This paper examines the induction of classification rules from examples using real-world data. Real-world data is almost always characterized by two features, which are important for the design of an induction algorithm. Firstly, there is often noise present, for example, due to imperfect measuring equipment used to collect the data. Secondly the description language is often incomplete, such that examples with identical descriptions in the language will not always be members of the same class. Many induction systems make the `noiseless domain' assumption that the examples do not contain errors and the description language is complete, and consequently constrain their search for rules to those for which no counterexamples exist in the ...
Data mining has become an important technique which has tremendous potential in many commercial and ...
The aim of this paper is to show how abduction can be used in classification tasks when we deal with...
The automatic inductive learning of production rules in a classification environment is a difficult ...
This work addresses the problem of rule learning from simple robot experiences like approaching or p...
Compression measures used in inductive learners, such as measures based on the minimum description l...
This paper presents a new approach for identifying and eliminating mislabeled instances in large or ...
Central to all systems for machine learning from examples is an induction algorithm. The purpose of ...
. This paper describes a multi-layer incremental induction algorithm, MLII, which is linked to an ex...
Abstract. The automatic induction of classification rules from examples is an important technique us...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...
RULES-3 Plus is a member of the RULES family of simple inductive learning algorithms with successful...
The problem of induction is a central problem in philosophy of science and concerns whether it is so...
The automatic inductive learning of production rules in a classification environment is a difficult ...
To cleanse mislabeled examples from a training dataset for efficient and effective induction, most e...
AbstractWe present ELEM2, a machine learning system that induces classification rules from a set of ...
Data mining has become an important technique which has tremendous potential in many commercial and ...
The aim of this paper is to show how abduction can be used in classification tasks when we deal with...
The automatic inductive learning of production rules in a classification environment is a difficult ...
This work addresses the problem of rule learning from simple robot experiences like approaching or p...
Compression measures used in inductive learners, such as measures based on the minimum description l...
This paper presents a new approach for identifying and eliminating mislabeled instances in large or ...
Central to all systems for machine learning from examples is an induction algorithm. The purpose of ...
. This paper describes a multi-layer incremental induction algorithm, MLII, which is linked to an ex...
Abstract. The automatic induction of classification rules from examples is an important technique us...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...
RULES-3 Plus is a member of the RULES family of simple inductive learning algorithms with successful...
The problem of induction is a central problem in philosophy of science and concerns whether it is so...
The automatic inductive learning of production rules in a classification environment is a difficult ...
To cleanse mislabeled examples from a training dataset for efficient and effective induction, most e...
AbstractWe present ELEM2, a machine learning system that induces classification rules from a set of ...
Data mining has become an important technique which has tremendous potential in many commercial and ...
The aim of this paper is to show how abduction can be used in classification tasks when we deal with...
The automatic inductive learning of production rules in a classification environment is a difficult ...