Publication | Closed Access
Short-term forecasting of Japanese tourist inflow to South Korea using Google trends data
140
Citations
30
References
2016
Year
Forecasting MethodologyEngineeringInternational TourismInternet Search DataMacroeconomic ForecastingTrend PredictionBusiness AnalyticsTime Series EconometricsGoogle Trends DataEconomic ForecastingData ScienceTourism DemandStatisticsJapanese Tourist InflowSouth KoreaPredictive AnalyticsGeographyGoogle TrendsForecastingIntelligent ForecastingBusinessEconometricsTourismBusiness ForecastingTrend Analysis
We utilize the Internet search data from Google Trends to provide short-term forecasts for the inflow of Japanese tourists to South Korea. We construct the Google variable in a systematic way by combining keywords to minimize mean squared or mean absolute forecasting errors. We augment the Google variable to the standard time-series forecasting models and compare their forecasting accuracies. We find that Google-augmented models perform much better than the standard time-series models in terms of short-term forecasting accuracy. In particular, Google models show better out-of-sample forecasting performance than in-sample forecasting.
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