Automatic text summarization extracts important information from texts and presents the information in the form of a summary. Abstractive summarization approaches progressed significantly by switching to deep neural networks, but results are not yet satisfactory, especially for languages where large training sets do not exist. In several natural language processing tasks, a cross-lingual model transfer is successfully applied in less-resource languages. For summarization, the cross-lingual model transfer was not attempted due to a non-reusable decoder side of neural models that cannot correct target language generation. In our work, we use a pre-trained English summarization model based on deep neural networks and sequence-to-sequence archi...
Most of the models proposed in the literature for abstractive summarization are generally suitable f...
An abstract must not change the meaning of the original text. A single most effective way to achieve...
Neural abstractive summarization has been studied in many pieces of literature and achieves great su...
Automatic text summarization is a process of extracting important information from texts and present...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
Automatic text summarization aims at producing a shorter version of the input text that conveys the ...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
The focus of automatic text summarization research has exhibited a gradual shift from extractive met...
Text summarization is considered as a challenging task in the NLP community. The availability of dat...
Text summarization is an established sequence learning problem divided into extractive and abstracti...
The popularization of social networks and digital documents has quickly increased the multilingual i...
We present work on summarising deliberative processes for non-English languages. Unlike commonly stu...
Current state-of-the-art cross-lingual summarization models employ multi-task learning paradigm, whi...
Background Humans must be able to cope with the huge amounts of information produced by the informat...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Most of the models proposed in the literature for abstractive summarization are generally suitable f...
An abstract must not change the meaning of the original text. A single most effective way to achieve...
Neural abstractive summarization has been studied in many pieces of literature and achieves great su...
Automatic text summarization is a process of extracting important information from texts and present...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
Automatic text summarization aims at producing a shorter version of the input text that conveys the ...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
The focus of automatic text summarization research has exhibited a gradual shift from extractive met...
Text summarization is considered as a challenging task in the NLP community. The availability of dat...
Text summarization is an established sequence learning problem divided into extractive and abstracti...
The popularization of social networks and digital documents has quickly increased the multilingual i...
We present work on summarising deliberative processes for non-English languages. Unlike commonly stu...
Current state-of-the-art cross-lingual summarization models employ multi-task learning paradigm, whi...
Background Humans must be able to cope with the huge amounts of information produced by the informat...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Most of the models proposed in the literature for abstractive summarization are generally suitable f...
An abstract must not change the meaning of the original text. A single most effective way to achieve...
Neural abstractive summarization has been studied in many pieces of literature and achieves great su...