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A Conjoint Analysis Framework for Evaluating User Preferences in Machine Translation.

Katrin Kirchhoff1, Daniel Capurro2, Anne M Turner3

  • 1Department of Electrical Engineering, University of Washington, Seattle, WA, 98195, USA, Tel.: +1-206-616-5494, , katrin@ee.washington.edu.

Machine Translation : MT
|April 1, 2014
PubMed
Summary
This summary is machine-generated.

This study reveals users dislike word order errors most in machine translation (MT). Conjoint analysis accurately predicts preferences, showing stability between crowd-sourced and expert evaluators for MT quality assessment.

Keywords:
evaluationmachine translationpreference elicitationuser modeling

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Area of Science:

  • Natural Language Processing
  • Human-Computer Interaction
  • Computational Linguistics

Background:

  • Machine translation (MT) evaluation lacks research on user emotional preferences for error types.
  • Understanding user preferences is crucial for adapting and customizing MT engines.
  • Existing MT evaluation methods do not fully capture user-sentiments towards translation inaccuracies.

Purpose of the Study:

  • To formally assess users' relative preferences for different machine translation error types using conjoint analysis.
  • To model user preferences for MT output, specifically for public health documents translated from English to Spanish.
  • To compare the predictive accuracy of a conjoint analysis model against a baseline error-counting model.

Main Methods:

  • Conjoint analysis was employed as a quantitative framework to evaluate user preferences.
  • The study analyzed machine translation output for public health documents (English to Spanish).
  • Respondent populations included crowd-sourced individuals and domain experts to assess preference stability.

Main Results:

  • Word order errors were identified as the most dispreferred error type in machine translation.
  • User preferences were ranked, with word sense, morphological, and function word errors following.
  • The conjoint analysis model demonstrated superior prediction accuracy compared to a baseline model.
  • Key preference patterns remained consistent across both crowd-sourced and expert respondent groups.

Conclusions:

  • Conjoint analysis provides a robust method for quantifying user preferences in machine translation evaluation.
  • Addressing specific error types, particularly word order, is critical for improving user satisfaction with MT.
  • The stability of preferences across different evaluator groups suggests generalizability of the findings for MT quality assessment.