Forecasting performance of smooth transition autoregressive (STAR) model on travel and leisure stock index

Usman M. Umer , Tuba Sevil , Güven Sevil
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引用次数: 13

Abstract

Travel and leisure recorded a consecutive robust growth and become among the fastest economic sectors in the world. Various forecasting models are proposed by researchers that serve as an early recommendation for investors and policy makers. Numerous studies proposed distinct forecasting models to predict the dynamics of this sector and provide early recommendation for investors and policy makers. In this paper, we compare the performance of smooth transition autoregressive (STAR) and linear autoregressive (AR) models using monthly returns of Turkey and FTSE travel and leisure index from April 1997 to August 2016. MSCI world index used as a proxy of the overall market. The result shows that nonlinear LSTAR model cannot improve the out-of-sample forecast of linear AR model. This finding demonstrates little to be gained from using LSTAR model in the prediction of travel and leisure stock index.

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平滑过渡自回归(STAR)模型对旅游休闲股票指数的预测效果
旅游和休闲连续强劲增长,成为世界上增长最快的经济部门之一。研究人员提出了各种预测模型,作为投资者和政策制定者的早期建议。许多研究提出了不同的预测模型来预测该行业的动态,并为投资者和决策者提供早期建议。在本文中,我们比较了平滑过渡自回归(STAR)和线性自回归(AR)模型的性能,使用土耳其和富时旅游和休闲指数从1997年4月到2016年8月的月度回报。摩根士丹利资本国际全球指数被用作整体市场的代表。结果表明,非线性LSTAR模型不能改善线性AR模型的样本外预测。这一发现表明LSTAR模型在旅游休闲存量指数预测中收效甚微。
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来源期刊
Journal of Finance and Data Science
Journal of Finance and Data Science Mathematics-Statistics and Probability
CiteScore
3.90
自引率
0.00%
发文量
15
审稿时长
30 days
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