We cast multi-sentence compression as a structured prediction problem. Related sentences are represented by a word graph so that summaries constitute paths in the graph (Filippova, 2010). We devise a parameterised shortest path algorithm that can be written as a generalised linear model in a joint space of word graphs and compressions. We use a large-margin approach to adapt parameterised edge weights to the data such that the shortest path is identical to the desired summary. Decoding during training is performed in polynomial time using loss augmented infer-ence. Empirically, we compare our approach to the state-of-the-art in graph-based multi-sentence compression and observe significant improvements of about 7 % in ROUGE F-measure and 8%...
Structured representations are ubiquitous in natural language processing as both the product of text...
Sentence compression is the task of producing a summary of a single sentence. The compressed sentenc...
Large vocabulary speech recognition applications can benefit from an efficient data structure for re...
Multi-Sentence Compression (MSC) aims to generate a short sentence with the key information from a c...
Multi-Sentence Compression (MSC) aims to generate a short sentence with the key information from a c...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...
In this paper, we focus on the problem of using sentence compression techniques to improve multi-doc...
In this paper, we focus on the problem of using sentence compression techniques to improve multi-doc...
Sentence compression has been shown to benefit from joint inference involving both n-gram and depend...
We present an extraction based method for automatic summarization. It is based on finding the shorte...
Multi-document summarization (MDS) aims to generate a summary for a number of related documents. We ...
This article examines the application of two single-document sentence compression techniques to the ...
Extractive summarization typically uses sen-tences as summarization units. In contrast, joint compre...
AbstractIn recent times, the requirement for the generation of multi-document summary has gained a l...
In this thesis we develop models for sentence compression. This text rewriting task has recently att...
Structured representations are ubiquitous in natural language processing as both the product of text...
Sentence compression is the task of producing a summary of a single sentence. The compressed sentenc...
Large vocabulary speech recognition applications can benefit from an efficient data structure for re...
Multi-Sentence Compression (MSC) aims to generate a short sentence with the key information from a c...
Multi-Sentence Compression (MSC) aims to generate a short sentence with the key information from a c...
AbstractWhen humans produce summaries of documents, they do not simply extract sentences and concate...
In this paper, we focus on the problem of using sentence compression techniques to improve multi-doc...
In this paper, we focus on the problem of using sentence compression techniques to improve multi-doc...
Sentence compression has been shown to benefit from joint inference involving both n-gram and depend...
We present an extraction based method for automatic summarization. It is based on finding the shorte...
Multi-document summarization (MDS) aims to generate a summary for a number of related documents. We ...
This article examines the application of two single-document sentence compression techniques to the ...
Extractive summarization typically uses sen-tences as summarization units. In contrast, joint compre...
AbstractIn recent times, the requirement for the generation of multi-document summary has gained a l...
In this thesis we develop models for sentence compression. This text rewriting task has recently att...
Structured representations are ubiquitous in natural language processing as both the product of text...
Sentence compression is the task of producing a summary of a single sentence. The compressed sentenc...
Large vocabulary speech recognition applications can benefit from an efficient data structure for re...