24, NO. Top Journals for Machine Learning & Artificial Intelligence. 7, JULY 2014 1229 A Comprehensive Review of Stability Analysis of Continuous-Time Recurrent Neural Networks Huaguang Zhang, Senior Member, IEEE, Zhanshan Wang, Member, IEEE, and Derong Liu, Fellow, IEEE Abstract—Stability problems of continuous-time recurrent IEEE TRANSACTIONS ON NEURAL NETWORKS, VOL.6, NO. Convolutional Neural Networks (CNNs) are used as a current approach to the recognition of handwritten digits for the design of pattern recognition systems. About Accepted by IEEE Transactions on Neural Networks and Learning Systems IEEE Transactions/Journals EMBS has been publishing technology innovations since 1953 with our first journal, Transactions on Biomedical Engineering . A Time Wave Neural Network Framework for Solving Time-Dependent Project Scheduling Problems Author(s): Wei Huang; Liang Gao Pages: 274 - … In order to overcome the negative effects of variability in signals, the proposed model employs the deep architecture combining convolutional neural networks (CNNs) and recurrent neural networks … 7, JULY 2013 1141 Pinning Consensus in Networks of Multiagents via a Single Impulsive Controller Figure 1 illustrates the process of GLG. X, MONTH YEAR 1 Reacting to Different Types of Concept Drift: The Accuracy Updated Ensemble Algorithm The com-plete proposed HeUDA model incorporates all these elements and is called the Grassmann-LMM-GFK model - GLG for short. Homepage. Application of neural fuzzy network to pyrometer correction and temperature control in rapid thermal processing; SLAVE: A genetic learning system based on an iterative approach; Analysis and design of fuzzy control systems using dynamic fuzzy-state space models; On stability of fuzzy systems expressed by fuzzy rules with singleton consequents Additionally, there is the usual weight mutation present in many other methods, where some individu-als have the weight value of their connections either perturbed Transactions on Neural Systems and Rehabilitation Engineering ... 10 popular papers published recently on IEEE Reviews in Biomedical Engineering. A useful variant of the clustering method is an agglomerative clustering algorithm that merges redundant cluster points and then use cluster means 25, NO. 23, NO. 26, NO. Link Kong X, Xing W, Wei X, et al. IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, VOL. The human nervous system contains cells, which are referred to as neurons.The neurons are connected to one another with the use of axons and dendrites, and the connecting regions between axons and dendrites are referred to as synapses. Artificial neural networks are popular machine learning techniques that simulate the mechanism of learning in biological organisms. 4. Price Manipulation Detection The detection of price manipulation has however, been less 25, NO. IEEE Transactions on Neural Networks and Learning Systems If you have any questions, please contact Zhenwen Ren by rzw@njust.edu.cn. Computing Time-Varying Quadratic Optimization With Finite-Time Convergence and Noise Tolerance: A Unified Framework for Zeroing Neural Network Author(s): Lin Xiao; Kenli Li; Mingxing Duan Pages: 3360 - 3369 13. 2, FEBRUARY 2015 (if expected changes occurred), where the profits are made by distinct ways in various profit-making scenarios, as shown in Fig. 23, NO. The Ranking of Top Journals for Computer Science and Electronics was prepared by Guide2Research, one of the leading portals for computer science research providing trusted data on scientific contributions since 2014. In order to make a more fair measurement, we tackle this problem in the intrinsic ACCEPTED TO IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS 1 Detachable Second-order Pooling: Towards High Performance First-order Networks Lida Li, Jiangtao Xie, Peihua Li, Member, IEEE and Lei Zhang, Fellow, IEEE Abstract—Second-order pooling has proved to be more effec- Our portfolio has expanded into more publications, either sponsored, co-sponsored or sponsored! Kong X, SEPTEMBER 20XX 3 connection or by adding a new connection existing. 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