Data-driven approaches to sequence-to-sequence modelling have been successfully applied to short text summarization of news articles. Such models are typically trained on input-summary pairs consisting of only a single or a few sentences, partially due to limited availability of multi-sentence training data. Here, we propose to use scientific articles as a new milestone for text summarization: large-scale training data come almost for free with two types of high-quality summaries at different levels - the title and the abstract. We generate two novel multi-sentence summarization datasets from scientific articles and test the suitability of a wide range of existing extractive and abstractive neural network-based summarization approaches. Our...
Using data-driven models for solving text summarization or similar tasks has become very common in t...
Recently, we live with a huge amount of data. For example, we have great amount of news articles eve...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
Data-driven approaches to sequence-to-sequence modelling have been successfully applied to short tex...
Sequence-to-sequence models have recently gained the state of the art performance in summarization. ...
AbstractRecently, we live with a huge amount of data. For example, we have great amount of news arti...
Recent developments in sequence-to-sequence learning with neural networks have considerably improved...
Automatic text summarisation (ATS) is a central task in natural language processing that aims to red...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper we present the first steps toward improving summarization of scientific documents thr...
International audienceTransformer deep models have gained lots of attraction in Neural Text Summariz...
Text summarization is a rapidly growing field with many new innovations. End-to-end models using the...
Researchers and scientists increasingly find themselves in the position of having to quickly underst...
Automatic text summarization is one of the eminent applications in the field of Natural Language Pr...
Document summarization is the task of automatically generating a shorter version of a document or mu...
Using data-driven models for solving text summarization or similar tasks has become very common in t...
Recently, we live with a huge amount of data. For example, we have great amount of news articles eve...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
Data-driven approaches to sequence-to-sequence modelling have been successfully applied to short tex...
Sequence-to-sequence models have recently gained the state of the art performance in summarization. ...
AbstractRecently, we live with a huge amount of data. For example, we have great amount of news arti...
Recent developments in sequence-to-sequence learning with neural networks have considerably improved...
Automatic text summarisation (ATS) is a central task in natural language processing that aims to red...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper we present the first steps toward improving summarization of scientific documents thr...
International audienceTransformer deep models have gained lots of attraction in Neural Text Summariz...
Text summarization is a rapidly growing field with many new innovations. End-to-end models using the...
Researchers and scientists increasingly find themselves in the position of having to quickly underst...
Automatic text summarization is one of the eminent applications in the field of Natural Language Pr...
Document summarization is the task of automatically generating a shorter version of a document or mu...
Using data-driven models for solving text summarization or similar tasks has become very common in t...
Recently, we live with a huge amount of data. For example, we have great amount of news articles eve...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...