Creating an international university league table based on a good research practice.
The key R files are:
data.management.R
takes the raw data from Scopus and attempts to create consistent names for institutions.WhoCitesEquator.Rmd
is the Rmarkdown file for the complete analyses.ui.R
andserver.R
make the Shiny page with the interactive results.
The two key data sets (both available in csv and RData format) are:
1. Papers.for.Analysis.500 which are a random sample of 500 of the 47,876 papers used to create the league tables, with the variables:
- doi
- affiliation
- affid, Scopus affiliation ID number
- country
- year, 2016 or 2017
- Region
- weight, fraction count of authors in the range (0,1]
2. Processed.papers.for.Shiny which is the summary data used to create the interactive league tables in Shiny, with the variables:
- year, 2016 or 2017
- country
- Region
- affiliation
- wsum, sum of fractional papers per university which determines the rank
- n, number of papers
- rank, rank per year
- cluster.member, estimated cluster based on
wsum
from 1 (lowest) to 5 (highest) - p10, bootstrap probability of being in the top 10
- rlower, bootstrap lower 95% confidence interval
- rupper, bootstrap upper 95% confidence interval
3. pubmed.frame which details the EQUATOR papers used to count citations:
- type, type of EQUATOR paper: CONSORT, PRIMSA or STROBE
- title, paper title
- journal, journal title
- date, date of publication
- pmid, pubmed ID number
- year, year published