HCCLJul 30, 2024

Questionnaires for Everyone: Streamlining Cross-Cultural Questionnaire Adaptation with GPT-Based Translation Quality Evaluation

arXiv:2407.20608v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the problem of limited cross-cultural research due to high translation costs, though it is an incremental step towards more equitable questionnaire-based research.

The researchers tackled the resource-intensive process of adapting questionnaires to new languages by developing a prototype tool that uses GPT-4 for translation quality evaluation, finding it helps users achieve results similar to conventional methods in studies with German and Portuguese translations.

Adapting questionnaires to new languages is a resource-intensive process often requiring the hiring of multiple independent translators, which limits the ability of researchers to conduct cross-cultural research and effectively creates inequalities in research and society. This work presents a prototype tool that can expedite the questionnaire translation process. The tool incorporates forward-backward translation using DeepL alongside GPT-4-generated translation quality evaluations and improvement suggestions. We conducted two online studies in which participants translated questionnaires from English to either German (Study 1; n=10) or Portuguese (Study 2; n=20) using our prototype. To evaluate the quality of the translations created using the tool, evaluation scores between conventionally translated and tool-supported versions were compared. Our results indicate that integrating LLM-generated translation quality evaluations and suggestions for improvement can help users independently attain results similar to those provided by conventional, non-NLP-supported translation methods. This is the first step towards more equitable questionnaire-based research, powered by AI.

Code Implementations1 repo
Foundations

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