This thesis investigates whether the summarisation of news-worthy events can be improved by using evidence about entities (i.e.\ people, places, and organisations) involved in the events. More effective event summaries, that better assist people with their news-based information access requirements, can help to reduce information overload in today's 24-hour news culture. Summaries are based on sentences extracted verbatim from news articles about the events. Within a supervised machine learning framework, we propose a series of entity-focused event summarisation features. Computed over multiple news articles discussing a given event, such entity-focused evidence estimates: the importance of entities within events; the significance of int...
A primary objective of news articles is to establish the factual record for an event, frequently ach...
We present a methodology for summarization of news about current events in the form of briefings tha...
During major events, such as emergencies and disasters, a large volume of information is reported on...
This thesis investigates whether the summarisation of news-worthy events can be improved by using ev...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
Event extraction has been well studied for more than two decades, through both the lens of document-...
A summary of any event type is only complete if certain information aspects are mentioned. For a cou...
The 58th Annual Meeting of the Association for Computational Linguistics (ACL 2020), Online, 5-10 Ju...
In this paper we describe our participation in the Guided Summarization Task at the Text Analysis Co...
A common feature of news reports is the reference to events other than the one which is central to ...
Systems that distill information about events from large corpora generally extract sentences that ar...
Abstract. A summary of any event type is only complete if certain in-formation aspects are mentioned...
Many articles on the same news are daily published by online newspapers and by various social media....
Automatic multi-document summarization (MDS) is the process of extracting the most important informa...
We describe a task-based evaluation to determine whether multi-document summaries measurably improve...
A primary objective of news articles is to establish the factual record for an event, frequently ach...
We present a methodology for summarization of news about current events in the form of briefings tha...
During major events, such as emergencies and disasters, a large volume of information is reported on...
This thesis investigates whether the summarisation of news-worthy events can be improved by using ev...
In this paper, we investigate extractive multi-document summarisation algorithms over newswire corp...
Event extraction has been well studied for more than two decades, through both the lens of document-...
A summary of any event type is only complete if certain information aspects are mentioned. For a cou...
The 58th Annual Meeting of the Association for Computational Linguistics (ACL 2020), Online, 5-10 Ju...
In this paper we describe our participation in the Guided Summarization Task at the Text Analysis Co...
A common feature of news reports is the reference to events other than the one which is central to ...
Systems that distill information about events from large corpora generally extract sentences that ar...
Abstract. A summary of any event type is only complete if certain in-formation aspects are mentioned...
Many articles on the same news are daily published by online newspapers and by various social media....
Automatic multi-document summarization (MDS) is the process of extracting the most important informa...
We describe a task-based evaluation to determine whether multi-document summaries measurably improve...
A primary objective of news articles is to establish the factual record for an event, frequently ach...
We present a methodology for summarization of news about current events in the form of briefings tha...
During major events, such as emergencies and disasters, a large volume of information is reported on...