A central question for knowledge representation is how to encode and handle uncertain knowledge adequately. We introduce the probabilistic description logic ALCP that is designed for representing context-dependent knowledge, where the actual context taking place is uncertain. ALCP allows the expression of logical dependencies on the domain and probabilistic dependencies on the possible contexts. In order to draw probabilistic conclusions, we employ the principle of maximum entropy. We provide reasoning algorithms for this logic, and show that it satisfies several desirable properties of probabilistic logics.
Peñaloza, R., Potyka, N. (2016). Probabilistic Reasoning in the Description Logic ALCP with the Principle of Maximum Entropy. In Proceedings of the 10th International Conference on Scalable Uncertainty Management (SUM 2016) (pp.246-259). Springer Verlag [10.1007/978-3-319-45856-4_17].
Probabilistic Reasoning in the Description Logic ALCP with the Principle of Maximum Entropy
Peñaloza, R;
2016
Abstract
A central question for knowledge representation is how to encode and handle uncertain knowledge adequately. We introduce the probabilistic description logic ALCP that is designed for representing context-dependent knowledge, where the actual context taking place is uncertain. ALCP allows the expression of logical dependencies on the domain and probabilistic dependencies on the possible contexts. In order to draw probabilistic conclusions, we employ the principle of maximum entropy. We provide reasoning algorithms for this logic, and show that it satisfies several desirable properties of probabilistic logics.File | Dimensione | Formato | |
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