A Bayesian Method to Incorporate Background Knowledge during Automatic Text Summarization
0202 electrical engineering, electronic engineering, information engineering
02 engineering and technology
DOI:
10.3115/v1/p14-2055
Publication Date:
2015-06-14T07:10:01Z
AUTHORS (1)
ABSTRACT
In order to summarize a document, it is often useful to have a background set of documents from the domain to serve as a reference for determining new and important information in the input document. We present a model based on Bayesian surprise which provides an intuitive way to identify surprising information from a summarization input with respect to a background corpus. Specifically, the method quantifies the degree to which pieces of information in the input change one’s beliefs’ about the world represented in the background. We develop systems for generic and update summarization based on this idea. Our method provides competitive content selection performance with particular advantages in the update task where systems are given a small and topical background corpus.
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