five

Text generated by OPUS-MT and T5 models with single-bit errors in the parameters

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https://zenodo.org/record/10647623
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Description The dataset contains text generated using T5 and OPUS-MT model with and with single-bit errors in the parameters of the LLM. The T5 LLM used the CNN Daily Mail dataset for summarization and OPUS-MT used the IWSLT2017 dataset for Chinese-to-English translation. Files: {cnn/iwslt2017}_input_text.txt: Input text, that is, text to summarize (cnn and T5) or Chinese text to translate (iwslt2017 and OPUS-MT).  For each dataset in total there are number_input_texts. {cnn/iwslt2017}_output_reference.txt: Example of result expected for CNN (T5) and IWSLT2017 (OPUS-MT). For each dataset in total there are number_input_texts. {cnn/iwslt2017}_output_predict_fault_free: Example of predictions without single-bit errors. For each dataset in total there are number_input_texts. {cnn/iwslt2017}_output_predict_single_fi_bit_100times: Example of predictions with 100 different single-bit error. In each dataset in total there are 100*number input texts. Paper Paper: Concurrent Linguistic Error Detection (CLED) for Large Language Models Cite: @misc{zhu2024concurrent,      title={Concurrent Linguistic Error Detection (CLED) for Large Language Models},       author={Jinhua Zhu and Javier Conde and Zhen Gao and Pedro Reviriego and Shanshan Liu and Fabrizio Lombardi},      year={2024},      eprint={2403.16393},      archivePrefix={arXiv},      primaryClass={cs.AI}}
创建时间:
2024-05-15
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