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On Exact Learning of Unordered Tree Patterns
Thomas R. Amoth,
Paul Cull,
and Prasad Tadepalli.
Machine Learning, 43(3):211--243, September 2001.
Abstract
Tree patterns are natural candidates for representing rules and hypotheses in
many tasks such as information extraction and symbolic mathematics. A tree
pattern is a tree with labeled nodes where some of the leaves may be labeled
with variables, whereas a tree instance has no variables. A tree pattern
matches an instance if there is a consistent substitution for the variables
that allows a mapping of subtrees to matching subtrees of the instance. A
finite union of tree patterns is called a forest. In this paper, we study the
learnability of tree patterns from queries when the subtrees are unordered.
The learnability is determined by the semantics of matching as defined by the
types of mappings from the pattern subtrees to the instance subtrees. We
first show that unordered tree patterns and forests are not exactly learnable
from equivalence and subset queries when the mapping between subtrees is
one-to-one onto, regardless of the computational power of the learner. Tree
and forest patterns are learnable from equivalence and membership queries for
the one-to-one into mapping. Finally, we connect the problem of learning tree
patterns to inductive logic programming by describing a class of tree
patterns called Clausal trees that includes non-recursive single-predicate
Horn clauses and show that this class is learnable from equivalence and
membership queries.
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