Abstract
- We present a new approach for the assessment of the reliability of coherent systems by using a prototype-based classification method. More specifically, reliability levels for consecutive k-out-of-n systems, which serve as a model for a particular type of networks, are classified using Generalized Matrix Learning Vector Quantization, which provides useful information about the impact of the input probabilities on the classified reliability levels. Our approach is not limited to reliability analysis, but is generally applicable for estimating the probability of the union of any finite family of events, based on their individual and pairwise probabilities.