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Ordering translation templates by assigning confidence factors

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

TTL(Translation Template Learner) algorithm learns lexical level correspondences between two translation examples by using analogical reasoning. The sentences used as translation examples have similar and different parts in the source language which must correspond to the similar and different parts in the target language. Therefore these correspondences are learned as translation templates. The learned translation templates are used in the translation of other sentences. However, we need to assign confidence factors to these translation templates to order translation results with respect to previously assigned confidence factors. This paper proposes a method for assigning confidence factors to translation templates learned by the TTL algorithm. Training data is used for collecting statistical information that will be used in confidence factor assignment process. In this process, each template is assigned a confidence factor according to the statistical information obtained from training data. Furthermore, some template combinations are also assigned confidence factors in order to eliminate certain combinations resulting bad translation.
Original languageEnglish
Title of host publicationMachine Translation And The Information Soup
EditorsD Farwell, L Gerber, E Hovy
PublisherSpringer Nature
Pages51-61
Number of pages11
Volume1529
ISBN (Print)3-540-65259-0
Publication statusPublished - 1998
Event3rd Conference of the Association-for-Machine-Translation-in-the-Americas - LANGHORNE
Duration: 28 Oct 199831 Oct 1998

Publication series

NameLecture Notes In Artificial Intelligence

Conference

Conference3rd Conference of the Association-for-Machine-Translation-in-the-Americas
CityLANGHORNE
Period28/10/9831/10/98

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