4

I am gathering Google Trends data using the R Package gtrendsR. I am trying to pull data for each metropolitan statistical area (MAS) but area code would also be good. So far I have only managed to get the state-level data. Here is the code for that.

example <- gtrends("car", geo="US-FL")$interest_over_time 

I have tried the following for the MSA:

example2 <- gtrends("car", geo="US-FL-Jacksonville FL")$interest_over_time 

and for the area codes:

example3 <- gtrends("car", geo="US-FL-904")$interest_over_time 

I get errors saying that the package cannot retrieve valid codes. In data("countries") associated with the package, the codes are only for state-level - e.g. US-FL for Florida.

I would be interested in knowing how I can retrieve more granular data with this package, along the lines described in example2 and example3 above.

2

To retrieve data for "Jacksonville, FL", you should use geo = "US-FL-561":

example2 <- gtrends("car", geo = "US-FL-561")$interest_over_time

To find the geo code for cities, you can use this code (you can replace "US-FL" by any country-states code you want):

data("countries")
codes <- unique(countries$sub_code[substr(countries$sub_code, 1,5) == "US-FL"])
codes

#[1] US-FL     US-FL-571 US-FL-592 US-FL-561 US-FL-528 US-FL-534 US-FL-656 US-FL-539 US-FL-548 US-FL-530

countries[countries$sub_code %in% codes[2:length(codes)],]

#       country_code  sub_code                                name
#122665           US US-FL-571                Ft. Myers-Naples, FL
#122666           US US-FL-592                     Gainesville, FL
#122667           US US-FL-561                    Jacksonville, FL
#122668           US US-FL-528            Miami-Ft. Lauderdale, FL
#122670           US US-FL-534 Orlando-Daytona Beach-Melbourne, FL
#122671           US US-FL-656                     Panama City, FL
#122672           US US-FL-539  Tampa-St Petersburg (Sarasota), FL
#122673           US US-FL-548      West Palm Beach-Ft. Pierce, FL
#122680           US US-FL-530     Tallahassee, FL-Thomasville, GA

Function

If easier, you can also write the code as a function:

city_code <- function(geo){
  codes <- unique(countries$sub_code[substr(countries$sub_code, 1,5) == geo])
  if(length(codes) > 1){
    countries[countries$sub_code %in% codes[2:length(codes)], 2:3]
  } else{
    message('No city code for this geo')
  }
}

Examples

city_code("US-AL")

#        sub_code                                        name
#122636 US-AL-630                              Birmingham, AL
#122637 US-AL-606                                  Dothan, AL
#122638 US-AL-691           Huntsville-Decatur (Florence), AL
#122639 US-AL-698                      Montgomery (Selma), AL
#122669 US-AL-686 Mobile, AL-Pensacola (Ft. Walton Beach), FL

city_code("US-CA")

#        sub_code                                          name
#122649 US-CA-800                               Bakersfield, CA
#122650 US-CA-868                             Chico-Redding, CA
#122651 US-CA-802                                    Eureka, CA
#122652 US-CA-866                            Fresno-Visalia, CA
#122653 US-CA-803                               Los Angeles, CA
#122654 US-CA-828                          Monterey-Salinas, CA
#122655 US-CA-804                              Palm Springs, CA
#122656 US-CA-862               Sacramento-Stockton-Modesto, CA
#122657 US-CA-825                                 San Diego, CA
#122658 US-CA-807            San Francisco-Oakland-San Jose, CA
#122659 US-CA-855 Santa Barbara-Santa Maria-San Luis Obispo, CA

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.