constructive rbf network
A Constructive RBF Network for Writer Adaptation
This paper discusses a fairly general adaptation algorithm which augments a standard neural network to increase its recognition ac(cid:173) curacy for a specific user. The basis for the algorithm is that the output of a neural network is characteristic of the input, even when the output is incorrect. We exploit this characteristic output by using an Output Adaptation Module (OAM) which maps this out(cid:173) put into the correct user-dependent confidence vector. The OAM is a simplified Resource Allocating Network which constructs ra(cid:173) dial basis functions on-line. We applied the OAM to construct a writer-adaptive character recognition system for on-line hand(cid:173) printed characters.
A Constructive RBF Network for Writer Adaptation
This paper discusses a fairly general adaptation algorithm which augments a standard neural network to increase its recognition accuracy for a specific user. The basis for the algorithm is that the output of a neural network is characteristic of the input, even when the output is incorrect. We exploit this characteristic output by using an Output Adaptation Module (OAM) which maps this output into the correct user-dependent confidence vector. The OAM is a simplified Resource Allocating Network which constructs radial basis functions online. We applied the OAM to construct a writer-adaptive character recognition system for online handprinted characters.
A Constructive RBF Network for Writer Adaptation
This paper discusses a fairly general adaptation algorithm which augments a standard neural network to increase its recognition accuracy for a specific user. The basis for the algorithm is that the output of a neural network is characteristic of the input, even when the output is incorrect. We exploit this characteristic output by using an Output Adaptation Module (OAM) which maps this output into the correct user-dependent confidence vector. The OAM is a simplified Resource Allocating Network which constructs radial basis functions online. We applied the OAM to construct a writer-adaptive character recognition system for online handprinted characters.
A Constructive RBF Network for Writer Adaptation
This paper discusses a fairly general adaptation algorithm which augments a standard neural network to increase its recognition accuracy fora specific user. The basis for the algorithm is that the output of a neural network is characteristic of the input, even when the output is incorrect. We exploit this characteristic output by using an Output Adaptation Module (OAM) which maps this output intothe correct user-dependent confidence vector. The OAM is a simplified Resource Allocating Network which constructs radial basisfunctions online. We applied the OAM to construct a writer-adaptive character recognition system for online handprinted characters.The OAM decreases the word error rate on a test set by an average of 45%, while creating only 3 to 25 basis functions for each writer in the test set. 1 Introduction One of the major difficulties in creating any statistical pattern recognition system is that the statistics of the training set is often different from the statistics in actual use.