Buch, Englisch, Band 328, 236 Seiten
Buch, Englisch, Band 328, 236 Seiten
Reihe: Dissertations in Artificial Intelligence
ISBN: 978-1-60750-098-8
Verlag: IOS Press
This dissertation discusses several issues pertaining to probabilistic conditionals: learning them from data and using them for modeling. The first part of this thesis presents the implementation of a method for learning probabilistic conditionals from data. In the second part, this learning technique is applied to the problem of fusing data originating from different sources. The third part is the focal point of the thesis. Here, an extension of a propositional probabilistic conditional logic to a first-order probabilistic conditional logic is developed and an approach to reduce the complexity of computing the maximum entropy model of a set of first-order probabilistic conditionals is devised.