! This is the readme for markov-strings 3.x.x. - The docs for the older 2.x.x are here !
A simplistic Markov chain text generator. Give it an array of strings, and it will output a randomly generated string.
A rust port of this library is available here.
This module was created for the Mastodon bot @BelgicaNews.
Built and tested with NodeJS 18
npm install --save markov-strings
import Markov from 'markov-strings'
// Not recommended: you can use `require()` if needed, instead of `import`
// const Markov = require('markov-strings').default
// Build the Markov generator
const markov = new Markov({ stateSize: 2 })
// Add data for the generator
const data = [/* insert a few hundreds/thousands sentences here */]
markov.addData(data)
const options = {
maxTries: 20, // Give up if I don't have a sentence after 20 tries (default is 10)
// If you want to get seeded results, you can provide an external PRNG.
prng: Math.random, // Default value if left empty
// You'll often need to manually filter raw results to get something that fits your needs.
filter: (result) => {
return result.string.split(' ').length >= 5 && // At least 5 words
result.string.endsWith('.') // End sentences with a dot.
}
}
// Generate a sentence
const result = markov.generate(options)
console.log(result)
/*
{
string: 'lorem ipsum dolor sit amet etc.',
score: 42,
tries: 5,
refs: [ an array of objects ]
}
*/
Markov-strings is built in TypeScript, and exports several types to help you. Take a look at the source to see how it works.
Create a generator instance.
{
stateSize: number
}
The stateSize
is the number of words for each "link" of the generated sentence. 1
will output gibberish sentences without much sense. 2
is a sensible default for most cases. 3
and more can create good sentences if you have a corpus that allows it.
To function correctly, the Markov generator needs its internal data to be correctly structured. .addData(data)
allows you add raw data, that is automatically formatted to fit the internal structure.
You can call .addData(data)
as often as you need, with new data each time (!). Multiple calls of .addData()
with the same data is not recommended, because it will skew the random generation of results.
string[] | Array<{ string: string }>
data
is an array of strings (sentences), or an array of objects. If you wish to use objects, each one must have a string
attribute. The bigger the array, the better and more varied the results.
Examples:
[ 'lorem ipsum', 'dolor sit amet' ]
or
[
{ string: 'lorem ipsum', attr: 'value' },
{ string: 'dolor sit amet', attr: 'other value' }
]
The additionnal data passed with objects will be returned in the refs
array of the generated sentence.
Returns an object of type MarkovResult
:
{
string: string, // The resulting sentence
score: number, // A relative "score" based on the number of possible permutations. Higher is "better", but the actual value depends on your corpus
refs: Array<{ string: string }>, // The array of references used to build the sentence
tries: number // The number of tries it took to output this result
}
The refs
array will contain all objects that have been used to build the sentence. May be useful to fetch meta data or make stats.
{
maxTries: number // The max number of tentatives before giving up (default is 10)
prng: Math.random, // An external Pseudo Random Number Generator if you want to get seeded results
filter: (result: MarkovResult) => boolean // A callback to filter results (see example above)
}
You can export and import the markov built corpus. The exported data is a serializable object, and must be deserialized before being re-imported.
npm test