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Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

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Page 1: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Nowcasting RDU with trends

Based on Durham Paper By Ramy Khorshed

Page 2: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

About Google Trends

Google Search query volume Y-axis search index X-axis time

In 2008, Google launched Google Insights for Search Revamped front-end in 2012

Page 3: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Google Trends: Example

Lax Scandal

Jane Goodall Primate Center

Steve Jobs Speech

Page 4: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Google Trends: Example

Page 5: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Google Trends: Example

Page 6: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Google Trends: Example

Page 7: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Proof of Concept:

Etteredge (2005): US unemployment rate

Cooper (2005): Cancer

Polgreen(2008) and Ginsberg (2009): Contagious diseases

Choi and Varian (2009): Unemployment Automobile demand Vacation Destinations

Goel (2010): Box-office revenue First Month sales of video games Rank of songs on the Billboard Hot 100

Page 8: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Durham Paper Topic:

Can applying simple regression models enhanced by Google search volume data can improve the predictability of current and near-future economic conditions pertaining to Durham?

Specifically, I will adjust predictions of Raleigh-Durham International (RDU) passenger volume based on the number of queries related to RDU.

Page 9: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Methodology

Model 0: log(yt) = α1 log(yt-1)+ α2 log(yt-12)+et

Model 1: log(yt) = α1 log(yt-1)+ α2 log(yt-12)+ α3 xt +et

Data:

Page 10: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Methodology

Model 0: log(yt) = α1 log(yt-1)+ α2 log(yt-12)+et

Model 1: log(yt) = α1 log(yt-1)+ α2 log(yt-12)+ α3 xt +et

Trend Data:

Page 11: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Results:MAE = (1/T)Tt=1 |Pet|

model 0 = 4.35% model 1 = 3.31% Improvement of 31.41%

Page 12: Nowcasting RDU with trends Based on Durham Paper By Ramy Khorshed

Conclusions: This result could help airport management better predict

passenger volume allowing them to make better decisions and improve customer experience.

Durham hotels could look to more accurately anticipate demand for lodging and accordingly change price by incorporating search volumes into predictions based on past occupancy.

Durham real estate developers could incorporate monthly and daily query volumes for Durham to help determine real-estate value.

Raleigh-Durham searches from the search could be used to help guide marketing decisions.