Summary sentences are often paraphrases of existing sentences. They may be made up of recycled fragments of text taken from important sentences in an input document. We investigate the use of a statistical sentence generation technique that recombines words probabilistically in order to create new sentences. Given a set of event-related sentences, we use an extended version of the Viterbi algorithm which employs dependency relation and bigram probabilities to find the most probable summary sentence. Using precision and recall metrics for verb arguments as a measure of grammaticality, we find that our system performs better than a bigram baseline, producing fewer spurious verb arguments.8 page(s
Abstract-Automated paraphrasing of natural language text has many interesting applications from aidi...
In abstractive summarisation, summaries can include novel sentences that are generated automatically...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...
In many text-to-text generation scenarios (for instance, summarisation), we encounter humanauthored ...
Paraphrase generation is often presented as a monolingual statistical machine trans-lation problem. ...
We examine the problem of content selection in statistical novel sentence generation. Our approach m...
International audienceThis article delves into the scoring function of the statistical paraphrase ge...
The soundness of syntax is an important issue for the paraphrase generation task. Most methods cont...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...
Abstract-like text summarisation requires a means of producing novel summary sentences. In order to ...
The most critical issue in generating and recognizing paraphrases is development of wide-coverage pa...
The present dissertation and project describes a system for automatic summarising of texts. Instead ...
Abstract—In this paper, we consider extractive summarization of broadcast news speech, and propose a...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
Abstract. This paper proposes an effective method to extract salient sentences using contextual info...
Abstract-Automated paraphrasing of natural language text has many interesting applications from aidi...
In abstractive summarisation, summaries can include novel sentences that are generated automatically...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...
In many text-to-text generation scenarios (for instance, summarisation), we encounter humanauthored ...
Paraphrase generation is often presented as a monolingual statistical machine trans-lation problem. ...
We examine the problem of content selection in statistical novel sentence generation. Our approach m...
International audienceThis article delves into the scoring function of the statistical paraphrase ge...
The soundness of syntax is an important issue for the paraphrase generation task. Most methods cont...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...
Abstract-like text summarisation requires a means of producing novel summary sentences. In order to ...
The most critical issue in generating and recognizing paraphrases is development of wide-coverage pa...
The present dissertation and project describes a system for automatic summarising of texts. Instead ...
Abstract—In this paper, we consider extractive summarization of broadcast news speech, and propose a...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
Abstract. This paper proposes an effective method to extract salient sentences using contextual info...
Abstract-Automated paraphrasing of natural language text has many interesting applications from aidi...
In abstractive summarisation, summaries can include novel sentences that are generated automatically...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...