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Installation | Overview | Tokenization | Stemming | Stop Words | Search Index | Index Strategy
Js Search: client-side search library
Js Search enables efficient client-side searches of JavaScript and JSON objects. It is ES5 compatible and does not require jQuery or any other third-party libraries.
Js Search began as a lightweight implementation of Lunr JS, offering runtime performance improvements and a smaller file size. It has since expanded to include a rich feature set- supporting stemming, stop-words, and TF-IDF ranking.
Here are some JS Perf benchmarks comparing the two search libraries. (Thanks to olivernn for tweaking the Lunr side for a better comparison!)
If you're looking for a simpler, web-worker optimized JS search utility check out js-worker-search.
If you like this project, 🎉 become a sponsor or ☕ buy me a coffee
Installation
You can install using either Bower or NPM like so:
npm install js-search
bower install js-search
Overview
At a high level you configure Js Search by telling it which fields it should index for searching and then add the objects to be searched.
For example, a simple use of JS Search would be as follows:
import * as JsSearch from 'js-search';
var theGreatGatsby = {
isbn: '9781597226769',
title: 'The Great Gatsby',
author: {
name: 'F. Scott Fitzgerald'
},
tags: ['book', 'inspirational']
};
var theDaVinciCode = {
isbn: '0307474275',
title: 'The DaVinci Code',
author: {
name: 'Dan Brown'
},
tags: ['book', 'mystery']
};
var angelsAndDemons = {
isbn: '074349346X',
title: 'Angels & Demons',
author: {
name: 'Dan Brown',
},
tags: ['book', 'mystery']
};
var search = new JsSearch.Search('isbn');
search.addIndex('title');
search.addIndex(['author', 'name']);
search.addIndex('tags')
search.addDocuments([theGreatGatsby, theDaVinciCode, angelsAndDemons]);
search.search('The'); // [theGreatGatsby, theDaVinciCode]
search.search('scott'); // [theGreatGatsby]
search.search('dan'); // [angelsAndDemons, theDaVinciCode]
search.search('mystery') // [angelsAndDemons, theDaVinciCode]
Tokenization
Tokenization is the process of breaking text (e.g. sentences) into smaller, searchable tokens (e.g. words or parts of words). Js Search provides a basic tokenizer that should work well for English but you can provide your own like so:
search.tokenizer = {
tokenize( text /* string */ ) {
// Convert text to an Array of strings and return the Array
}
};
Stemming
Stemming is the process of reducing search tokens to their root (or "stem") so that searches for different forms of a word will still yield results. For example "search", "searching" and "searched" can all be reduced to the stem "search".
Js Search does not implement its own stemming library but it does support stemming through the use of third-party libraries.
To enable stemming, use the StemmingTokenizer
like so:
var stemmer = require('porter-stemmer').stemmer;
search.tokenizer =
new JsSearch.StemmingTokenizer(
stemmer, // Function should accept a string param and return a string
new JsSearch.SimpleTokenizer());
Stop Words
Stop words are very common (e.g. a, an, and, the, of) and are often not semantically meaningful. By default Js Search
does not filter these words, but filtering can be enabled by using the StopWordsTokenizer
like so:
search.tokenizer =
new JsSearch.StopWordsTokenizer(
new JsSearch.SimpleTokenizer());
By default Js Search uses a slightly modified version of the Google History stop words listed on
www.ranks.nl/stopwords. You can modify this list of stop words by adding or removing
values from the JsSearch.StopWordsMap
object like so:
JsSearch.StopWordsMap.the = false; // Do not treat "the" as a stop word
JsSearch.StopWordsMap.bob = true; // Treat "bob" as a stop word
Note that stop words are lower case and so using a case-sensitive sanitizer may prevent some stop words from being removed.
Configuring the search index
There are two search indices packaged with js-search
.
Term frequency–inverse document frequency (or TF-IDF) is a numeric statistic intended to reflect how important a word (or words) are to a document within a corpus. The TF-IDF value increases proportionally to the number of times a word appears in the document but is offset by the frequency of the word in the corpus. This helps to adjust for the fact that some words (e.g. and, or, the) appear more frequently than others.
By default Js Search supports TF-IDF ranking but this can be disabled for performance reasons if it is not required. You
can specify an alternate ISearchIndex
implementation in order to disable TF-IDF, like so:
// default
search.searchIndex = new JsSearch.TfIdfSearchIndex();
// Search index capable of returning results matching a set of tokens
// but without any meaningful rank or order.
search.searchIndex = new JsSearch.UnorderedSearchIndex();
Configuring the index strategy
There are three index strategies packaged with js-search
.
PrefixIndexStrategy
indexes for prefix searches.
(e.g. the term "cat" is indexed as "c", "ca", and "cat" allowing prefix search lookups).
AllSubstringsIndexStrategy
indexes for all substrings. In other word "c", "ca", "cat", "a", "at", and "t" all match "cat".
ExactWordIndexStrategy
indexes for exact word matches. For example "bob" will match "bob jones" (but "bo" will not).
By default Js Search supports prefix indexing but this is configurable. You
can specify an alternate IIndexStrategy
implementation in order to disable prefix indexing, like so:
// default
search.indexStrategy = new JsSearch.PrefixIndexStrategy();
// this index strategy is built for all substrings matches.
search.indexStrategy = new JsSearch.AllSubstringsIndexStrategy();
// this index strategy is built for exact word matches.
search.indexStrategy = new JsSearch.ExactWordIndexStrategy();