Building Question-Answer Data Using Web Register Identification




Eskelinen Anni, Myntti Amanda, Henriksson Erik, Pyysalo Sampo, Laippala Veronika

Calzolari Nicoletta, Kan Min-Yen, Hoste Veronique, Lenci Alessandro, Sakti Sakriani, Xue Nianwen

Language Resources and Evaluation

2024

LREC Proceedings

Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)

LREC Proceedings

2595

2611

978-2-493814-10-4

2522-2686

https://aclanthology.org/2024.lrec-main.234.pdf

https://research.utu.fi/converis/portal/detail/Publication/404724872



This article introduces a resource-efficient method for developing question-answer (QA) datasets by extracting QA pairs from web-scale data using machine learning (ML). Our method benefits from recent advances in web register (genre) identification and consists of two ML steps with an additional post-processing step. First, using XLM-R and the multilingual CORE web register corpus series with categories such as QA Forum, we train a multilingual classifier to retrieve documents that are likely to contain QA pairs from web-scale data. Second, we develop a NER-style token classifier to identify the QA text spans within these documents. To this end, we experiment with training on a semi-synthetic dataset built on top of the English LFQA, a small set of manually cleaned web QA pairs in English and Finnish, and a Finnish web QA pair dataset cleaned using ChatGPT. The evaluation of our pipeline demonstrates its capability to efficiently retrieve a substantial volume of QA pairs. While the approach is adaptable to any language given the availability of language models and extensive web data, we showcase its efficiency in English and Finnish, developing the first open, non-synthetic and non-machine translated QA dataset for Finnish – Turku WebQA – comprising over 200,000 QA pairs.


Last updated on 2025-22-01 at 14:03