We present a novel unsupervised framework for focused meeting summarization that views the problem as an instance of relation extraction. We adapt an existing in-domain relation learner (Chen et al., 2011) by exploiting a set of task-specific constraints and features. We evaluate the approach on a decision summarization task and show that it outperforms unsupervised utterance-level extractive summarization baselines as well as an existing generic relation-extraction-based summarization method. Moreover, our approach produces summaries competitive with those generated by supervised methods in terms of the standard ROUGE score.
In this paper, we investigate using meeting-specific characteris-tics to improve extractive meeting ...
Rooted in multi-document summarization, maximum marginal rel-evance (MMR) is a widely used algorithm...
We investigate a new training paradigm for extractive summarization. Traditionally, human abstracts ...
This paper presents an unsupervised, graph based approach for extractive summarization of meetings. ...
We address the challenge of generating natural language abstractive summaries for spoken meetings in...
In this paper we present a novel resampling model for extractive meeting summarization. With resampl...
International audienceWe analyze and compare two different methods for unsupervised extractive spont...
We analyze and compare two different methods for unsupervised extractive spontaneous speech summariz...
Nowadays, there are various ways for people to share and exchange information. Phone calls, E-mails,...
International audienceText summarization is one of the challenges of Natural Language Processing. Gi...
Abstract A system that could reliably identify and sum up the most important points of a conversatio...
Abstract—We propose a novel approach for unsupervised extractive summarization. Our approach builds ...
We address the problem of identifying words and phrases that accurately capture, or contribute to, t...
This paper presents an unsupervised, graph based approach for extractive summarization of meetings. ...
We propose a method for extractive summarization of audiovisual recordings focusing on topic-level s...
In this paper, we investigate using meeting-specific characteris-tics to improve extractive meeting ...
Rooted in multi-document summarization, maximum marginal rel-evance (MMR) is a widely used algorithm...
We investigate a new training paradigm for extractive summarization. Traditionally, human abstracts ...
This paper presents an unsupervised, graph based approach for extractive summarization of meetings. ...
We address the challenge of generating natural language abstractive summaries for spoken meetings in...
In this paper we present a novel resampling model for extractive meeting summarization. With resampl...
International audienceWe analyze and compare two different methods for unsupervised extractive spont...
We analyze and compare two different methods for unsupervised extractive spontaneous speech summariz...
Nowadays, there are various ways for people to share and exchange information. Phone calls, E-mails,...
International audienceText summarization is one of the challenges of Natural Language Processing. Gi...
Abstract A system that could reliably identify and sum up the most important points of a conversatio...
Abstract—We propose a novel approach for unsupervised extractive summarization. Our approach builds ...
We address the problem of identifying words and phrases that accurately capture, or contribute to, t...
This paper presents an unsupervised, graph based approach for extractive summarization of meetings. ...
We propose a method for extractive summarization of audiovisual recordings focusing on topic-level s...
In this paper, we investigate using meeting-specific characteris-tics to improve extractive meeting ...
Rooted in multi-document summarization, maximum marginal rel-evance (MMR) is a widely used algorithm...
We investigate a new training paradigm for extractive summarization. Traditionally, human abstracts ...