One of the key open questions of Artificial Intelligence
concerns probabilistic logic learning, i.e. the integration of
probabilistic reasoning, with first order logic representations
and machine learning. The overall goal of the APrIL II project is
therefore
to develop a sound theoretical understanding of probabilistic logic learning that enables one to develop e ective probabilistic logic learning systems and to apply them on significant real-life applications.
To realize this aim, the APrIL II consortium will
The methodology applied is that of the field of inductive logic programming, which explains the title of the project.