The Extractive-Abstractive Axis: Measuring Content "Borrowing" in Generative Language Models

CoRR(2023)

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摘要
Generative language models produce highly abstractive outputs by design, in contrast to extractive responses in search engines. Given this characteristic of LLMs and the resulting implications for content Licensing & Attribution, we propose the the so-called Extractive-Abstractive axis for benchmarking generative models and highlight the need for developing corresponding metrics, datasets and annotation guidelines. We limit our discussion to the text modality.
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关键词
language,models,borrowing,content,extractive-abstractive
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