Detecting network intrusions using signal processing with query-based sampling filter
EURASIP Journal on Advances in Signal Processing - Special issue on signal processing applications in network intrusion detection systems
Gene clustering by using query-based self-organizing maps
Expert Systems with Applications: An International Journal
Particle swarm optimization with query-based learning for multi-objective power contract problem
Expert Systems with Applications: An International Journal
Mining data by query-based error-propagation
ICNC'05 Proceedings of the First international conference on Advances in Natural Computation - Volume Part I
Disease diagnosis using query-based neural networks
ISNN'05 Proceedings of the Second international conference on Advances in Neural Networks - Volume Part III
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Query-based learning (QBL) has been introduced for training a supervised network model with additional queried samples. Experiments demonstrated that the classification accuracy is further increased. Although QBL has been successfully applied to supervised neural networks, it is not suitable for unsupervised learning models without external supervisors. In this paper, an unsupervised QBL (UQBL) algorithm using selective-attention and self-regulation is proposed. Applying the selective-attention, we can ask the network to respond to its goal-directed behavior with self-focus. Since there is no supervisor to verify the self-focus, a compromise is then made to environment-focus with self-regulation. In this paper, we introduce UQBL1 and UQBL2 as two versions of UQBL; both of them can provide fast convergence. Our experiments indicate that the proposed methods are more insensitive to network initialization. They have better generalization performance and can be a significant reduction in their training size