Current research in automatic single-document summarization is dominated by two effective, yet naı̈ve approaches: summarization by sentence extraction and headline generation via bag-of-words models. While successful in some tasks, neither of these models is able to adequately capture the large set of linguistic devices utilized by humans when they produce summaries. One possible explanation for the widespread use of these models is that good techniques have and document / headline corpora. We believe that future progress in automatic summarization will be driven both by the development of more sophisticated, linguistically informed models, as well as a more effective leveraging of document/abstract corpora. In order to open the doors to si...
For developing a data-driven text rewriting algorithm for paraphrasing, it is essential to have a mo...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In this thesis we present the idea of using parallel phrases for word alignment. Each parallel phras...
We consider the unsupervised alignment of the full text of a book with a human-written summary. This...
Abstract. Aligning texts and their multi-document summaries is the task of determining the correspon...
We consider the unsupervised alignment of the full text of a book with a human-written summary. This...
As the information on the internet continues to expand exponentially, machine learning, is becoming ...
Automatic documet summarization refers to the task of creating document surrogates that are smaller ...
Automatic text alignment is an important problem in natural language processing. It can be used to c...
The Multi-document Summarization (MDS) has been focused in Natural Language Processing (NLP) and its...
AbstractThe Multi-document Summarization (MDS) has been focused in Natural Language Processing (NLP)...
In this paper, we study one semi-supervised and several supervised methods for extrac-tive query-foc...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Abstract. This paper presents an empirical investigation of sentence position relevance in a corpus ...
The technology of automatic document summarization is maturing and may provide a solution to the in...
For developing a data-driven text rewriting algorithm for paraphrasing, it is essential to have a mo...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In this thesis we present the idea of using parallel phrases for word alignment. Each parallel phras...
We consider the unsupervised alignment of the full text of a book with a human-written summary. This...
Abstract. Aligning texts and their multi-document summaries is the task of determining the correspon...
We consider the unsupervised alignment of the full text of a book with a human-written summary. This...
As the information on the internet continues to expand exponentially, machine learning, is becoming ...
Automatic documet summarization refers to the task of creating document surrogates that are smaller ...
Automatic text alignment is an important problem in natural language processing. It can be used to c...
The Multi-document Summarization (MDS) has been focused in Natural Language Processing (NLP) and its...
AbstractThe Multi-document Summarization (MDS) has been focused in Natural Language Processing (NLP)...
In this paper, we study one semi-supervised and several supervised methods for extrac-tive query-foc...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Abstract. This paper presents an empirical investigation of sentence position relevance in a corpus ...
The technology of automatic document summarization is maturing and may provide a solution to the in...
For developing a data-driven text rewriting algorithm for paraphrasing, it is essential to have a mo...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
In this thesis we present the idea of using parallel phrases for word alignment. Each parallel phras...