Neural-network-based diagnosis systems for incomplete data with missing inputs

The aim of this paper is to propose classification methods for incomplete data with missing inputs in neural-network-based diagnosis systems. In this paper, such incomplete data are treated as intervals by representing each missing input by the range of its possible values. We propose four definitions of inequality between intervals to classify new interval input vectors by neural networks. The performance of neural-network-based diagnosis systems with the proposed four definitions is examined by computer simulations on a diagnosis problem of hepatic diseases.<<ETX>>

[1]  Hideo Tanaka,et al.  An extension of the BP-algorithm to interval input vectors-learning from numerical data and expert's knowledge , 1991, [Proceedings] 1991 IEEE International Joint Conference on Neural Networks.

[2]  Metin Akay,et al.  Neural networks for the diagnosis of coronary artery disease , 1992, [Proceedings 1992] IJCNN International Joint Conference on Neural Networks.

[3]  Hideo Tanaka,et al.  Fuzzy expert system based on rough sets and its application to medical diagnosis , 1992 .

[4]  P. S. Maclin,et al.  A neural network to diagnose liver cancer , 1993, IEEE International Conference on Neural Networks.

[5]  K. Nakayama,et al.  Interval arithmetic backpropagation , 1993, Proceedings of 1993 International Conference on Neural Networks (IJCNN-93-Nagoya, Japan).

[6]  Hideo Tanaka,et al.  Learning from incomplete training data with missing values and medical application , 1993, Proceedings of 1993 International Conference on Neural Networks (IJCNN-93-Nagoya, Japan).

[7]  Volker Tresp,et al.  Classification with missing and uncertain inputs , 1993, IEEE International Conference on Neural Networks.