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bibliometrix

An R-tool for comprehensive science mapping analysis.

Overview

bibliometrix package provides a set of tools for quantitative research in bibliometrics and scientometrics.

Bibliometrics turns the main tool of science, quantitative analysis, on itself. Essentially, bibliometrics is the application of quantitative analysis and statistics to publications such as journal articles and their accompanying citation counts. Quantitative evaluation of publication and citation data is now used in almost all scientific fields to evaluate growth, maturity, leading authors, conceptual and intellectual maps, trends of a scientific community.

Bibliometrics is also used in research performance evaluation, especially in university and government labs, and also by policymakers, research directors and administrators, information specialists and librarians, and scholars themselves.

bibliometrix supports scholars in three key phases of analysis:

  • Data importing and conversion to R format;

  • Bibliometric analysis of a publication dataset;

  • Building and plotting matrices for co-citation, coupling, collaboration, and co-word analysis. Matrices are the input data for performing network analysis, multiple correspondence analysis, and any other data reduction techniques.

Suggested citation

If you use this package for your research, we would appreciate a citation.

To cite bibliometrix in publications, please use:

Aria, M. & Cuccurullo, C. (2017) bibliometrix: An R-tool for comprehensive science mapping analysis, Journal of Informetrics, 11(4), pp 959-975, Elsevier.

Community

Official website: http://www.bibliometrix.org

CRAN page: https://cran.r-project.org/package=bibliometrix

GitHub repository: https://github.com/massimoaria/bibliometrix

Tutorial: http://htmlpreview.github.io/?https://github.com/massimoaria/bibliometrix/master/vignettes/bibliometrix-vignette.html

Slides: https://www.slideshare.net/MassimoAria/bibliometrix-phd-seminar

Installation

Stable version from CRAN

install.packages("bibliometrix")

Or development version from GitHub

install.packages("devtools")
devtools::install_github("massimoaria/bibliometrix")

Load bibliometrix

library('bibliometrix')

Data loading and converting

The export file can be read by R using the function readFiles:

## An example from bibliometrix vignettes

D <- readFiles("http://www.bibliometrix.org/datasets/savedrecs.bib")

D is a large character vector. readFiles argument contains the name of files downloaded from SCOPUS, Clarivate Analytics WOS, or Cochrane CDSR website.

The function readFiles combines all the text files onto a single large character vector. Furthermore, the format is converted into UTF-8.

es. D <- readFiles("file1.txt","file2.txt", ...)

The object D can be converted in a data frame using the function convert2df:

M <- convert2df(D, dbsource = "isi", format = "bibtex")

convert2df creates a bibliographic data frame with cases corresponding to manuscripts and variables to Field Tag in the original export file.

Each manuscript contains several elements, such as authors' names, title, keywords and other information. All these elements constitute the bibliographic attributes of a document, also called metadata.

Data frame columns are named using the standard Clarivate Analytics WoS Field Tag codify (http://www.bibliometrix.org/documents/Field_Tags_bibliometrix.pdf).

Bibliometric Analysis

The first step is to perform a descriptive analysis of the bibliographic data frame.

The function biblioAnalysis calculates main bibliometric measures using this syntax:

results <- biblioAnalysis(M, sep = ";")

The function biblioAnalysis returns an object of class "bibliometrix".

To summarize main results of the bibliometric analysis, use the generic function summary. It displays main information about the bibliographic data frame and several tables, such as annual scientific production, top manuscripts per number of citations, most productive authors, most productive countries, total citation per country, most relevant sources (journals) and most relevant keywords.

summary accepts two additional arguments. k is a formatting value that indicates the number of rows of each table. pause is a logical value (TRUE or FALSE) used to allow (or not) pause in screen scrolling. Choosing k=10 you decide to see the first 10 Authors, the first 10 sources, etc.

S <- summary(object = results, k = 10, pause = FALSE)

Some basic plots can be drawn using the generic function plot:

plot(x = results, k = 10, pause = FALSE)

Bibliographic network matrices

Manuscript's attributes are connected to each other through the manuscript itself: author(s) to journal, keywords to publication date, etc.

These connections of different attributes generate bipartite networks that can be represented as rectangular matrices (Manuscripts x Attributes).

Furthermore, scientific publications regularly contain references to other scientific works. This generates a further network, namely, co-citation or coupling network.

