The SENSEI Annotated Corpus: Human Summaries of Reader Comment Conversations in On-line News
Emma Barker, Monica Lestari Paramita, Ahmet Aker, Emina Kurtic, Mark Hepple and Robert Gaizauskas |
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Researchers are beginning to explore how to generate summaries of extended argumentative conversations in social media, such as those found in reader comments in on-line news. To date, however, there has been little discussion of what these summaries should be like and a lack of human-authored exemplars, quite likely because writing summaries of this kind of interchange is so difficult. In this paper we propose one type of reader comment summary – the conversation overview summary – that aims to capture the key argumentative content of a reader comment conversation. We describe a method we have developed to support humans in authoring conversation overview summaries and present a publicly available corpus – the first of its kind – of news articles plus comment sets, each multiply annotated, according to our method, with conversation overview summaries.