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Bringing forecasting into the future: Using Google to predict visitation in U.S. national parks

机译:将预测带入未来:使用谷歌预测美国国家公园的探访

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摘要

In recent years, visitation to U.S. National Parks has been increasing, with the majority of this increase occurring in a subset of parks. As a result, managers in these parks must respond quickly to increasing visitor-related challenges. Improved visitation forecasting would allow managers to more proactively plan for such increases. In this study, we leverage internet search data that is freely available through Google Trends to create a forecasting model. We compare this Google Trends model to a traditional autoregressive forecasting model. Overall, our Google Trends model accurately predicted 97% of the total visitation variation to all parks one year in advance from 2013 to 2017 and outperformed the autoregressive model by all metrics. While our Google Trends model performs better overall, this was not the case for each park unit individually; the accuracy of this model varied significantly from park to park. We hypothesized that park attributes related to trip planning would correlate with the accuracy of our Google Trends model, but none of the variables tested produced overly compelling results. Future research can continue exploring the utility of Google Trends to forecast visitor use in protected areas, or use methods demonstrated in this paper to explore alternative data sources to improve visitation forecasting in U.S. National Parks.
机译:近年来,对美国国家公园的探视一直在增加,大多数这一增加在公园子集中发生。因此,这些公园的管理人员必须迅速回应增加与访客有关的挑战。改善的探访预测将使管理人员更加积极地计划此类增加。在本研究中,我们利用通过Google趋势自由使用的互联网搜索数据来创建预测模型。我们将此Google趋势模型与传统的自回归预测模型进行比较。总体而言,我们的谷歌趋势模型将从2013年至2017年提前一年预测所有公园总旅途的97%,并通过所有指标表现出自回归模型。虽然我们的Google趋势模型总体上表现得更好,但每个公园单位都不是单独的情况;该模型的准确性从公园到停车时变化显着变化。我们假设与旅行规划相关的公园属性与我们的Google趋势模型的准确性相关,但没有测试的变量没有产生过于引人注目的结果。未来的研究可以继续探索谷歌趋势的效用,以预测受保护区的访客使用,或者本文中显示的方法探讨了改善美国国家公园的读取预测的替代数据来源。

著录项

  • 来源
    《Journal of Environmental Management》 |2019年第1期|88-94|共7页
  • 作者单位

    Boise State Univ Human Environm Syst Albertsons Lib 2nd Floor 1865 W Cesar Chavez Ln Boise ID 83725 USA|Boise State Univ Dept Biol Sci Sci Bldg 107 2133 W Cesar Chavez Ln Boise ID 83725 USA;

    Utah State Univ Dept Environm & Soc Inst Outdoor Recreat & Tourism 5215 Old Main Hill Logan UT 84322 USA;

    Kansas State Univ Dept Hort & Nat Resources 2021 Throckmorton Hall 1712 Claflin Rd Manhattan KS 66506 USA;

    Clemson Univ Dept Pk Recreat & Tourism Management 263 Lehotsky Hall Clemson SC 29634 USA;

    Kansas State Univ Dept Hort & Nat Resources 2021 Throckmorton Hall 1712 Claflin Rd Manhattan KS 66506 USA;

    Boise State Univ Human Environm Syst 1910 W Univ Dr Boise ID 83725 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Internet search data; Tourism demand; Forecasting; Google data; Park visitation; Capacity;

    机译:互联网搜索数据;旅游需求;预测;谷歌数据;公园探视;能力;

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