quanteda (version 4.0.1)

tokens_ngrams: Create n-grams and skip-grams from tokens

Description

Create a set of n-grams (tokens in sequence) from already tokenized text objects, with an optional skip argument to form skip-grams. Both the n-gram length and the skip lengths take vectors of arguments to form multiple lengths or skips in one pass. Implemented in C++ for efficiency.

Usage

tokens_ngrams(x, n = 2L, skip = 0L, concatenator = concat(x))

char_ngrams(x, n = 2L, skip = 0L, concatenator = "_")

tokens_skipgrams(x, n, skip, concatenator = concat(x))

Value

a tokens object consisting a list of character vectors of n-grams, one list element per text, or a character vector if called on a simple character vector

Arguments

x

a tokens object, or a character vector, or a list of characters

n

integer vector specifying the number of elements to be concatenated in each n-gram. Each element of this vector will define a \(n\) in the \(n\)-gram(s) that are produced.

skip

integer vector specifying the adjacency skip size for tokens forming the n-grams, default is 0 for only immediately neighbouring words. For skipgrams, skip can be a vector of integers, as the "classic" approach to forming skip-grams is to set skip = \(k\) where \(k\) is the distance for which \(k\) or fewer skips are used to construct the \(n\)-gram. Thus a "4-skip-n-gram" defined as skip = 0:4 produces results that include 4 skips, 3 skips, 2 skips, 1 skip, and 0 skips (where 0 skips are typical n-grams formed from adjacent words). See Guthrie et al (2006).

concatenator

character for combining words, default is _ (underscore) character

Details

Normally, these functions will be called through [tokens](x, ngrams = , ...), but these functions are provided in case a user wants to perform lower-level n-gram construction on tokenized texts.

tokens_skipgrams() is a wrapper to tokens_ngrams() that requires arguments to be supplied for both n and skip. For \(k\)-skip skip-grams, set skip to 0:\(k\), in order to conform to the definition of skip-grams found in Guthrie et al (2006): A \(k\) skip-gram is an n-gram which is a superset of all n-grams and each \((k-i)\) skip-gram until \((k-i)==0\) (which includes 0 skip-grams).

References

Guthrie, David, Ben Allison, Wei Liu, Louise Guthrie, and Yorick Wilks. 2006. "A Closer Look at Skip-Gram Modelling." https://aclanthology.org/L06-1210/

Examples

Run this code
# ngrams
tokens_ngrams(tokens(c("a b c d e", "c d e f g")), n = 2:3)

toks <- tokens(c(text1 = "the quick brown fox jumped over the lazy dog"))
tokens_ngrams(toks, n = 1:3)
tokens_ngrams(toks, n = c(2,4), concatenator = " ")
tokens_ngrams(toks, n = c(2,4), skip = 1, concatenator = " ")
# skipgrams
toks <- tokens("insurgents killed in ongoing fighting")
tokens_skipgrams(toks, n = 2, skip = 0:1, concatenator = " ")
tokens_skipgrams(toks, n = 2, skip = 0:2, concatenator = " ")
tokens_skipgrams(toks, n = 3, skip = 0:2, concatenator = " ")

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