Author:
CRANIAS LAMBROS,PAPAGEORGIOU HARRIS,PIPERIDIS STELIOS
Abstract
Clustering of a translation memory is proposed to make the
retrieval of similar translation examples from a translation memory more
efficient,
while a second contribution is a metric of
text similarity which is based on both surface structure and content. Tests
on the two proposed
techniques are run on part of the CELEX database. The results reported
indicate that the
clustering of the translation memory results in a significant gain in the
retrieval response
time, while the deterioration in the retrieval accuracy can be considered
to be negligible. The
text similarity metric proposed is evaluated by a human expert and found
to be compatible
with the human perception of text similarity.
Publisher
Cambridge University Press (CUP)
Subject
Artificial Intelligence,Linguistics and Language,Language and Linguistics,Software
Cited by
9 articles.
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