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首页> 外文期刊>American journal of applied sciences >Fuzzy Time Series: An Application to Tourism Demand Forecasting | Science Publications
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Fuzzy Time Series: An Application to Tourism Demand Forecasting | Science Publications

机译:模糊时间序列:在旅游需求预测中的应用科学出版物

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> Problem statement: Forecasting is very important in many types of organizations since predictions of future events must be incorporated into the decision-making process. In the case of tourism demand, better forecast would help directors and investors make operational, tactical and strategic decisions. Besides that, government bodies need accurate tourism demand forecasts to plan required tourism infrastructures, such as accommodation site planning and transportation development, among other needs. There are many types of forecasting methods. Generally, time series forecasting can be divided into classical method and modern methods. Recent studies show that the newer and more advanced forecasting techniques tend to result in improved forecast accuracy, but no clear evidence shows that any one model can consistently outperform other models in the forecasting competition. Approach: In this study, the performance of forecasting between classical methods (Box-Jenkins methods Seasonal Auto-Regressive Integrated Moving Average (SARIMA), Holt Winters and time series regression) and modern methods (fuzzy time series) has been compared by using data of tourist arrivals to Bali and Soekarno-Hatta gate in Indonesia as case study. Results: The empirical results show that modern methods give more accurate forecasts compare to classical methods. Chens fuzzy time series method outperforms all the classical methods and others more advance fuzzy time series methods. We also found that the performance of fuzzy time series methods can be improve by using transformed data. Conclusion: It is found that the best method to forecast the tourist arrivals to Bali and Soekarno-Hatta was to be the FTS i.e., method after using data transformation. Although this method known to be the simplest or conventional methods of FTS, yet this result should not be odd since several previous studies also have shown that simple method could outperform more advance or complicated methods.
机译: > 问题陈述:在许多类型的组织中,预测非常重要,因为对未来事件的预测必须纳入决策过程。就旅游需求而言,更好的预测将有助于董事和投资者做出运营,战术和战略决策。除此之外,政府机构还需要准确的旅游需求预测,以规划所需的旅游基础设施,例如住宿地点规划和交通发展等。预测方法有很多类型。通常,时间序列预测可分为经典方法和现代方法。最近的研究表明,更新和更先进的预测技术往往会提高预测的准确性,但是没有明确的证据表明,在预测竞争中,任何一个模型都能始终胜过其他模型。 方法:在这项研究中,经典方法(Box-Jenkins方法,季节性自回归综合移动平均线(SARIMA),Holt Winters和时间序列回归)与现代方法(模糊时间序列)之间的预测性能)已通过使用前往印尼巴厘岛和Soekarno-Hatta门的游客数据进行了比较。 结果:实证结果表明,与传统方法相比,现代方法可提供更准确的预测。 Chens模糊时间序列方法的性能优于所有经典方法,而其他方法则更先进。我们还发现,通过使用转换后的数据可以提高模糊时间序列方法的性能。 结论:发现预测巴厘岛和Soekarno-Hatta的游客到来的最佳方法是FTS,即使用数据转换后的方法。尽管此方法是FTS的最简单或常规方法,但此结果并不奇怪,因为先前的一些研究也表明,简单方法的性能可能优于更先进的方法或复杂的方法。

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