[5] Turbin, V., Gilloire, A., & Scalart, P. (1997, April). Comparison of three post-filtering algorithms for residual acoustic echo reduction. In icassp (p. 307). IEEE. [6] Schwarz, A., Hofmann, C., & Kellermann, W. (2013, October). Spectral feature-based nonlinear residual e...
IEEE. IEEE, 2014, pp. 554–559. [9] P. Xu and R. Sarikaya, “Convolutional neural network based triangular crf for joint intent detection and slot filling,” in Automatic Speech Recognition and Understanding (ASRU), 2013 IEEE Workshop on. IEEE, 2013, pp. 78–83. [10] I. Sutskever, ...
Three new neural network based algorithms for IP lookup and packet classification[J].Iranian Journal of Science and Technology,2005,(B1):11-22.MAHRAMIAN M M; YAZDANI N; TAHERI H;.Three new neural network based algorithms for IP lookup and packet classification.Iranian Journal of Science and ...
“…the design and development ofalgorithmsthat allowcomputersto evolve behaviors based onempirical data, …” 机器学习最基本的做法,是使用算法来解析数据、从中学习,然后对真实世界中的事件做出决策和预测。与传统的为解决特定任务、硬编码的软件程序不同,机器学习是用大量的数据来“训练”,通过各种算法从数据中...
The Microsoft Neural Network algorithm is useful for analyzing complex input data, such as from a manufacturing or commercial process, or business problems for which a significant quantity of training data is available but for which rules cannot be easily derived by using other algorithms....
进化算法(Evolutionary algorithms): 除了选择合适的遗传进化参数(如生长率和死亡率)外,我们还需要评估神经网络拓扑结构在数字进化基因型中的体现程度。另一方面,组合模式生成网络(Compositional Pattern Producing Networks, CPPN)提供了一种强大的间接编码方式,可以通过 NEAT(NeuroEvolution of Augmenting Topologies) 加以改进...
brain cognitive functions (19, 20). However, compared with the deep ANNs, there is still a performance gap in terms of performance such as image classification (21–24) and object detection (25). Most of the work considers the optimization of SNNs from the training algorithms but rarely ...
(ABC) algorithms, to test its accuracy. The ANN-Jaya model converged to smaller error values than were obtained with the ANN-BP and ANN-ABC models for both the training and test datasets. When the average relative error (RE) values calculated for the test set are taken into account, ANN...
A key contribution of STAGATE is the cell type-aware spatial neighbor network (SNN), which can accurately characterize spatial similarity along the boundaries. Moreover, STAGATE introduces an attention mechanism that can adaptively learn the edge weights of SNNs. Downstream clustering algorithms, such...
A neural network is a series of algorithms that endeavors to recognize underlying relationships in a set of data through a process that mimics the way the human brain operates. In this sense, neural networks refer to systems of neurons, either organic or artificial in nature. ...