#No training, no prolog. A Natural-Language-Processing library in Javascript, small-enough for the browser, and quick-enough to run on keypress 👬 It does tons of clever things. it's smaller than jquery, and scores 86% on the Penn treebank. nlp.pos('she sells seashells by the seashore').to_past().text() //she sold seashells by the seashore ##Check it out Long Text Demo Specific Methods Realtime Demo Angular Demo ##Justification If the 80-20 rule applies for most things, the ''94-6 rule'' applies when working with language - by Zipfs law: The top 10 words account for 25% of used language. The top 100 words account for 50% of used language. The top 50,000 words account for 95% of used language. On the Penn treebank, for example, this is possible: just a 1 thousand word lexicon: 45% accuracy ... then falling back to nouns: 70% accuracy ... then some suffix regexes: 74% accuracy ... then some sentence-level postprocessing: 81% accuracy The process is to get some curated data, find the patterns, and list the exceptions. Bada bing, bada boom. In this way a satisfactory NLP library can be built with breathtaking lightness. Namely, it can be run right on the user's computer instead of a server. Client-side <script src="https://rawgit.com/spencermountain/nlp_compromise/master/client_side/nlp.min.js"> </script> <script> nlp.noun("dinosaur").pluralize() //dinosaurs </script> or, use the angular module Server-side $ npm install nlp_compromise nlp = require("nlp_compromise") nlp.syllables("hamburger") //[ 'ham', 'bur', 'ger' ] API ###Sentence methods var s= nlp.pos("Tony Danza is dancing").sentences[0] s.tense() //present s.text() //"Tony Danza is dancing" s.to_past().text() //Tony Danza was dancing s.to_present().text() //Tony Danza is dancing s.to_future().text() //Tony Danza will be dancing s.negate().text() //Tony Danza is not dancing s.tags() //[ 'NNP', 'CP', 'VB' ] s.entities() //[{text:"Tony Danza"...}] s.people() //[{text:"Tony Danza"...}] s.nouns() //[{text:"Tony Danza"...}] s.adjectives() //[] s.adverbs() //[] s.verbs() //[{text:"dancing"}] s.values() //[] as sugar, these methods can be called on multiple sentences from the nlp.pos() object too, like: nlp.pos("Tony is cool. Jen is happy.").people() //[{text:"Tony"}, {text:"Jen"}] ###Noun methods: nlp.noun("earthquakes").singularize() //earthquake nlp.noun("earthquake").pluralize() //earthquakes nlp.noun('veggie burger').is_plural() //false nlp.noun('tony danza').is_person() //true nlp.noun('Tony J. Danza elementary school').is_person() //false nlp.noun('SS Tony danza').is_person() //false nlp.noun('hour').article() //an nlp.noun('mayors of toronto').conjugate() //{ plural: 'mayors of toronto', singular: 'mayor of toronto' } nlp.noun("tooth").pronoun() //it nlp.noun("teeth").pronoun() //they nlp.noun("Tony Hawk").pronoun() //"he" nlp.noun("Nancy Hawk").pronoun() //"she" var he = nlp.pos("Tony Danza is great. He lives in L.A.").sentences[1].tokens[0] he.analysis.reference_to() //{text:"Tony Danza"...} ###Verb methods: nlp.verb("walked").conjugate() //{ infinitive: 'walk', // present: 'walks', // past: 'walked', // gerund: 'walking'} nlp.verb('swimming').to_past() //swam nlp.verb('swimming').to_present() //swims nlp.verb('swimming').to_future() //will swim ###Adjective methods: nlp.adjective("quick").conjugate() // { comparative: 'quicker', // superlative: 'quickest', // adverb: 'quickly', // noun: 'quickness'} ###Adverb methods nlp.adverb("quickly").conjugate() // { adjective: 'quick'} Part-of-speech tagging 86% on the Penn treebank nlp.pos("Tony Hawk walked quickly to the store.").tags() // [ [ 'NNP', 'VBD', 'RB', 'IN', 'DT', 'NN' ] ] nlp.pos("they would swim").tags() // [ [ 'PRP', 'MD', 'VBP' ] ] nlp.pos("the obviously good swim").tags() // [ [ 'DT', 'RB', 'JJ', 'NN' ] ] Named-Entity recognition nlp.spot("Joe Carter loves Toronto") // [{text:"Joe Carter"...