Authors
Douglas Summers-Stay, Claire Bonial, Clare Voss
Publication date
2021/11
Conference
Proceedings of the 3rd Workshop on Machine Reading for Question Answering
Pages
73-81
Description
Generative language models trained on large, diverse corpora can answer questions about a passage by generating the most likely continuation of the passage followed by a question/answer pair. However, accuracy rates vary depending on the type of question asked. In this paper we keep the passage fixed, and test with a wide variety of question types, exploring the strengths and weaknesses of the GPT-3 language model. We provide the passage and test questions as a challenge set for other language models.
Total citations
202220232024331
Scholar articles
D Summers-Stay, C Bonial, C Voss - Proceedings of the 3rd Workshop on Machine Reading …, 2021