gdeltr2
— R’s modern GDELT Project interface
The Global Database of Events, Language, and Tone [GDELT] is a non profit whose initiative is to:
construct a catalog of human societal-scale behavior and beliefs across all countries of the world, connecting every person, organization, location, count, theme, news source, and event across the planet into a single massive network that captures what’s happening around the world, what its context is and who’s involved, and how the world is feeling about it, every single day.
GDELT was founded in 1994 and it’s data commences in 1979. Over the last two years the GDELT’s functionality and abilities have grown exponentially, for example in May 2014 GDELT processed 3,928,926 where as in May 2016 it processed 6,198,461. GDELT continues to evolve and integrate advanced machine learning tools including Google Cloud Vision, a data store that became available in February 2016.
- The GDELT Events Database [EVENTS]: Global Events, 1979 to present.
- The GDELT Global Knowledge Graph [GKG] : GDELT’s Knowledge Graph, April 2013 to present.
- The GDELT Full Text API [Full Text API]: Full text search for all monitored sources within a 24 hour window. Output includes raw data, sentiment, and word counts.
- The GDELT Visual Knowledge Graph VGKG: Google Cloud Vision API output for every indexed piece of GKG media.
My main motivation for this building package is simple, GDELT IS INCREDIBLE!!
Accessing GDELT’s data gold is doable but either difficult or costly.
Currently, anyone proficient in SQL can access the data via Google Big Query. The problem is that even if you want to use SQL, users have to pay above a certain API call threshold and then you still need another layer of connectivity to explore the data in R.
Although R has two existing packages that allow users to interact with portions of GDELT’s data outside of Big Query:
These packages are old, incomplete and difficult to use. It is my hope
that gdelt2r
allows the R user easy access to GDELT’s data allowing
for faster, more exhilarating data visualizations and analysis!
This package may require the development versions of devtools
and
dplyr
so, to be safe, before installation run the following code:
devtools::install_github("hadley/devtools")
devtools::install_github("hadley/dplyr")
devtools::install_github("hafen/trelliscopejs")
devtools::install_github("abresler/gdeltr2")
The package currently consists of two function families, data acquisition and data tidying.
The package’s data acquisition functions begin with get_urls_
for
acquiring data store log information, get_codes_
for acquiring code
books and get_data_
for downloading and reading data.
The data tidying functions begin with parse_
and they apply to a
number of the features in the gkg and vgkg data stores that will
get described in further detail farther below.
gdeltr2
requires an internet connection for any data retrieval function- The package’s
get_gkg_data
andget_gdelt_event_
functions are extremely bandwidth intensive given the download sizes of these data stores. - The package is very memory intensive given the unzipped size of the
GDELT Event
,Global Knowledge Graph
andVisual Knowledge Graph
files.
- Full Text API
get_data_ft_v2_api()
- retrieves descriptive data from V2 API see this blog post for more on how to use thisget_data_ft_trending_terms()
- retrieves trending terms over the last 15 minutes. The term can be a GDELT tag, location, person, place, or thing.
- GDELT
Events
get_urls_gdelt_event_log()
- retrieves descriptive data and urls for all available GDELT event downloads.get_data_gdelt_period_event_totals()
- retrieves summary event data for a given a period [monthly, daily, yearly]; this can be grouped by country.get_data_gdelt_periods_event()
- retrieves GDELT event data for a specified periods. Periods are by 4 digit years from 1979 to 2005, 6 digit year month from January 2006 to March 2013, and 8 digit year month day code thereafter.
- Global Knowledge
Graph
get_urls_gkg_15_minute_log
- retrieves GKG 15 minute capture logs; data begins February 18th, 2015 for the three table types- gkg: This is the full gkg data set and contains columns that may require further data tidying tying to a GKG Record ID
- export: This data replicates the output contained in the GDELT event table for processed documents tying to a Global Event ID
- mentions: This data contains information surrounding the processed events, including sources, tone, location within a document and this tying to a Global Event ID
get_urls_gkg_daily_summaries
- retrieves daily gkg capture logs; data begins in April of 2013.- Each day contains a count file and the full gkg output.
get_data_gkg_day_summary()
retrieves GKG daily summary data for specified date(s), this captures count files byis_count_file = T
get_data_gkg_days_detailed()
- retrieves GKG data from the data cached every 15 minutes for specified date(s) for a given table. The table can be one ofc('gkg', 'export', 'mentions')
. This function may require significant bandwidth and memory given the potential file sizes.
- American Television Knowledge
Graph
get_urls_gkg_tv_daily_summaries()
- retrieves available datesget_data_gkg_tv_days()
- retrieves data for specified dates. Note that the data is on a 2 day lag so the most recent data is 2 days old.
- Location Sentiment
API
get_codes_stability_locations()
- retrieves possible locationsget_data_locations_instability_api()
- retrieves instability data for a specified location and time period. Variables can bec('instability', 'conflict', 'protest', 'tone', 'relative mentions')
Time periods can bec('daily', '15 minutes')
, fordaily
the data is the average per day of the specified variable for the last 180 days and for15 minutes
the data is the variable reading every 15 minutes for the last week.
- Visual Global Knowledge
Graph
get_urls_vgkg()
- retrieves VGKG log urlsget_data_vgkg_dates()
- retrieves VGKG data from the data cached every 15 minutes for specified date(s).
Many of the columns in the GKG output are concatenated and require further parsing for proper analysis. These function tidy those concatenated columns, note given file sizes the functions may be time consuming.
