Current state-of-the-art cross-lingual summarization models employ multi-task learning paradigm, which works on a shared vocabulary module and relies on the self-attention mechanism to attend among tokens in two languages. However, correlation learned by self-attention is often loose and implicit, inefficient in capturing crucial cross-lingual representations between languages. The matter worsens when performing on languages with separate morphological or structural features, making the cross-lingual alignment more challenging, resulting in the performance drop. To overcome this problem, we propose a novel Knowledge-Distillation-based framework for Cross-Lingual Summarization, seeking to explicitly construct cross-lingual correlation by dis...
Multilingual Neural Machine Translation (MNMT) trains a single NMT model that supports translation b...
Cross-lingual natural language inference is a fundamental task in cross-lingual natural language und...
The current generation of neural network-based natural language processing models excels at learning...
Automatic text summarization extracts important information from texts and presents the information ...
Automatic text summarization is a process of extracting important information from texts and present...
International audienceThis paper presents an extension of a denoising auto-encoder to learn language...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
Automatic text summarization aims at producing a shorter version of the input text that conveys the ...
Large-scale cross-lingual language models (LM), such as mBERT, Unicoder and XLM, have achieved great...
In cross-lingual language understanding, machine translation is often utilized to enhance the transf...
Multilingual NMT has been developed rapidly, but still has performance degradation caused by languag...
A major challenge in Entity Linking (EL) is making effective use of contextual information to disamb...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Cross-lingual Learning can help to bring state-of-the-art deep learning solutions to smaller languag...
Multilingual Neural Machine Translation (MNMT) trains a single NMT model that supports translation b...
Cross-lingual natural language inference is a fundamental task in cross-lingual natural language und...
The current generation of neural network-based natural language processing models excels at learning...
Automatic text summarization extracts important information from texts and presents the information ...
Automatic text summarization is a process of extracting important information from texts and present...
International audienceThis paper presents an extension of a denoising auto-encoder to learn language...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
Automatic text summarization aims at producing a shorter version of the input text that conveys the ...
Large-scale cross-lingual language models (LM), such as mBERT, Unicoder and XLM, have achieved great...
In cross-lingual language understanding, machine translation is often utilized to enhance the transf...
Multilingual NMT has been developed rapidly, but still has performance degradation caused by languag...
A major challenge in Entity Linking (EL) is making effective use of contextual information to disamb...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Cross-lingual Learning can help to bring state-of-the-art deep learning solutions to smaller languag...
Multilingual Neural Machine Translation (MNMT) trains a single NMT model that supports translation b...
Cross-lingual natural language inference is a fundamental task in cross-lingual natural language und...
The current generation of neural network-based natural language processing models excels at learning...