Hyper-Flexible Convolutional Neural Networks Based on Generalized Lehmer and Power Means
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Updated
Aug 25, 2022 - Python
Hyper-Flexible Convolutional Neural Networks Based on Generalized Lehmer and Power Means
PyTorch implementation of the Leaky Hardtanh activation function
✅ Optimized Swish activation function, for neural networks
Logit-space logical activation functions for pytorch
Neural_Networks_From_Scratch
This is a repository for Multi-Layer Perceptron and Logistic Regression. There is a code (function) for Logistic Regression. SOme analysis is performed on the function. This is compared with the sklearn Logistic Regression function. Then, the decision boundary has also been plotted for the classification. The next part is the basic neural networ…
Predicting patient attendance at Bay Clinic using 'medicalcentre.csv'. Employing SVM, Decision Trees, and DNN models for accuracy, sensitivity, specificity evaluation, and ROC analysis. Part of a Data Science course in my master's program at the University of Ottawa 2023.
Implement Back Propagation in deep neural network (DNN).
A feedforward multilayer perceptron with gradient descent & backpropagation written from scratch in Java
Comparative Analysis of Activation Functions in Shallow Neural Networks for Multi-Class Image Classification Using MNIST Digits and CIFAR-10 Datasets with Fixed Architectural Parameters
step by step tutorial for ANN
Javascript implementation of some activation functions.
Design of a CNN (Convolutional Neural Networks) to classify CIFAR-10 images
Deep Learning concepts practice using Cifar-10 dataset
Source for the paper "Universal Activation Function for machine learning"
Co-VeGAN: Complex-Valued Generative Adversarial Network for Compressive Sensing MR Image Reconstruction
m-arcsinh: A Reliable and Efficient Function for Supervised Machine Learning (scikit-learn, TensorFlow, and Keras) and Feature Extraction (scikit-learn)
📦 Non-official SPOCU activation function implementation for Pytorch and Tensorflow.
[ICLR 2024] Dynamic Neural Response Tuning
This program implements logistic regression from scratch using the gradient descent algorithm in Python to predict whether customers will purchase a new car based on their age and salary.
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