You can refer to this blog post that discusses how to use this functionality.
parse_gkg_mentioned_names()
- parses mentioned namesparse_gkg_mentioned_people()
- parses mentioned peopleparse_gkg_mentioned_organizations()
- parses mentioned organizationsparse_gkg_mentioned_numerics()
- parses mentioned numeric figuresparse_gkg_mentioned_themes()
- parses mentioned themes, ties to CAMEO Theme Codesparse_gkg_mentioned_gcams()
- parses resolved GCAMs ties GCAM code book.parse_gkg_mentioned_dates()
- parses mentioned dates according to the GKG schemeparse_xml_extras()
- parses XML metadata from GKG table
parse_vgkg_labels()
- parses and labels learned itemsparse_vgkg_landmarks()
- parses and geocodes learned landmarksparse_vgkg_logos()
- parses learned logosparse_vgkg_safe_search()
- parses safe search likelihoodsparse_vgkg_faces()
- parses learned facesparse_vgkg_ocr()
- parses OCR’d itemsparse_vgkg_languages()
- parses languages
All these the GDELT and GKG datasets contain a whole host of codes that need resolution to be human readable. The package contains easy access to these code books to allow for that resolution. These functions provide access to the code books:
get_codes_gcam()
- retrieves Global Content Analysis Measurement [GCAM] codesget_codes_cameo_country()
- retrieves Conflict and Mediation Event Observations [CAMEO] country codesget_codes_cameo_ethnic()
- retrieves cameo ethnic codesget_codes_cameo_events()
- retrieves cameo event codesget_codes_gkg_themes()
- retrieves gkg theme codesget_codes_cameo_type()
- retrieves cameo type codesget_codes_cameo_religion()
- retrieves cameo religion codesget_codes_cameo_known_groups()
- retrieves cameo known group codes
- Vignettes
- Generic data visualization functions
- Generic machine learning and data analysis functions
bigrquery
integration- Third party database mirror
library(gdeltr2)
load_needed_packages(c('dplyr', 'magrittr'))
events_1989 <-
get_data_gdelt_periods_event(
periods = 1989,
return_message = T
)
gkg_summary_count_may_15_16_2014 <-
get_data_gkg_days_summary(
dates = c('2014-05-15', '2014-05-16'),
is_count_file = T,
return_message = T
)
gkg_full_june_2_2016 <-
get_data_gkg_days_detailed(
dates = c("2016-06-02"),
table_name = 'gkg',
return_message = T
)
gkg_mentions_may_12_2016 <-
get_data_gkg_days_detailed(
dates = c("2016-05-12"),
table_name = 'mentions',
return_message = T
)
gkg_tv_test <-
get_data_gkg_tv_days(dates = c("2016-06-17", "2016-06-16"))
load_needed_packages(c('magrittr'))
gkg_test <-
get_data_gkg_days_detailed(only_most_recent = T, table_name = 'gkg')
gkg_sample_df <-
gkg_test %>%
sample_n(1000)
xml_extra_df <-
gkg_sample_df %>%
parse_gkg_xml_extras(filter_na = T, return_wide = F)
article_tone <-
gkg_sample_df %>%
parse_gkg_mentioned_article_tone(filter_na = T, return_wide = T)
gkg_dates <-
gkg_sample_df %>%
parse_gkg_mentioned_dates(filter_na = T, return_wide = T)
gkg_gcams <-
gkg_sample_df %>%
parse_gkg_mentioned_gcams(filter_na = T, return_wide = T)
gkg_event_counts <-
gkg_sample_df %>%
parse_gkg_mentioned_event_counts(filter_na = T, return_wide = T)
gkg_locations <-
gkg_sample_df %>%
parse_gkg_mentioned_locations(filter_na = T, return_wide = T)
gkg_names <-
gkg_sample_df %>%
parse_gkg_mentioned_names(filter_na = T, return_wide = T)
gkg_themes <-
gkg_sample_df %>%
parse_gkg_mentioned_themes(theme_column = 'charLoc',
filter_na = T, return_wide = T)
gkg_numerics <-
gkg_sample_df %>%
parse_gkg_mentioned_numerics(filter_na = T, return_wide = T)
gkg_orgs <-
gkg_sample_df %>%
parse_gkg_mentioned_organizations(organization_column = 'charLoc',
filter_na = T, return_wide = T)
gkg_quotes <-
gkg_sample_df %>%
parse_gkg_mentioned_quotes(filter_na = T, return_wide = T)
gkg_people <-
gkg_sample_df %>%
parse_gkg_mentioned_people(people_column = 'charLoc', filter_na = T, return_wide = T)
vgkg_test <-
get_data_vgkg_dates(only_most_recent = T)
vgkg_sample <-
vgkg_test %>%
sample_n(1000)
vgkg_labels <-
vgkg_sample %>%
parse_vgkg_labels(return_wide = T)
faces_test <-
vgkg_sample %>%
parse_vgkg_faces(return_wide = T)
landmarks_test <-
vgkg_sample %>%
parse_vgkg_landmarks(return_wide = F)
logos_test <-
vgkg_sample %>%
parse_vgkg_logos(return_wide = T)
ocr_test <-
vgkg_sample %>%
parse_vgkg_ocr(return_wide = F)
search_test <-
vgkg_sample %>%
parse_vgkg_safe_search(return_wide = F)
location_codes <-
get_codes_stability_locations()
location_test <-
get_data_locations_instability_api(
location_ids = c("US", "IS", "CA", "TU", "CH", "UK", "IR"),
use_multi_locations = c(T, F),
variable_names = c('instability', 'tone', 'protest', 'conflict'),
time_periods = c('daily'),
nest_data = F,
days_moving_average = NA,
return_wide = T,
return_message = T
)
location_test %>%
dplyr::filter(codeLocation %>% is.na()) %>%
group_by(nameLocation) %>%
summarise_at(.vars = c('instability', 'tone', 'protest', 'conflict'),
funs(mean)) %>%
arrange(desc(instability))