摘要:Artificial neural network s are well known in the field of pattern recognition and machine learning. Multi-layer neural network s are usually used as universal neural classifiers even though probabilistic neural network s represent a special type of artificial neural network s and have been designed to be used mainly in classification problems. In this article a study has been conducted to train a probabilistic neural network to recognize handwritten digits taken from the MINST database for handwritten digits. Results presented in this paper show good performance and generalization capacity of the proposed network for a real-world big database and no deep tuning of the parameters is required.