A Multi-Resolution Combined Classifier (MRCC) model and its learning algorithm are proposed.The MRCC is a modification of Simpson's original Fuzzy Min-Max (FMM) Neural Network Classifier.It overcomes some undesired properties of the original model:specifically
training results do not depend heavily on pattern presentation order and hyper-box expansion is not limited by a fixed maximum size.Compared with the original model
a new parameter called the reliability of hyper-box is introduced in MRCC
which presents the correct classification rate of a single hyper-box.A locally uniform distribution hypothesis is also introduced
so that the reliability of hyper-box parameter can be adjusted on-line.In addition
the multi-resolution combination method alleviates the effort to select an optimal parameter for the maximum size of a hyper-box in the original algorithm.Experiments were made following some recent evaluation criteria known in literature
and show that compared with original model
the MRCC model has better classification performance
more adaptive learning ability and creates less hyper-boxes.