These networks are analyzed in order to capture meaningful properties of the underlying research system, and in particular to determine the influence of bibliometric units such as scholars and journals.

biblioNetwork function

The function biblioNetwork calculates, starting from a bibliographic data frame, the most frequently used networks: Coupling, Co-citation, Co-occurrences, and Collaboration.

biblioNetwork uses two arguments to define the network to compute:

  • analysis argument can be "co-citation", "coupling", "collaboration", or "co-occurrences".

  • network argument can be "authors", "references", "sources", "countries", "universities", "keywords", "author_keywords", "titles" and "abstracts".

i.e. the following code calculates a classical co-citation network:

NetMatrix <- biblioNetwork(M, analysis = "co-citation", network = "references", sep = ".  ")

Visualizing bibliographic networks

All bibliographic networks can be graphically visualized or modeled.

Using the function networkPlot, you can plot a network created by biblioNetwork using R routines.

The main argument of networkPlot is type. It indicates the network map layout: circle, kamada-kawai, mds, etc.

In the following, we propose some examples.

Country Scientific Collaboration

# Create a country collaboration network

M <- metaTagExtraction(M, Field = "AU_CO", sep = ";")
NetMatrix <- biblioNetwork(M, analysis = "collaboration", network = "countries", sep = ";")

# Plot the network
net=networkPlot(NetMatrix, n = dim(NetMatrix)[1], Title = "Country Collaboration", type = "circle", size=TRUE, remove.multiple=FALSE,labelsize=0.8)

Co-Citation Network

# Create a co-citation network

NetMatrix <- biblioNetwork(M, analysis = "co-citation", network = "references", sep = ".  ")

# Plot the network
net=networkPlot(NetMatrix, n = 30, Title = "Co-Citation Network", type = "fruchterman", size=T, remove.multiple=FALSE, labelsize=0.7,edgesize = 5)

Keyword co-occurrences

# Create keyword co-occurrences network

NetMatrix <- biblioNetwork(M, analysis = "co-occurrences", network = "keywords", sep = ";")

# Plot the network
net=networkPlot(NetMatrix, normalize="association", weighted=T, n = 30, Title = "Keyword Co-occurrences", type = "fruchterman", size=T,edgesize = 5,labelsize=0.7)

Co-Word Analysis: The conceptual structure of a field

The aim of the co-word analysis is to map the conceptual structure of a framework using the word co-occurrences in a bibliographic collection.

The analysis can be performed through dimensionality reduction techniques such as Multidimensional Scaling (MDS), Correspondence Analysis (CA) or Multiple Correspondence Analysis (MCA).

Here, we show an example using the function conceptualStructure that performs a CA or MCA to draw a conceptual structure of the field and K-means clustering to identify clusters of documents which express common concepts. Results are plotted on a two-dimensional map.

conceptualStructure includes natural language processing (NLP) routines (see the function termExtraction) to extract terms from titles and abstracts. In addition, it implements the Porter's stemming algorithm to reduce inflected (or sometimes derived) words to their word stem, base or root form.


# Conceptual Structure using keywords (method="CA")

CS <- conceptualStructure(M,field="ID", method="CA", minDegree=4, k.max=8, stemming=FALSE, labelsize=10, documents=10)

Historical Direct Citation Network

The historiographic map is a graph proposed by E. Garfield to represent a chronological network map of most relevant direct citations resulting from a bibliographic collection.

The function histNetwork generates a chronological direct citation network matrix which can be plotted using histPlot:

# Create a historical citation network

histResults <- histNetwork(M, sep = ".  ")

# Plot a historical co-citation network
net <- histPlot(histResults, n=20, size = FALSE,label=TRUE, arrowsize = 0.5)

Main Authors' references (about bibliometrics)

Aria, M. & Cuccurullo, C. (2017). bibliometrix: An R-tool for comprehensive science mapping analysis, Journal of Informetrics, 11(4), pp 959-975, Elsevier, DOI: 10.1016/j.joi.2017.08.007 (https://doi.org/10.1016/j.joi.2017.08.007).

Cuccurullo, C., Aria, M., & Sarto, F. (2016). Foundations and trends in performance management. A twenty-five years bibliometric analysis in business and public administration domains, Scientometrics, DOI: 10.1007/s11192-016-1948-8 (https://doi.org/10.1007/s11192-016-1948-8).

