Yet in each word some concept there must be...
— from Goethe's Faust (Part I, Scene III)

Human language is both rich and ambiguous. When we hear or read words, we resolve meanings to mental representations, for example recognizing and linking names to the intended persons, locations or organizations. Bridging words and meaning — from turning search queries into relevant results to suggesting targeted keywords for advertisers — is also Google's core competency, and important for many other tasks in information retrieval and natural language processing. We are happy to release a resource, spanning 7,560,141 concepts and 175,100,788 unique text strings, that we hope will help everyone working in these areas.

How do we represent concepts? Our approach piggybacks on the unique titles of entries from an encyclopedia, which are mostly proper and common noun phrases. We consider each individual Wikipedia article as representing a concept (an entity or an idea), identified by its URL. Text strings that refer to concepts were collected using the publicly available hypertext of anchors (the text you click on in a web link) that point to each Wikipedia page, thus drawing on the vast link structure of the web. For every English article we harvested the strings associated with its incoming hyperlinks from the rest of Wikipedia, the greater web, and also anchors of parallel, non-English Wikipedia pages. Our dictionaries are cross-lingual, and any concept deemed too fine can be broadened to a desired level of generality using Wikipedia's groupings of articles into hierarchical categories.

The data set contains triples, each consisting of (i) text, a short, raw natural language string; (ii) url, a related concept, represented by an English Wikipedia article's canonical location; and (iii) count, an integer indicating the number of times text has been observed connected with the concept's url. Our database thus includes weights that measure degrees of association. For example, the top two entries for football indicate that it is an ambiguous term, which is almost twice as likely to refer to what we in the US call soccer:



text=football url count
1.  Association football  44,984
2.  American football  23,373
⋮ 

An inverted index can be used to perform reverse look-ups, identifying salient terms for each concept. Some of the highest-scoring strings — including synonyms and translations — for both sports, are listed below:




concept:
soccer
football and Football
Soccer and soccer
Association football
fútbol and Fútbol
footballer
Futbol and futbol
Fußball
futebol
futbolista
サッカー
축구
footballeur
Fußballspieler
sepak bola
足球
فوتبال
футболист
כדורגל
piłkarz
voetbalclub
ฟุตบอล
bóng đá
voetbal
Foutbaal
futebolista
لعبة كرة القدم
fotbal
          concept:
football
American football
football and Football
fútbol americano
football américain
アメリカンフットボール
American football rules
futebol americano
فوتبال آمریکایی
美式足球
football americano
Amerikan futbolu
Le Football Américain
football field
อเมริกันฟุตบอล
פוטבול
كرة القدم الأمريكية
Futbol amerykański
미식축구
futbolu amerykańskiego
football team
американского футбола
Amerikai futball
sepak bola Amerika
football player
američki fudbal
反則
كرة القدم الأميركية

Associated counts can easily be turned into percentages. The following table illustrates the concept-to-words dictionary direction — which may be useful for paraphrasing, summarization and topic modeling — for the idea of soft drink, restricted to English (and normalized for punctuation, pluralization and capitalization differences):



url=Soft_drink text
1.  soft drink (and soft-drinks)     28.6 
2.  soda (and sodas)     5.5 
3.  soda pop 0.9 
4.  fizzy drinks 0.6 
5.  carbonated beverages (and beverage)     0.3 
6.  non-alcoholic 0.2 
7.  soft 0.1 
8.  pop 0.1 
9.  carbonated soft drink (and drinks)     0.1 
10.  aerated water 0.1 
11.  non-alcoholic drinks (and drink)     0.1 
12.  soft drink controversy 0.0 
13.  citrus-flavored soda 0.0 
14.  carbonated 0.0 
15.  soft drink topics 0.0 
⋮ 

The words-to-concepts dictionary direction can disambiguate senses and link entities, which are often highly ambiguous, since people, places and organizations can (nearly) all be named after each other. The next table shows the top concepts meant by the string Stanford, which refers to all three (and other) types:



text=Stanford url type
1.  Stanford University 50.3  ORGANIZATION
2.  Stanford (disambiguation) 7.7  a disambiguation page
3.  Stanford, California 7.5  LOCATION
4.  Stanford Cardinal football 5.7  ORGANIZATION
5.  Stanford Cardinal 4.1  multiple athletic programs
6.  Stanford Cardinal men's basketball 2.0  ORGANIZATION
7.  Stanford prison experiment 2.0  a famous psychology experiment
8.  Stanford, Kentucky 1.7  LOCATION
9.  Stanford, Norfolk 1.0  LOCATION
10.  Bank of the West Classic 1.0  a recurring sporting event
11.  Stanford, Illinois 0.9  LOCATION
12.  Leland Stanford 0.9  PERSON
13.  Charles Villiers Stanford 0.8  PERSON
14.  Stanford, New York 0.8  LOCATION
15.  Stanford, Bedfordshire 0.8  LOCATION
⋮ 

The database that we are providing was designed for recall. It is large and noisy, incorporating 297,073,139 distinct string-concept pairs, aggregated over 3,152,091,432 individual links, many of them referencing non-existent articles. For technical details, see our paper (to be presented at LREC 2012) and the README file accompanying the data.

We hope that this release will fuel numerous creative applications that haven't been previously thought of!


Produced by Angel X. Chang and Valentin I. Spitkovsky; parts of this work are descended from an earlier collaboration between University of Basque Country's Ixa Group's Eneko Agirre and Stanford's NLP Group, including Eric Yeh, presently of SRI International, and our Ph.D. advisors, Christopher D. Manning and Daniel Jurafsky.