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Transparent Reference-free Automated Evaluation of Open-Ended User Survey Responses

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arxiv 2510.06242 v1 pith:2IRJJMDP submitted 2025-10-03 cs.CL cs.AI

Transparent Reference-free Automated Evaluation of Open-Ended User Survey Responses

classification cs.CL cs.AI
keywords responsesevaluationsurveycharacteristicsexistingfilteringframeworkonly
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Open-ended survey responses provide valuable insights in marketing research, but low-quality responses not only burden researchers with manual filtering but also risk leading to misleading conclusions, underscoring the need for effective evaluation. Existing automatic evaluation methods target LLM-generated text and inadequately assess human-written responses with their distinct characteristics. To address such characteristics, we propose a two-stage evaluation framework specifically designed for human survey responses. First, gibberish filtering removes nonsensical responses. Then, three dimensions-effort, relevance, and completeness-are evaluated using LLM capabilities, grounded in empirical analysis of real-world survey data. Validation on English and Korean datasets shows that our framework not only outperforms existing metrics but also demonstrates high practical applicability for real-world applications such as response quality prediction and response rejection, showing strong correlations with expert assessment.

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