Instance based learning and clustering are popular methods in propositional machine learning. Both methods use a notion of similarity between objects. This dissertation investigates these methods in a relational setting. First, a number of new metrics are proposed. Next, these metrics are used to upgrade clustering and instance based learning to first order logic.status: publishe
In relational learning, predictions for an individual are based not only on its own properties but a...
© Springer International Publishing Switzerland 2014. Machine learning systems can be distinguished ...
This research project addresses the problem of statistical predicate invention in machine learning. ...
The similarity measures used in first-order IBL so far have been limited to the function-free case. ...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
Several learning systems, such as systems based on clustering and instance based learning, use a mea...
this paper we will describe a relational instance-based algorithm which we terme
For many real-world applications it is important to choose the right representation language. While ...
ii Instance-based learning is a machine learning method that classifies new examples by comparing th...
Abstract. Attribute-value based representations, standard in today’s data mining systems, have a lim...
While the popularity of statistical, probabilistic and exhaustive machine learning techniques still ...
Instance-based learning is a machine learning method that classifies new examples by comparing them ...
Selecting a suitable proximity measure is one of the fundamental tasks in clustering. How to effecti...
© Springer-Verlag Berlin Heidelberg 1998. Several learning systems, such as systems based on cluster...
The primary difference between propositional (attribute-value) and relational data is the existence ...
In relational learning, predictions for an individual are based not only on its own properties but a...
© Springer International Publishing Switzerland 2014. Machine learning systems can be distinguished ...
This research project addresses the problem of statistical predicate invention in machine learning. ...
The similarity measures used in first-order IBL so far have been limited to the function-free case. ...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
Several learning systems, such as systems based on clustering and instance based learning, use a mea...
this paper we will describe a relational instance-based algorithm which we terme
For many real-world applications it is important to choose the right representation language. While ...
ii Instance-based learning is a machine learning method that classifies new examples by comparing th...
Abstract. Attribute-value based representations, standard in today’s data mining systems, have a lim...
While the popularity of statistical, probabilistic and exhaustive machine learning techniques still ...
Instance-based learning is a machine learning method that classifies new examples by comparing them ...
Selecting a suitable proximity measure is one of the fundamental tasks in clustering. How to effecti...
© Springer-Verlag Berlin Heidelberg 1998. Several learning systems, such as systems based on cluster...
The primary difference between propositional (attribute-value) and relational data is the existence ...
In relational learning, predictions for an individual are based not only on its own properties but a...
© Springer International Publishing Switzerland 2014. Machine learning systems can be distinguished ...
This research project addresses the problem of statistical predicate invention in machine learning. ...