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Repository Details

Analyse citation data from Google Scholar

scholar

CRAN status R-CMD-check

The scholar R package provides functions to extract citation data from Google Scholar. In addition to retrieving basic information about a single scholar, the package also allows you to compare multiple scholars and predict future h-index values.

Development of the scholar package is ongoing with GuangchuangYu acting as maintainer. Please continue to file issues and make pull requests against https://github.com/jkeirstead/scholar going forwards.

Installation

# from CRAN
install.packages("scholar")

# from GitHub
if(!requireNamespace('remotes')) install.packages("remotes")
remotes::install_github('jkeirstead/scholar')

Basic features

Individual scholars are referenced by a unique character string, which can be found by searching for an author and inspecting the resulting scholar homepage. For example, the profile of physicist Richard Feynman is located at http://scholar.google.com/citations?user=B7vSqZsAAAAJ and so his unique id is B7vSqZsAAAAJ.

Basic information on a scholar can be retrieved as follows:

# Define the id for Richard Feynman
id <- 'B7vSqZsAAAAJ'

# Get his profile and print his name
l <- get_profile(id)
l$name 

# Get his citation history, i.e. citations to his work in a given year 
get_citation_history(id)

# Get his publications (a large data frame)
get_publications(id)

Additional functions allow the user to query the publications list, e.g. get_num_articles, get_num_distinct_journals, get_oldest_article, get_num_top_journals. Note that Google doesn't explicit categorize publications as journal articles, book chapters, etc, and so journal or article in these function names is just a generic term for a publication.

Comparing scholars

You can also compare multiple scholars, as shown below. Note that these two particular scholars are rather prolific and these queries will take a very long time to run.

# Compare Feynman and Stephen Hawking
ids <- c('B7vSqZsAAAAJ', 'qj74uXkAAAAJ')

# Get a data frame comparing the number of citations to their work in
# a given year 
compare_scholars(ids)

# Compare their career trajectories, based on year of first citation
compare_scholar_careers(ids)

Predicting future h-index values

Finally users can predict the future h-index of a scholar, based on the method of Acuna et al.. Since the method was originally calibrated on data from neuroscientists, it goes without saying that, if the scholar is from another discipline, then the results should be taken with a large pinch of salt. A more general critique of the original paper is available here. Still, it's a bit of fun.

## Predict h-index of original method author, Daniel Acuna
id <- 'GAi23ssAAAAJ'
predict_h_index(id)