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NCLS: Neural Cross-Lingual Summarization

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arxiv 1909.00156 v1 pith:IXZ4E3UN submitted 2019-08-31 cs.CL

NCLS: Neural Cross-Lingual Summarization

classification cs.CL
keywords summarizationnclscross-lingualtranslationdatasetdatasetsexistingfurther
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Cross-lingual summarization (CLS) is the task to produce a summary in one particular language for a source document in a different language. Existing methods simply divide this task into two steps: summarization and translation, leading to the problem of error propagation. To handle that, we present an end-to-end CLS framework, which we refer to as Neural Cross-Lingual Summarization (NCLS), for the first time. Moreover, we propose to further improve NCLS by incorporating two related tasks, monolingual summarization and machine translation, into the training process of CLS under multi-task learning. Due to the lack of supervised CLS data, we propose a round-trip translation strategy to acquire two high-quality large-scale CLS datasets based on existing monolingual summarization datasets. Experimental results have shown that our NCLS achieves remarkable improvement over traditional pipeline methods on both English-to-Chinese and Chinese-to-English CLS human-corrected test sets. In addition, NCLS with multi-task learning can further significantly improve the quality of generated summaries. We make our dataset and code publicly available here: http://www.nlpr.ia.ac.cn/cip/dataset.htm.

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