We examine the problem of content selection in statistical novel sentence generation. Our approach models the processes performed by professional editors when incorporating material from additional sentences to support some initially chosen key summary sentence, a process we refer to as Sentence Augmentation. We propose and evaluate a method called “Seed and Grow” for selecting such auxiliary information. Additionally, we argue that this can be performed using schemata, as represented by word-pair co-occurrences, and demonstrate its use in statistical summary sentence generation. Evaluation results are supportive, indicating that a schemata model significantly improves over the baseline.10 page(s
Human-quality text summarization systems are difficult to design, and even more difficult to evaluat...
Like humans, document summarization models can interpret a document’s contents in a number of ways. ...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...
Summary sentences are often paraphrases of existing sentences. They may be made up of recycled fragm...
This paper is based on work being carried out jointly with Jacques Robin, in the case of STREAK, and...
Abstract-like text summarisation requires a means of producing novel summary sentences. In order to ...
this paper, we present a system for summarizing quantitative data in natural language, focusing on h...
We present sentence enhancement as a novel technique for text-to-text genera-tion in abstractive sum...
Abstract. This paper proposes an effective method to extract salient sentences using contextual info...
In this paper, we explore the use of automatic syntactic simplification for improving content select...
Saliency and coverage are two of the most important issues in document summarization. In most summar...
In abstractive summarisation, summaries can include novel sentences that are generated automatically...
The main focus of this work is to investi- gate robust ways for generating summaries from summary re...
AbstractWe present a system for summarizing quantitative data in natural language, focusing on the u...
In abstract-like summarisation, extracted sentences containing key content are often revised to impr...
Human-quality text summarization systems are difficult to design, and even more difficult to evaluat...
Like humans, document summarization models can interpret a document’s contents in a number of ways. ...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...
Summary sentences are often paraphrases of existing sentences. They may be made up of recycled fragm...
This paper is based on work being carried out jointly with Jacques Robin, in the case of STREAK, and...
Abstract-like text summarisation requires a means of producing novel summary sentences. In order to ...
this paper, we present a system for summarizing quantitative data in natural language, focusing on h...
We present sentence enhancement as a novel technique for text-to-text genera-tion in abstractive sum...
Abstract. This paper proposes an effective method to extract salient sentences using contextual info...
In this paper, we explore the use of automatic syntactic simplification for improving content select...
Saliency and coverage are two of the most important issues in document summarization. In most summar...
In abstractive summarisation, summaries can include novel sentences that are generated automatically...
The main focus of this work is to investi- gate robust ways for generating summaries from summary re...
AbstractWe present a system for summarizing quantitative data in natural language, focusing on the u...
In abstract-like summarisation, extracted sentences containing key content are often revised to impr...
Human-quality text summarization systems are difficult to design, and even more difficult to evaluat...
Like humans, document summarization models can interpret a document’s contents in a number of ways. ...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...