Title :
Context-dependent incremental learning of good maximally redundant tests
Author :
Xenia Naidenova;Vladimir Parkhomenko;Konstantin Shvetsov
Author_Institution :
Military Medical Academy, St. Petersburg, Russia
Abstract :
A new approach to incremental learning of Good Maximally Redundant Diagnostic Tests (GMRTs) is advanced. A GMRT is a special formal concept in Formal Concept Analysis. Mining GMRTs from data is based on Galois´ lattice construction. Four situations of learning are considered: inserting an object (value) and deleting an object (value). The approach proposed can be very useful for many information retrieval applications related to the changeable environment: mining logical rules from dynamic databases, intrusion detection, Web page classification, Web mining, constructing dynamic knowledge bases and many others.
Keywords :
"Data mining","Lattices","Knowledge based systems","Context","Training","Heuristic algorithms","Electronic mail"
Conference_Titel :
SAI Intelligent Systems Conference (IntelliSys), 2015
DOI :
10.1109/IntelliSys.2015.7361258