CLApr 22

RespondeoQA: a Benchmark for Bilingual Latin-English Question Answering

arXiv:2604.2073883.6Has Code
Predicted impact top 32% in CL · last 90 daysOriginality Synthesis-oriented
AI Analysis

This provides a new resource for assessing model capabilities in a specialized linguistic and cultural domain, but it is incremental as it adapts existing methods to a new language.

The authors introduced RespondeoQA, a bilingual Latin-English question answering benchmark with 7,800 question-answer pairs, and found that large language models like LLaMa 3, Qwen QwQ, and OpenAI's o3-mini perform worse on skill-oriented questions, with QwQ slightly better on Latin questions.

We introduce a benchmark dataset for question answering and translation in bilingual Latin and English settings, containing about 7,800 question-answer pairs. The questions are drawn from Latin pedagogical sources, including exams, quizbowl-style trivia, and textbooks ranging from the 1800s to the present. After automated extraction, cleaning, and manual review, the dataset covers a diverse range of question types: knowledge- and skill-based, multihop reasoning, constrained translation, and mixed language pairs. To our knowledge, this is the first QA benchmark centered on Latin. As a case study, we evaluate three large language models -- LLaMa 3, Qwen QwQ, and OpenAI's o3-mini -- finding that all perform worse on skill-oriented questions. Although the reasoning models perform better on scansion and literary-device tasks, they offer limited improvement overall. QwQ performs slightly better on questions asked in Latin, but LLaMa3 and o3-mini are more task dependent. This dataset provides a new resource for assessing model capabilities in a specialized linguistic and cultural domain, and the creation process can be easily adapted for other languages. The dataset is available at: https://github.com/slanglab/RespondeoQA

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