Revisiting Cross-Lingual Summarization: A Corpus-based Study and A New Benchmark with Improved Annotation (2307.04018v1)
Abstract: Most existing cross-lingual summarization (CLS) work constructs CLS corpora by simply and directly translating pre-annotated summaries from one language to another, which can contain errors from both summarization and translation processes. To address this issue, we propose ConvSumX, a cross-lingual conversation summarization benchmark, through a new annotation schema that explicitly considers source input context. ConvSumX consists of 2 sub-tasks under different real-world scenarios, with each covering 3 language directions. We conduct thorough analysis on ConvSumX and 3 widely-used manually annotated CLS corpora and empirically find that ConvSumX is more faithful towards input text. Additionally, based on the same intuition, we propose a 2-Step method, which takes both conversation and summary as input to simulate human annotation process. Experimental results show that 2-Step method surpasses strong baselines on ConvSumX under both automatic and human evaluation. Analysis shows that both source input text and summary are crucial for modeling cross-lingual summaries.
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- Yulong Chen (32 papers)
- Huajian Zhang (8 papers)
- Yijie Zhou (16 papers)
- Xuefeng Bai (34 papers)
- Yueguan Wang (4 papers)
- Ming Zhong (88 papers)
- Jianhao Yan (27 papers)
- Yafu Li (26 papers)
- Judy Li (3 papers)
- Michael Zhu (9 papers)
- Yue Zhang (620 papers)