Declarative Bias for Specific-to-General ILP Systems

Abstract

A comparative study is presented of language biases employed in specific-to-general learning systems within the Inductive Logic Programming (ILP) paradigm. More specifically, we focus on the biases employed in three well known systems: CLINT, GOLEM and ITOU, and evaluate both conceptually and empirically their strengths and weaknesses. The evaluation is carried out within the generic framework of the NINA system, in which bias is a parameter. Two different types of biases are considered: syntactic bias, which defines the set of well-formed clauses, and semantic bias, which imposes restrictions on the behaviour of hypotheses or clauses. NINA is also able to shift its bias (within a predefined series of biases), whenever its current bias is insufficient for finding complete and consistent concept definitions. Furthermore, a new formalism for specifying the syntactic bias of inductive logic programming systems is introduced.

Cite

Text

Adé et al. "Declarative Bias for Specific-to-General ILP Systems." Machine Learning, 1995. doi:10.1007/BF00993477

Markdown

[Adé et al. "Declarative Bias for Specific-to-General ILP Systems." Machine Learning, 1995.](https://mlanthology.org/mlj/1995/ade1995mlj-declarative/) doi:10.1007/BF00993477

BibTeX

@article{ade1995mlj-declarative,
  title     = {{Declarative Bias for Specific-to-General ILP Systems}},
  author    = {Adé, Hilde and De Raedt, Luc and Bruynooghe, Maurice},
  journal   = {Machine Learning},
  year      = {1995},
  pages     = {119-154},
  doi       = {10.1007/BF00993477},
  volume    = {20},
  url       = {https://mlanthology.org/mlj/1995/ade1995mlj-declarative/}
}