Description Usage Arguments Details Value See Also Examples
View source: R/thematicEvolution.R
It performs a Thematic Evolution Analysis based on co-word network analysis and clustering. The methodology is inspired by the proposal of Cobo et al. (2011).
1 2 3 4 5 6 7 8 9 10 11 12 | thematicEvolution(
M,
field = "ID",
years,
n = 250,
minFreq = 2,
size = 0.5,
ngrams = 1,
stemming = FALSE,
n.labels = 1,
repel = TRUE
)
|
M |
is a bibliographic data frame obtained by the converting function |
field |
is a character object. It indicates the content field to use. Field can be one of c=("ID","DE","TI","AB"). Default value is |
years |
is a numeric vector of two or more unique cut points. |
n |
is numerical. It indicates the number of words to use in the network analysis |
minFreq |
is numerical. It indicates the min frequency of words included in to a cluster. |
size |
is numerical. It indicates del size of the cluster circles and is a number in the range (0.01,1). |
ngrams |
is an integer between 1 and 4. It indicates the type of n-gram to extract from texts.
An n-gram is a contiguous sequence of n terms. The function can extract n-grams composed by 1, 2, 3 or 4 terms. Default value is |
stemming |
is logical. If it is TRUE the word (from titles or abstracts) will be stemmed (using the Porter's algorithm). |
n.labels |
is integer. It indicates how many labels associate to each cluster. Default is |
repel |
is logical. If it is TRUE ggplot uses geom_label_repel instead of geom_label. |
thematicEvolution
starts from two or more thematic maps created by thematicMap
function.
Reference:
Cobo, M. J., Lopez-Herrera, A. G., Herrera-Viedma, E., & Herrera, F. (2011). An approach for detecting, quantifying,
and visualizing the evolution of a research field: A practical application to the fuzzy sets theory field. Journal of Informetrics, 5(1), 146-166.
a list containing:
nets | The thematic nexus graph for each comparison | |
incMatrix | Some useful statistics about the thematic nexus |
thematicMap
function to create a thematic map based on co-word network analysis and clustering.
cocMatrix
to compute a bibliographic bipartite network.
networkPlot
to plot a bibliographic network.
1 2 3 4 | data(scientometrics, package = "bibliometrixData")
years=c(2000)
nexus <- thematicEvolution(scientometrics,field="ID", years=years, n=100,minFreq=2)
|
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