,我们比较了自激阈值自回归(SETAR)模型和模糊聚类回归模型的预测性能。本研究中使用的系列是高频金融数据,其形式为美国股票市场中的七种主要股票价格。来自七个世界股票交易中心的股票指数;黄金和原油这两种重要商品的每日价格;以及加元和美元之间的每日汇率。我们发现这两个模型在样本内拟合方面并没有太大的不同,但是在预测性能方面,模糊模型给出了更好且稳定的预测。

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