A primary objective of news articles is to establish the factual record for an event, frequently achieved by conveying both the details of the specified event (i.e., the 5 Ws; Who, What, Where, When and Why regarding the event) and how people reacted to it (i.e., reported statements). However, existing work on news summarization almost exclusively focuses on the event details. In this work, we propose the novel task of summarizing the reactions of different speakers, as expressed by their reported statements, to a given event. To this end, we create a new multi-document summarization benchmark, SumREN, comprising 745 summaries of reported statements from various public figures obtained from 633 news articles discussing 132 events. We propos...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper, we propose a framework to produce topic-focused summarization of news events, based o...
Event extraction has been well studied for more than two decades, through both the lens of document-...
Purpose ��� The purpose of this research is to develop a method for automatic construction of multi-...
This thesis investigates whether the summarisation of news-worthy events can be improved by using ev...
The production of accurate and complete multiple-document summaries is challenged by the complexit...
We present a methodology for summarization of news about current events in the form of briefings tha...
In recent years, there has been increased interest in real-world event summarization using publicly ...
In recent years, there has been increased interest in real-world event summarization using publicly ...
We present a natural language system which summarizes a series of news articles on the same event. I...
This thesis describes the automation and evaluation of structural classification and summarisation o...
A summary of any event type is only complete if certain information aspects are mentioned. For a cou...
Event detection is a fundamental information extraction task, which has been explored largely in the...
Abstract. A summary of any event type is only complete if certain in-formation aspects are mentioned...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper, we propose a framework to produce topic-focused summarization of news events, based o...
Event extraction has been well studied for more than two decades, through both the lens of document-...
Purpose ��� The purpose of this research is to develop a method for automatic construction of multi-...
This thesis investigates whether the summarisation of news-worthy events can be improved by using ev...
The production of accurate and complete multiple-document summaries is challenged by the complexit...
We present a methodology for summarization of news about current events in the form of briefings tha...
In recent years, there has been increased interest in real-world event summarization using publicly ...
In recent years, there has been increased interest in real-world event summarization using publicly ...
We present a natural language system which summarizes a series of news articles on the same event. I...
This thesis describes the automation and evaluation of structural classification and summarisation o...
A summary of any event type is only complete if certain information aspects are mentioned. For a cou...
Event detection is a fundamental information extraction task, which has been explored largely in the...
Abstract. A summary of any event type is only complete if certain in-formation aspects are mentioned...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper, we propose a framework to produce topic-focused summarization of news events, based o...