Gc. Vasconcelos et al., EFFICIENT DETECTION OF SPURIOUS INPUTS FOR IMPROVING THE ROBUSTNESS OF MLP NETWORKS IN PRACTICAL APPLICATIONS, NEURAL COMPUTING & APPLICATIONS, 3(4), 1995, pp. 202-212
Citations number
14
Categorie Soggetti
Computer Sciences, Special Topics","Computer Science Artificial Intelligence
The problem of the rejection of patterns not belonging to identified t
raining classes is investigated with respect to Multilayer Perceptron
Networks (MLP). The reason for the inherent unreliability of the stand
ard MLP in this respect is explained, and some mechanisms for the enha
ncement of its rejection performance are considered. Two network confi
gurations are presented as candidates for a more reliable structure, a
nd are compared to the so-called 'negative training' approach. The fir
st configuration is an MLP which uses a Gaussian as its activation fun
ction, and the second is an MLP with direct connections from the input
to the output layer of the network. The networks are examined and eva
luated both through the technique of network inversion, and through pr
actical experiments in a pattern classification application. Finally,
the model of Radial Basis Function (RBF) networks is also considered i
n this respect, and its performance is compared to that obtained with
the other networks described.