}, {text:"Toronto"...}] Sentence segmentation nlp.sentences("Hi Dr. Miller the price is 4.59 for the U.C.L.A. Ph.Ds.").length //1 nlp.tokenize("she sells sea-shells").length //3 Syllable hyphenization 70% on the moby hyphenization corpus 0.5k nlp.syllables("hamburger") //[ 'ham', 'bur', 'ger' ] US-UK Localization nlp.americanize("favourite") //favorite nlp.britishize("synthesized") //synthesised N-gram str= "She sells seashells by the seashore. The shells she sells are surely seashells." nlp.ngram(str, {min_count:1, max_size:5}) // [{ word: 'she sells', count: 2, size: 2 }, // ... options.min_count // throws away seldom-repeated grams. defaults to 1 options.max_size // maximum gram count. prevents the result from becoming gigantic. defaults to 5 Date parsing nlp.value("I married April for the 2nd time on June 5th 1998 ").date() // { text: 'June 5th 1998', // from: { year: '1998', month: '06', day: '05' }, // to: {} } Number parsing nlp.value("two thousand five hundred and sixty").number() //2560 -nlp.value("twenty one hundred").number() -//2100 -nlp.value("nine two hundred").number() -//null Unicode Normalisation a hugely-ignorant, and widely subjective transliteration of latin, cryllic, greek unicode characters to english ascii. nlp.normalize("Björk") //Bjork and for fun, nlp.denormalize("The quick brown fox jumps over the lazy dog", {percentage:50}) // The ɋӈїck brown fox juӎÞs over tӊe laζy dog Details Tags "verb": "VB" : "verb, generic (eat)" "VBD" : "past-tense verb (ate)" "VBN" : "past-participle verb (eaten)" "VBP" : "infinitive verb (eat)" "VBZ" : "present-tense verb (eats, swims)" "VBF" : "future-tense verb (will eat)" "CP" : "copula (is, was, were)" "VBG" : "gerund verb (eating,winning)" "adjective": "JJ" : "adjective, generic (big, nice)" "JJR" : "comparative adjective (bigger, cooler)" "JJS" : "superlative adjective (biggest, fattest)" "adverb": "RB" : "adverb (quickly, softly)" "RBR" : "comparative adverb (faster, cooler)" "RBS" : "superlative adverb (fastest (driving), coolest (looking))" "noun": "NN" : "noun, singular (dog, rain)" "NNP" : "singular proper noun (Edinburgh, skateboard)" "NNPA" : "noun, acronym (FBI)" "NNAB" : "noun, abbreviation (jr.)" "NNPS" : "plural proper noun (Smiths)" "NNS" : "plural noun (dogs, foxes)" "NNO" : "possessive noun (spencer's, sam's)" "NG" : "gerund noun (eating,winning" : "but used grammatically as a noun)" "PRP" : "personal pronoun (I,you,she)" "PP" : "possessive pronoun (my,one's)" "glue": "FW" : "foreign word (mon dieu, voila)" "IN" : "preposition (of,in,by)" "MD" : "modal verb (can,should)" "CC" : "co-ordating conjunction (and,but,or)" "DT" : "determiner (the,some)" "UH" : "interjection (oh, oops)" "EX" : "existential there (there)" "value": "CD" : "cardinal value, generic (one, two, june 5th)" "DA" : "date (june 5th, 1998)" "NU" : "number (89, half-million)" ####Lexicon Because the library can conjugate all sorts of forms, it only needs to store one grammatical form. The lexicon was built using the American National Corpus, then intersected with the regex rule-list. For example, it lists only 300 verbs, then blasts-out their 1200+ derived forms. ####Contractions It puts a 'silent token' into the phrase for contractions. Otherwise a meaningful part-of-speech could be neglected. nlp.pos("i'm good.") [{ text:"i'm", normalised:"i", pos:"PRP" }, { text:"", normalised:"am", pos:"CP" }, { text:"good.", normalised:"good", pos:"JJ" }] ####Tokenization Neighbouring words with the same part of speech are merged together, unless there is punctuation, different capitalisation, or some special cases. nlp.pos("tony hawk won").tags() //tony hawk NN //won VB To turn this off: nlp.pos("tony hawk won", {dont_combine:true}).tags() //tony NN //hawk NN //won VB ####Phrasal Verbs 'beef up' is one verb, and not some direction of beefing. Licence MIT