International audienceInductive learning is an efficient way to construct knowledge from the observation of a set of cases. It rises from the particular to the general and it provides a system with the capacity of finding by itself any useful knowledge to handle forthcoming cases. Given a set of observed cases (a so-called training set), an inductive learning algorithm is able to construct a more complex knowledge base. This paper focuses on one of the inductive learning algorithms that are most intensively used in data mining. This algorithm enables the construction of a fuzzy decision tree which represents a set of decision rules
International audienceFuzzy predicates have been incorporated into machine learning and data mining ...
Fuzzy predicates have been incorporated into machine learning and data mining to extend the types of...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Inductive learning enables the system to recognize patterns and regularities in previous knowledge o...
International audienceIn inductive learning, to build decision trees is often arduous when there exi...
© 2016 - IOS Press and the authors. All rights reserved. Recently, the topic of data mining has attr...
Inductive learning algorithms try to obtain the knowledge of a system from a set of examples. One of...
Growing amount of information in the world encourage the use of automatic data processing techniques...
ii Machine learning programs can automatically learn to recognise complex patterns and make intellig...
[[abstract]]In real applications, data provided to a learning system usually contain linguistic info...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
Inductive logic programming (ILP) is a generic tool aiming at learning rules from relational databas...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
International audienceFuzzy predicates have been incorporated into machine learning and data mining ...
Fuzzy predicates have been incorporated into machine learning and data mining to extend the types of...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Inductive learning enables the system to recognize patterns and regularities in previous knowledge o...
International audienceIn inductive learning, to build decision trees is often arduous when there exi...
© 2016 - IOS Press and the authors. All rights reserved. Recently, the topic of data mining has attr...
Inductive learning algorithms try to obtain the knowledge of a system from a set of examples. One of...
Growing amount of information in the world encourage the use of automatic data processing techniques...
ii Machine learning programs can automatically learn to recognise complex patterns and make intellig...
[[abstract]]In real applications, data provided to a learning system usually contain linguistic info...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
Inductive logic programming (ILP) is a generic tool aiming at learning rules from relational databas...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
International audienceFuzzy predicates have been incorporated into machine learning and data mining ...
Fuzzy predicates have been incorporated into machine learning and data mining to extend the types of...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...