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A COMPARATIVE STUDY OF STOCK PRICE FORECASTING USING NONLINEAR MODELS

机译:基于非线性模型的股票价格预测的比较研究

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This study compared the in-sample forecasting accuracy of three forecasting nonlinear models namely: the Smooth Transition Regression (STR) model, the Threshold Autoregressive (TAR) model and the Markov-switching Autoregressive (MS-AR) model. Nonlinearity tests were used to confirm the validity of the assumptions of the study. The study used model selection criteria, SBC to select the optimal lag order and for the selection of appropriate models. The Mean Square Error (MSE), Mean Absolute Error (MAE) and Root Mean Square Error (RMSE) served as the error measures in evaluating the forecasting ability of the models. The MS-AR models proved to perform well with lower error measures as compared to LSTR and TAR models in most cases.
机译:本研究比较了三种预测非线性模型的样本内预测准确性:平滑过渡回归(STR)模型,阈值自回归(TAR)模型和马尔可夫切换自回归(MS-AR)模型。非线性检验用于确认研究假设的有效性。该研究使用模型选择标准SBC选择最佳滞后阶数并选择合适的模型。均方误差(MSE),均值绝对误差(MAE)和均方根误差(RMSE)是评估模型预测能力的误差度量。与大多数情况下的LSTR和TAR模型相比,MS-AR模型在较低的误差范围内表现良好。

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