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---
language:
- en
license: apache-2.0
---
### Acknowledgements
The PUZZLEQA is scraped from [NPR Sunday Puzzle Official Website](https://www.npr.org/series/4473090/sunday-puzzle) and [NPR Puzzle Synopsis](https://groups.google.com/g/nprpuzzle),
made by a group of fans by running a mailing list that distributed questions and answers for each week’s puzzle.
The authors of the dataset cleaned the data and made some multiple choice based on the question and answers.
### Creation
The Multiple Choice Dataset is generated from PUZZLEQA dataset using the following algorithm.
1. Read the fr_big_exp.tsv.tsv file
2. Group rule-question-answer triples in a given Sunday together (so the rules of each question will be the same)
3. For each question, randomly select three other answers from answers on the same Sunday. Shuffle 3 selected answers with the correct answer for the given question to obtain 4 choices for this question. \\
4. identify the correct answer for the given question as the "gold" answer.
Recent.tsv is the dataset based on the NPR PUZZLE in 2023.
# Citation
@inproceedings{zhao2023solving,
title={Solving and Generating NPR Sunday Puzzles with Large Language Models},
author={Jingmiao Zhao and Carolyn Jane Anderson},
year={2023},
eprint={2306.12255},
archivePrefix={arXiv},
primaryClass={cs.CL}
} |