TY - JOUR
T1 - Bringing Forecasting into the Future: Using Google to Predict Visitation in U.S. National Parks
AU - Clark, Matt
AU - Wilkins, Emily J.
AU - Dagan, Dani T.
AU - Powell, Robert
AU - Sharp, Ryan L.
AU - Hillis, Vicken
N1 - Publisher Copyright:
© 2019 Elsevier Ltd
PY - 2019/8/1
Y1 - 2019/8/1
N2 - 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 2013-2017 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.
AB - 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 2013-2017 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.
KW - Capacity
KW - Forecasting
KW - Google data
KW - Internet search data
KW - Park visitation
KW - Tourism demand
UR - http://www.scopus.com/inward/record.url?scp=85065824452&partnerID=8YFLogxK
UR - https://scholarworks.boisestate.edu/hes_facpubs/47
U2 - 10.1016/j.jenvman.2019.05.006
DO - 10.1016/j.jenvman.2019.05.006
M3 - Article
C2 - 31082755
SN - 0301-4797
VL - 243
SP - 88
EP - 94
JO - Journal of Environmental Management
JF - Journal of Environmental Management
ER -