Proceedings:
AI Technologies for Homeland Security
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Papers from the 2005 AAAI Spring Symposium
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Abstract:
Discovering and evaluating interesting patterns and semantic associations in vast amount of information provided by many different sources is an important and time-consuming work for homeland security analysts. By publishing or converting such information in semantic web language, intelligent agents can automate the inference without compromising the semantics. This paper describes how trust and provenance can be represented/obtained in the Semantic Web and then be used to evaluate trustworthiness of discovered semantic associations and to make discovery process effective and efficient.
Spring
Papers from the 2005 AAAI Spring Symposium