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Zixian Huang Ao Wu Jiaying Zhou Yu Gu Yue Zhao Gong Cheng

Abstract
A trending paradigm for multiple-choice question answering (MCQA) is using a text-to-text framework. By unifying data in different tasks into a single text-to-text format, it trains a generative encoder-decoder model which is both powerful and universal. However, a side effect of twisting a generation target to fit the classification nature of MCQA is the under-utilization of the decoder and the knowledge that can be decoded. To exploit the generation capability and underlying knowledge of a pre-trained encoder-decoder model, in this paper, we propose a generation-enhanced MCQA model named GenMC. It generates a clue from the question and then leverages the clue to enhance a reader for MCQA. It outperforms text-to-text models on multiple MCQA datasets.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| question-answering-on-openbookqa | GenMC 11B | Accuracy: 89.8 |
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