# What algorithm I need to find n-grams?

What algorithm is used for finding ngrams?

Supposing my input data is an array of words and the size of the ngrams I want to find, what algorithm I should use?

I'm asking for code, with preference for R. The data is stored in database, so can be a plgpsql function too. Java is a language I know better, so I can "translate" it to another language.

I'm not lazy, I'm only asking for code because I don't want to reinvent the wheel trying to do an algorithm that is already done.

Edit: it's important know how many times each n-gram appears.

Edit 2: there is a R package for N-GRAMS?

• there's a text mining package (`tm`) and a `textcat` package ... `library("sos"); findFn("n-gram")` Nov 17, 2011 at 4:21
• related/near-duplilcate question
– Ben
May 30, 2013 at 4:05
• Feb 26, 2017 at 15:39

If you want to use `R` to identify ngrams, you can use the `tm` package and the `RWeka` package. It will tell you how many times the ngram occurs in your documents, like so:

``````  library("RWeka")
library("tm")

data("crude")

BigramTokenizer <- function(x) NGramTokenizer(x, Weka_control(min = 2, max = 2))
tdm <- TermDocumentMatrix(crude, control = list(tokenize = BigramTokenizer))

inspect(tdm[340:345,1:10])

A term-document matrix (6 terms, 10 documents)

Non-/sparse entries: 4/56
Sparsity           : 93%
Maximal term length: 13
Weighting          : term frequency (tf)

Docs
Terms           127 144 191 194 211 236 237 242 246 248
and said        0   0   0   0   0   0   0   0   0   0
and security    0   0   0   0   0   0   0   0   1   0
and set         0   1   0   0   0   0   0   0   0   0
and six-month   0   0   0   0   0   0   0   1   0   0
and some        0   0   0   0   0   0   0   0   0   0
and stabilise   0   0   0   0   0   0   0   0   0   1
``````

For anyone still interested in this topic, there is a package on the cran already.

ngram: An n-gram Babbler

This package offers utilities for creating, displaying, and "babbling" n-grams. The babbler is a simple Markov process.

http://cran.r-project.org/web/packages/ngram/index.html

Usually the n-grams are calculated to find its frequency distribution. So Yes, it does matter how many times the n-grams appear.

Also you want character level n-gram or word level n-gram. I have written a code for finding the character level n-gram from a csv file in r. I used package 'tau' for that. You can find it here.

Also here is the code I wrote:

`````` library(tau)
r<-textcnt(temp, method="ngram",n=4L,split = "[[:space:][:punct:]]+", decreasing=TRUE)
a<-data.frame(counts = unclass(r), size = nchar(names(r)))
b<-split(a,a\$size)
b
``````

Cheers!

EDIT: Sorry, this is PHP. I wasn't quite sure what you wanted. I don't know it in java but perhaps the following could be converted easily enough.

Well it depends on the size of the ngrams you want.

I've had quite a lot of success with single letters (especially accurate for language detection), which is easy to get with:

``````\$letters=str_split(preg_replace('/[^a-z]/', '', strtolower(\$text)));
\$letters=array_count_values(\$letters);
``````

Then there is the following function for calculating ngrams from a word:

``````function getNgrams(\$word, \$n = 3) {
\$ngrams = array();
\$len = strlen(\$word);
for(\$i = 0; \$i < \$len; \$i++) {
if(\$i > (\$n - 2)) {
\$ng = '';
for(\$j = \$n-1; \$j >= 0; \$j--) {
\$ng .= \$word[\$i-\$j];
}
\$ngrams[] = \$ng;
}
}
return \$ngrams;
}
``````

The source of the above is here, which I recommend you read, and they have lots of functions to do exactly what you want.

You can use ngram package. One example of its usage is http://amunategui.github.io/speak-like-a-doctor/

• Hello, welcome to SO. This answer relies almost completely on external links. Should they ever become invalid, your answer would become useless. So please edit it and add at least a summary of what can be found there. Thank you! Mar 31, 2016 at 16:35

Here is a quick example. It's quite fast look at the benchmark of the vignette.

``````require(ngram)

"hi i am ig" %>% ngram(n = 2) %>% get.ngrams()
``````

``````int ngrams = 9;// let's say 9-grams since it's the length of "bonasuera"...
String string = "bonasuera";
for (int j=1; j <= ngrams;j++) {
for (int k=0; k < string.length()-j+1;k++ )
System.out.print(string.substring(k,k+j) + " ");
System.out.println();
}
``````

output :

``````b o n a s u e r a
bo on na as su ue er ra
bon ona nas asu sue uer era
bona onas nasu asue suer uera
bonas onasu nasue asuer suera
bonasu onasue nasuer asuera
bonasue onasuer nasuera
bonasuer onasuera
bonasuera
``````