- to develop a sound theoretical understanding of probabilistic logic learning that enables one to develop effective probabilistic logic learning systems and to apply them on significant real-life applications.
To realize this aim, the APrIL II consortium will
- develop a number of significant "show-case" applications of probabilistic logic learning in the area of bio-informatics, more specifically, concerning protein folding, metabolic pathways, and genetics.
- develop the needed theory, probabilistic representations, learning algorithms and systems that enables one to learn interesting probabilistic logic models in real-life applications on the basis of data.
The methodology applied is that of the field of inductive logic programming, which explains the title of the project.