wink-eng-lite-web-model
winkNLP's English lite language model for Web Browsers
This is a pre-trained English language model for the winkjs NLP package — winkNLP. It is compatible with browserify — easily create a bundle that you can serve up to the web browser in a single tag or even build a mobile apps. Its gzipped size is ~1MB.
It is an open-source language model, released under the MIT license.
It contains models for the following NLP tasks:
1. Tokenization
2. Token's Feature Extraction
3. Sentence Boundary Detection
4. Negation Handling
5. POS tagging
6. Automatic mapping of British spellings to American
7. Named Entity Recognition
8. Sentiment Analysis
9. Custom Entities Definition
10. Stemming using Porter Stemmer Algorithm V2
11. Lemmatization
12. Readability statistics computation
It is a derivative of wink-eng-lite-model and also supports Typescript.
Getting Started
$3
It requires Node.js
version 16.0.0 or above. The compatible browsers are listed
here.
$3
The model must be installed along with the
wink-nlp:
``sh
Install wink-nlp
npm install wink-nlp --save
Install wink-eng-lite-web-model
npm install wink-eng-lite-web-model --save
`
$3
We start by requiring the
wink-nlp package and the
wink-eng-lite-web-model. Then we instantiate wink-nlp using the language model:
`javascript
// Load "wink-nlp" package.
const winkNLP = require('wink-nlp');
// Load english language model — light version.
const model = require('wink-eng-lite-web-model');
// Instantiate wink-nlp.
const nlp = winkNLP(model);
// Code for Hello World!
var text = 'Hello World!';
var doc = nlp.readDoc(text);
console.log(doc.out());
// -> Hello World!
``
$3
Learn how to use this model with winkNLP from the following resources:
-
Overview — introduction to winkNLP.
-
Concepts — everything you need to know to get started.
-
API Reference — explains usage of APIs with examples.
About model
The model supports following NLP tasks — tokenization, sentence boundary detection, negation handling, sentiment analysis, part-of-speech tagging, and named entity extraction.
$3
While it is trained to process English language text, it can tokenize text containing other languages such as Hindi, French and German. Such tokens are tagged as
X (foreign word) during pos tagging.
$3
The model follows the
Universal POS tags standards. It delivers an accuracy of
~95% on a subset of WSJ corpus — this includes
tokenization of raw text prior to pos tagging.
$3
The model is trained to detect
CARDINAL,
DATE,
DURATION,
EMAIL,
EMOJI,
EMOTICON,
HASHTAG,
MENTION,
MONEY,
ORDINAL,
PERCENT,
TIME, and
URL.
$3
It delivers a
f-score of
~84.5%, when validated using Amazon Product Review
Sentiment Labelled Sentences Data Set at
UCI Machine Learning Repository.
$3
The model is contained in the standard JSON format. Apart from the data, there is a tiny fraction of JS glue code, which is primarily used during model loading.
Need Help?
If you spot a bug and the same has not yet been reported, raise a new
issue.
About wink
Wink is a family of open source packages for
Natural Language Processing,
Machine Learning and
Statistical Analysis in NodeJS. The code is
thoroughly documented for easy human comprehension and has a
test coverage of ~100% for reliability to build production grade solutions.
Copyright & License
The
wink-eng-lite-web-model is copyright 2020-24 of
GRAYPE Systems Private Limited.
It is licensed under the terms of the MIT License.