Mining the web for synonyms: PMI-IR versus LSA on TOEFL

PD Turney�- European conference on machine learning, 2001 - Springer
European conference on machine learning, 2001Springer
This paper presents a simple unsupervised learning algorithm for recognizing synonyms,
based on statistical data acquired by querying a Web search engine. The algorithm, called
PMI-IR, uses Pointwise Mutual Information (PMI) and Information Retrieval (IR) to measure
the similarity of pairs of words. PMI-IR is empirically evaluated using 80 synonym test
questions from the Test of English as a Foreign Language (TOEFL) and 50 synonym test
questions from a collection of tests for students of English as a Second Language (ESL). On�…
Abstract
This paper presents a simple unsupervised learning algorithm for recognizing synonyms, based on statistical data acquired by querying a Web search engine. The algorithm, called PMI-IR, uses Pointwise Mutual Information (PMI) and Information Retrieval (IR) to measure the similarity of pairs of words. PMI-IR is empirically evaluated using 80 synonym test questions from the Test of English as a Foreign Language (TOEFL) and 50 synonym test questions from a collection of tests for students of English as a Second Language (ESL). On both tests, the algorithm obtains a score of 74%. PMI-IR is contrasted with Latent Semantic Analysis (LSA), which achieves a score of 64% on the same 80 TOEFL questions. The paper discusses potential applications of the new unsupervised learning algorithm and some implications of the results for LSA and LSI (Latent Semantic Indexing).
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