An abstract must not change the meaning of the original text. A single most effective way to achieve that is to increase the amount of copying while still allowing for text abstraction. Human editors can usually exercise control over copying, resulting in summaries that are more extractive than abstractive, or vice versa. However, it remains poorly understood whether modern neural abstractive summarizers can provide the same flexibility, i.e., learning from single reference summaries to generate multiple summary hypotheses with varying degrees of copying. In this paper, we present a neural summarization model that, by learning from single human abstracts, can produce a broad spectrum of summaries ranging from purely extractive to highly gen...
The recent artificial intelligence studies have witnessed great interest in abstractive text summari...
Automatic summarization aims to reduce an input document to a compressed version that captures only ...
Unlike extractive summarization, abstractive summarization has to fuse different parts of the source...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
In recent years, abstract summarization has undergone significant advancements driven by the emergen...
Recently, neural network-based approaches have pushed the performance of both extractive and abstrac...
Recently, neural network-based approaches have pushed the performance of both extractive and abstrac...
The focus of automatic text summarization research has exhibited a gradual shift from extractive met...
Sentences produced by abstractive summarization systems can be ungrammatical and fail to preserve th...
In neural abstractive summarization field, conventional sequence-to-sequence based models often suff...
Recent work on abstractive summarization has made progress with neural encoder-decoder architectures...
Summarization is a complex task whose goal is to generate a concise version of a text without necess...
Summarization is a complex task whose goal is to generate a concise version of a text without necess...
Like humans, document summarization models can interpret a document’s contents in a number of ways. ...
As the growth of online data continues, automatic summarization is integral in generating a condens...
The recent artificial intelligence studies have witnessed great interest in abstractive text summari...
Automatic summarization aims to reduce an input document to a compressed version that captures only ...
Unlike extractive summarization, abstractive summarization has to fuse different parts of the source...
Recent deep learning and sequence-to-sequence learning technology have produced impressive results o...
In recent years, abstract summarization has undergone significant advancements driven by the emergen...
Recently, neural network-based approaches have pushed the performance of both extractive and abstrac...
Recently, neural network-based approaches have pushed the performance of both extractive and abstrac...
The focus of automatic text summarization research has exhibited a gradual shift from extractive met...
Sentences produced by abstractive summarization systems can be ungrammatical and fail to preserve th...
In neural abstractive summarization field, conventional sequence-to-sequence based models often suff...
Recent work on abstractive summarization has made progress with neural encoder-decoder architectures...
Summarization is a complex task whose goal is to generate a concise version of a text without necess...
Summarization is a complex task whose goal is to generate a concise version of a text without necess...
Like humans, document summarization models can interpret a document’s contents in a number of ways. ...
As the growth of online data continues, automatic summarization is integral in generating a condens...
The recent artificial intelligence studies have witnessed great interest in abstractive text summari...
Automatic summarization aims to reduce an input document to a compressed version that captures only ...
Unlike extractive summarization, abstractive summarization has to fuse different parts of the source...