Pages that link to "Item:Q2282875"
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The following pages link to A survey of randomized algorithms for training neural networks (Q2282875):
Displaying 20 items.
- Algorithms of data generation for deep learning and feedback design: a survey (Q2077720) (← links)
- Crude oil prices and volatility prediction by a hybrid model based on kernel extreme learning machine (Q2092197) (← links)
- Splicing learning: a novel few-shot learning approach (Q2126264) (← links)
- Data-driven learning of feedforward neural networks with different activation functions (Q2148705) (← links)
- Equivalence between dropout and data augmentation: a mathematical check (Q2183670) (← links)
- An unsupervised parameter learning model for RVFL neural network (Q2188218) (← links)
- Wavelet-denoising multiple echo state networks for multivariate time series prediction (Q2200553) (← links)
- Impact of random weights on nonlinear system identification using convolutional neural networks (Q2201655) (← links)
- Robust LS-SVM-based adaptive constrained control for a class of uncertain nonlinear systems with time-varying predefined performance (Q2205737) (← links)
- Editorial: Randomized algorithms for training neural networks (Q2282872) (← links)
- Randomized algorithms for nonlinear system identification with deep learning modification (Q2282878) (← links)
- Insights into randomized algorithms for neural networks: practical issues and common pitfalls (Q2292952) (← links)
- A zero-gradient-sum algorithm for distributed cooperative learning using a feedforward neural network with random weights (Q2293057) (← links)
- A basic time series forecasting course with Python (Q2677353) (← links)
- (Q3121797) (← links)
- TRAINING OF NEURAL NETWORK BASED PWM CONTROLLERS (Q4973409) (← links)
- Iterative Prediction-and-Optimization for E-Logistics Distribution Network Design (Q5085989) (← links)
- RANDOM NEURAL NETWORK LEARNING HEURISTICS – CORRIGENDUM (Q5242845) (← links)
- (Q5709283) (← links)
- A new decision making method for selection of optimal data using the von Neumann-Morgenstern theorem (Q6549298) (← links)