TY - CHAP
T1 - The Fuzzy Lattice Reasoning (FLR) classifier for mining environmental data
AU - Athanasiadis, Ioannis N.
PY - 2007
Y1 - 2007
N2 - This chapter introduces a rule-based perspective on the framework of fuzzy lattices, and the Fuzzy Lattice Reasoning (FLR) classiffier. The notion of fuzzy lattice rules is introduced, and a training algorithm for inducing a fuzzy lattice rule engine from data is specified. The role of positive valuation functions for specifying fuzzy lattices is underlined and non-linear (sigmoid) positive valuation functions are proposed, that is an additional novelty of the chapter. The capacities for learning of the FLR classi.er using both linear and sigmoid functions are demonstrated in a real-world application domain, that of air quality assessment. To tackle common problems related to ambient air quality, a machine learning approach is demonstrated in two applications. The first one is for the prediction of the daily vegetation index, using a dataset from Athens, Greece. The second concerns with the estimation of quartely ozone concentration levels, using a dataset from Valencia, Spain.
AB - This chapter introduces a rule-based perspective on the framework of fuzzy lattices, and the Fuzzy Lattice Reasoning (FLR) classiffier. The notion of fuzzy lattice rules is introduced, and a training algorithm for inducing a fuzzy lattice rule engine from data is specified. The role of positive valuation functions for specifying fuzzy lattices is underlined and non-linear (sigmoid) positive valuation functions are proposed, that is an additional novelty of the chapter. The capacities for learning of the FLR classi.er using both linear and sigmoid functions are demonstrated in a real-world application domain, that of air quality assessment. To tackle common problems related to ambient air quality, a machine learning approach is demonstrated in two applications. The first one is for the prediction of the daily vegetation index, using a dataset from Athens, Greece. The second concerns with the estimation of quartely ozone concentration levels, using a dataset from Valencia, Spain.
U2 - 10.1007/978-3-540-72687-6_9
DO - 10.1007/978-3-540-72687-6_9
M3 - Chapter
AN - SCOPUS:34347405265
SN - 9783642091742
SN - 9783540726869
T3 - Studies in Computational Intelligence
SP - 175
EP - 193
BT - Computational Intelligence Based on Lattice Theory
A2 - Kaburlasos, Vassilis
A2 - Ritter, Gerhard
PB - Springer
CY - Heidelberg
ER -