Four-Layer Distance Metric and Distance-based Kernel Functions for Inductive Logic Programming

Nirattaya Khamsemanan, Cholwich Nattee, Masayuki Numao

Authors

  • Support Team

Keywords:

distance function, metric, first-order logic, multi-relational data mining, instance-based learning

Abstract

Inductive Logic Programming (ILP) is a field of study focusing developingmachine learning algorithms using logic programming to describe examples andhypotheses. This makes ILP techniques capable to deal with relational data,i.e. non-vector data. To learn from ILP data, an algorithm must be able tohandle non-linear data. Hypotheses generated from ILP techniques are in form ofHorn clauses, which can be interpreted by human. This is a benefit overconventional learning algorithms that generate black-box hypotheses orclassification models. Nevertheless, learning algorithms used by ILP techniquesare based on covering algorithms. It requires high comput

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Published

2020-03-01

How to Cite

Team, S. (2020). Four-Layer Distance Metric and Distance-based Kernel Functions for Inductive Logic Programming: Nirattaya Khamsemanan, Cholwich Nattee, Masayuki Numao. Thai Journal of Mathematics, 18(1), 394–410. Retrieved from https://thaijmath2.in.cmu.ac.th/index.php/thaijmath/article/view/1005