FACIL
- An Approach for Classifying Data Streams by Decision Rules
and
Border Example. Francisco J. Ferrer-Troyano, Jesus S. Aguilar, José C.
Riquelme
La revue MODULAD, numéro 36, Juillet 2007
Abstract:
This paper describes FACIL,
a classifier based
on decision rules and border examples that avoids
unnecessary revisions when virtual drifts are present in data.
Rules in FACIL are both pure - consistent -
and impure - inconsistent -. Pure rules classify new test examples
by covering and impure rules classify them by distance as the nearest
neighbor algorithm. In addition, the system provides
an implicit forgetting heuristic so that positive and negative examples are
removed from a rule when they are not near one another.
Download paper: FACIL
- An Approach for Classifying Data Streams by Decision Rules and
Border Example
Download slides: FACIL
- An Approach for Classifying Data Streams by Decision Rules
and
Border Example
|