Stanislav Purgal, David Cerna, Cezary Kaliszyk,
"Learning Higher-Order Programs without Meta-Interpretive Learning"
, Serie RISC Report Series, Nummer 21-22, RISC, JKU, Hagenberg, Linz, 12-2021, ISSN: 2791-4267
Original Titel:
Learning Higher-Order Programs without Meta-Interpretive Learning
Sprache des Titels:
Englisch
Original Kurzfassung:
Learning complex programs through textit{inductive logic programming} (ILP) remains a formidable challenge. Existing higher-order enabled ILP systems show improved accuracy and learning performance, though remain hampered by the limitations of the underlying learning mechanism. Experimental results show that our extension of the versatile textit{Learning From Failures} paradigm by higher-order definitions significantly improves learning performance without the burdensome human guidance required by existing systems. Furthermore, we provide a theoretical framework capturing the class of higher-order definitions handled by our extension.