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A Paraphrase-Based Approach to Machine Translation Evaluation
Grazia Russo-Lassner, Jimmy Lin and Philip Resnik
ABSTRACT
We propose a novel approach to automatic machine translation evaluation based on
paraphrase identification. The quality of machine-generated output can be viewed as the
extent to which the conveyed meaning matches the semantics of reference translations,
independent of lexical and syntactic divergences. This idea is implemented in linear
regression models that attempt to capture human judgments of adequacy and fluency,
based on features that have previously been shown to be effective for paraphrase
identification. We evaluated our model using the output of three different MT systems
from the 2004 NIST Arabic-to-English MT evaluation. Results show that models
employing paraphrase-based features correlate better with human judgments than models
based purely on existing automatic MT metrics.
Reference: Technical Report: LAMP-TR-125/CS-TR-4754/UMIACS-TR-2005-57, University of Maryland, College Park, August 2005.
(BibTex) Manuscript: (PDF)
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