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@misc{cogprints5039,
title = {Expressing Implicit Semantic Relations without Supervision},
author = {Peter D. Turney},
year = {2006},
pages = {313--320},
keywords = {analogies, semantic relations, vector space model, noun-modifier expressions, latent relational analysis, pertinence},
url = {http://cogprints.org/5039/},
abstract = {We present an unsupervised learning algorithm that mines large
text corpora for patterns that express implicit semantic relations.
For a given input word pair X:Y with some unspecified semantic
relations, the corresponding output list of patterns {\ensuremath{<}}P1,...,Pm{\ensuremath{>}}
is ranked according to how well each pattern Pi expresses the
relations between X and Y. For example, given X=ostrich and
Y=bird, the two highest ranking output patterns are "X is the
largest Y" and "Y such as the X". The output patterns are intended
to be useful for finding further pairs with the same relations, to
support the construction of lexicons, ontologies, and semantic
networks. The patterns are sorted by pertinence, where the pertinence
of a pattern Pi for a word pair X:Y is the expected relational
similarity between the given pair and typical pairs for Pi. The
algorithm is empirically evaluated on two tasks, solving
multiple-choice SAT word analogy questions and classifying semantic
relations in noun-modifier pairs. On both tasks, the algorithm
achieves state-of-the-art results, performing significantly better
than several alternative pattern ranking algorithms, based on tf-idf.}
}