Description Usage Arguments Value Author(s) See Also Examples
This function computes the Ji metric for a given term from a bibliographic dataset and returns its annual evolution within the timeframe specified. This metric indicates how much the term (e.g. publication title, software name) is cited simulteaneously in the references of both corpora and is thus important for cross-fertilization between the two communities. This function is run on the bibliographic dataset (created with create_bibliography
) and is thus useful before graph creation or when the term to be searched is not the title of a node in the resulting graph. For instance, if the user knows that a publication (or, e.g. software or scientific database referenced only through a URL or grey literature) is cited and may have an impact on cross-fertilization between the two communities (the literature of which is represented by the two corpora) but does not have its own entry in the bibliographic database and would therefore not be featured as a node in the graph created by build_graph
, the compute_Ji
function can be used to assess its importance.
1 | compute_Ji(db, pubtitle, labels, from = -1, to = -1)
|
db |
Bibliographic database created with created_bibliography. |
pubtitle |
Publication title, or more generally term to be searched (e.g. software name). |
labels |
Labels (i.e. names) of the two corpora featured in the graph. |
from |
Start year of the time window considered (included) |
to |
End year of the time window considered (*excluded*) |
Dataframe containing year and Ji metric value.
Christian Vincenot (christian@vincenot.biz)
1 2 3 4 5 6 7 8 9 | labels<-c("Corpus1","Corpus2")
# Build a bibliographical dataset from Scopus exports
db<-create_bibliography(corpora_files=c(tempfi1,tempfi2),
labels=labels, keywords=NA)
# Compute Ji
compute_Ji(db, "Title1", labels, from=1990, to=2018)
|
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.