The aim of relational learning is to develop methods for the induction of hypotheses in representation formalisms that are more expressive than attribute-value representation. Most work on relational learning has been focused on induction in subsets of first order logic like Horn clauses. In this paper we introduce the representation formalism based on feature terms and we introduce the corresponding notions of subsumption and anti-unification. Then we explain INDIE, a heuristic bottom-up learning method that induces class hypotheses, in the form of feature terms, from positive and negative examples. The biases used in INDIE while searching the hypothesis space are explained while describing INDIE's algorithms. The representational bias of ...
The primary difference between propositional (attribute-value) and relational data is the existence ...
Regularization is one of the key concepts in machine learning, but so far it has received only littl...
While understanding natural language is easy for humans, it is complex forcomputers. The main reason...
We present a paradigm for efficient learning and inference with relational data using propositional...
Relation-based category learning is based on very different principles than feature-based category l...
Relational learning can be described as the task of learning first-order logic rules from examples. ...
We study representations and relational learning over structured domains within a propositionalizati...
Abstract. Attribute-value based representations, standard in today’s data mining systems, have a lim...
My primary research motivation is the development of a truly generic Machine Learning engine. Toward...
textInductive Logic Programming (ILP) is the intersection of Machine Learning and Logic Programming...
Following the success of inductive logic programming on structurally complex but small problems, rec...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
This research project addresses the problem of statistical predicate invention in machine learning. ...
this paper are designed such that they can easily be generalised to other kinds of dependencies. Lik...
Information Extraction (IE) has become an indispensable tool in our quest to handle the data deluge ...
The primary difference between propositional (attribute-value) and relational data is the existence ...
Regularization is one of the key concepts in machine learning, but so far it has received only littl...
While understanding natural language is easy for humans, it is complex forcomputers. The main reason...
We present a paradigm for efficient learning and inference with relational data using propositional...
Relation-based category learning is based on very different principles than feature-based category l...
Relational learning can be described as the task of learning first-order logic rules from examples. ...
We study representations and relational learning over structured domains within a propositionalizati...
Abstract. Attribute-value based representations, standard in today’s data mining systems, have a lim...
My primary research motivation is the development of a truly generic Machine Learning engine. Toward...
textInductive Logic Programming (ILP) is the intersection of Machine Learning and Logic Programming...
Following the success of inductive logic programming on structurally complex but small problems, rec...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
This research project addresses the problem of statistical predicate invention in machine learning. ...
this paper are designed such that they can easily be generalised to other kinds of dependencies. Lik...
Information Extraction (IE) has become an indispensable tool in our quest to handle the data deluge ...
The primary difference between propositional (attribute-value) and relational data is the existence ...
Regularization is one of the key concepts in machine learning, but so far it has received only littl...
While understanding natural language is easy for humans, it is complex forcomputers. The main reason...