Automatic summarization has advanced greatly in the past few decades. However, there remains a huge gap between the content quality of human and machine summaries. There is also a large disparity between the performance of current systems and that of the best possible automatic systems. In this thesis, we explore how the content quality of machine summaries can be improved. First, we introduce a supervised model to predict the importance of words in the input sets, based on a rich set of features. Our model is superior to prior methods in identifying words used in human summaries (i.e., summary keywords). We show that a modular extractive summarizer using the estimates of word importance can generate summaries comparable to the state-of-the...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In this paper, we propose a supervised model for ranking word importance that incorporates a rich se...
Text summarization is a rapidly growing field with many new innovations. End-to-end models using the...
This paper describes a multidocument summarizer built upon research into the detection of new inform...
Different summarization requirements could make the writing of a good summarymore difficult, or easi...
Automatic summarization is the process of presenting the contents of written documents in a short, c...
We show that by making use of information common to document sets belonging to a common category, we...
By synthesizing information common to retrieved documents, multi-document summarization can help use...
Automatic text summarization is the process of automatically creating a compressed version of a give...
Automatic text summarization techniques, which can reduce a source text to a summary text by content...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
In this thesis, we have approached a technique for tackling abstractive text summarization tasks wi...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In this paper, we propose a supervised model for ranking word importance that incorporates a rich se...
Text summarization is a rapidly growing field with many new innovations. End-to-end models using the...
This paper describes a multidocument summarizer built upon research into the detection of new inform...
Different summarization requirements could make the writing of a good summarymore difficult, or easi...
Automatic summarization is the process of presenting the contents of written documents in a short, c...
We show that by making use of information common to document sets belonging to a common category, we...
By synthesizing information common to retrieved documents, multi-document summarization can help use...
Automatic text summarization is the process of automatically creating a compressed version of a give...
Automatic text summarization techniques, which can reduce a source text to a summary text by content...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
In this thesis, we have approached a technique for tackling abstractive text summarization tasks wi...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...
Automatic text summarization is a particularly challenging Natural Language Processing (NLP) task in...