Cuccurullo, C., Aria, M., & Sarto, F. (2015). Twenty years of research on performance management in business and public administration domains. Presentation at the Correspondence Analysis and Related Methods conference (CARME 2015) in September 2015 (http://www.bibliometrix.org/documents/2015Carme_cuccurulloetal.pdf).

Sarto, F., Cuccurullo, C., & Aria, M. (2014). Exploring healthcare governance literature: systematic review and paths for future research. Mecosan (http://www.francoangeli.it/Riviste/Scheda_Rivista.aspx?IDarticolo=52780&lingua=en).

Cuccurullo, C., Aria, M., & Sarto, F. (2013). Twenty years of research on performance management in business and public administration domains. In Academy of Management Proceedings (Vol. 2013, No. 1, p. 14270). Academy of Management (https://doi.org/10.5465/AMBPP.2013.14270abstract).

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Version

Install

install.packages('bibliometrix')

Monthly Downloads

33,844

Version

2.0.2

License

GPL-3

Maintainer

Massimo Aria

Last Published

June 5th, 2025

Functions in bibliometrix (2.0.2)

KeywordGrowth

Yearly occurrences of top keywords/terms
cocMatrix

Co-occurrence matrix
histNetwork

Historical co-citation network
biblioshiny

Shiny UI for bibliometrix package
bibliometrix-package

bibliometrix
isiCollection

"Bibliometrics" manuscripts from ISI WOS.
isibib2df

Convert an Clarivate Analitycs WoS Export file into a data frame
pubmed2df

Convert a PubMed/MedLine collection into a data frame
readFiles

Load a sequence of ISI or SCOPUS Export files into a large character object
thematicEvolution

Perform a Thematic Evolution Analysis
biblio_df

Dataset of "Bibliometrics" manuscripts.
histPlot

Plotting historical co-citation network
lotka

Lotka's law coefficient estimation
mergeDbSources

Merge bibliographic data frames from SCOPUS and ISI WOS
dominance

Authors' dominance ranking
cochrane2df

Convert a Cochrane Database Export file into a data frame
thematicMap

Create a thematic map
countries

Index of Countries.
plot.bibliometrix

Plotting bibliometric analysis results
convert2df

Convert a Clarivate Analytics WoS, SCOPUS and COCHRANE Database Export files or RISmed PubMed/MedLine object into a data frame
plotThematicEvolution

Plot a Thematic Evolution Analysis
networkStat

Calculating network summary statistics
normalizeSimilarity

Calculate similarity indices
duplicatedMatching

Searching of duplicated records in a bibliographic database
keywordAssoc

ID and DE keyword associations
timeslice

Bibliographic data frame time slice
garfield

Eugene Garfield's manuscripts.
metaTagExtraction

Meta-Field Tag Extraction
scopus2df

Convert a SCOPUS Export file into a data frame
localCitations

Author local citations
summary.bibliometrix

Summarizing bibliometric analysis results
networkPlot

Plotting Bibliographic networks
summary.bibliometrix_netstat

Summarizing network analysis results
scopusCollection

"Bibliometrics" manuscripts from SCOPUS.
scientometrics

"Co-citation analysis" and "Coupling analysis" manuscripts.
scientometrics_text

"Co-citation analysis" and "Coupling analysis" manuscripts.
tableTag

Tabulate elements from a Tag Field column
idByAuthor

Get Complete Author Information and ID from Scopus
isi2df

Convert an ISI WoK Export file into a data frame
termExtraction

Term extraction tool from textual fields of a manuscript
trim

Deleting leading and ending white spaces
retrievalByAuthorID

Get Author Content on SCOPUS by ID
trim.leading

Deleting leading white spaces
rpys

Reference Publication Year Spectroscopy
sourceGrowth

Number of documents published annually per Top Sources
stopwords

List of English stopwords.
Hindex

h-index calculation
biblio

Dataset of "Bibliometrics" scientific documents.
biblioAnalysis

Bibliometric Analysis
conceptualStructure

Creating and plotting conceptual structure map of a scientific field
biblioNetwork

Creating Bibliographic networks
bradford

Bradford's law
citations

Citation frequency distribution