Questions tagged [activation-function]

Activation function is a non-linear transformation, usually applied in neural networks to the output of the linear or convolutional layer. Common activation functions: sigmoid, tanh, ReLU, etc.

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Block Activation Function Realization in Tensorflow

I was trying to reproduce a DNN where a block activation function called BlockRelu is used. It is defined as BlockRelu I tried to write this function according to some example codes about self-...
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As range of tansig is -1 to 1 , output should be in range of -1 to 1 but it is not happening that way

I am working with neural networks and want to ask about tansig.. As range of tansig is -1 to 1 , output should be in range of -1 to 1 but my output matrices have values as 2,3 ,4 etc and I am unable ...
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How can I extract information regarding the activations in each layer from a keras model?

I have a keras model in a '.h5' file and I want to extract details like the type of activation used in each layer and any attributes those activation might have. Is there a way to do it. If there is a ...
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What is the difference between keras.activations.softmax and keras.layers.Softmax?

What is the difference between keras.activations.softmax and keras.layers.Softmax? Why are there two definitions of the same activation function? keras.activations.softmax: https://keras.io/...
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Matrix multiplication in pyTorch

I'm writing a simple neural network in pyTorch, where features and weights both are (1, 5) tensors. What are the differences between the two methods that I mention below? y = activation(torch.sum(...
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How to use maxout in Tensorflow?

guys! I have a question to ask.If I want to use maxout as activation function , how should I write the codes in Tensorflow? An input parameter is required in the slim.maxout() function, so it cannot ...
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35 views

using tanh as activation function in MNIST dataset in tensorflow

I am working on simple MLP neural network for MNIST dataset using tensorflow as my homework. in the question we should implement a multilayer perceptron with tanh as activation function. I should use ...
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my question is about multi class classification with keras for wifi data

**I want to do a multiclass classification using keras, I have a dataset with 1500 samples from 150 different labels( quite huge), data are signal, ** the result is very bad, starting from .02, ...
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How to plot keras activation functions in a notebook

I wanted to plot all Keras activation functions but some of them are not working. i.e. linear throws an error: AttributeError: 'Series' object has no attribute 'eval' which is weird. How can I ...
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208 views

Keras - Nan in summary histogram LSTM

I've written an LSTM model using Keras, and using LeakyReLU advance activation: # ADAM Optimizer with learning rate decay opt = optimizers.Adam(lr=0.0001, beta_1=0.9, beta_2=0.999, epsilon=1e-...
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55 views

Custom activation with parameter

I'm trying to create an activation function in Keras that can take in a parameter beta like so: from keras import backend as K from keras.utils.generic_utils import get_custom_objects from keras....
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Normalization for MLPregressor

I'm using scikit-learn, and trying to understand how normalize my input variables, for different activation functions using MLPregressor: Relu Tanh Logistic How can i properly normalize the data for ...
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59 views

Can I use a Sigmoid activation for my output layer, even if my CNN model is doing a regression?

Final objective: Object Midpoint calculation. I have a small dataset (around 120 images), which has an object (the same in all cases), and the labels are the normalized x,y coordinates of the ...
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implementing cost function + activation function -incorrect value returned

I'm working my way through a machine learning tutorial and I'm stuck on a section of logistic regression that requires calculating values of the activation and provide them to the cost function. I'm ...
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Tensorflow, square root activation function implementation (shaping error)

For the purpose of implementing a classification NN I found some really useful tutorials, like this one (2 hidden layer, one-hot-encoding output, dropout regularization, normalization etc.) which ...
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Why is ReLU a non-linear activation function?

As I understand it, in a deep neural network, we use an activation function (g) after applying the weights (w) and bias(b) (z := w * X + b | a := g(z)). So there is a composition function of (g o z) ...
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Inception Model mxnet on Raspberry Pi: fix an unknown activation type error?

I'm trying to implement the Inception model on a Raspberry Pi using mxnet, and getting an error that I haven't been able to unravel: "unknown activation type". I successfully installed opencv, mxnet, ...
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XOR NN not learnable with 2 hidden nodes and sigmoid activation?

I felt like my backpropagation intuition wasn't crystal clear, so I wrote a neural network class to train/predict on XOR. It has 2 inputs, 1 output, a variable number of hidden nodes, and bias nodes ...
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Where does this picture come from? Step activation function vs. sigmoid activation function

does somebody knows where this picture comes from? It´s about step activation function and sigmoid activation function.activation functions Thanks in advance!
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how to define the derivative of a custom activation function in keras

I have a custom activation function and its derivative, although I can use the custom activation function I don't know how to tell keras what is its derivative. It seems like it finds one itself but ...
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what activation function should I use to enforce rounding like behaviour

I need an activation function that rounds my tensors. the derivative(gradients) of the function round() is 0 (or None in tensorflow) which makes it unusable as an activation function. I am looking ...
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Understanding of threshold value in a neural network

Consider the hypothetical neural network here $o_1$ is the output of neuron 1. $o_2$ is the output of neuron 2. $w_1$ is the weight of connection between 1 and 3. $w_2$ is the weight of ...
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Implementation of tanh() activation function for a CNN

I'm trying to implement the activation function tanh on my CNN, but it doesn't work, the result is always "NaN". So i created a simple application where i have a randomized matrix and try to apply the ...
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Activation function for linear dataset

I have been working with data sets that mostly show the linear relationship between different attributes/features. What activation should I be using with linear datasets? I have been using sigmoid ...
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How does Keras optimize weights on layers which have no activation?

Background: If I am not mistaken, when training a network we feed forward performing sigmoid(sum(W*x)) for every layer then in back-propagation we calculate the error and the deltas (change) then we ...
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545 views

Why is ReLU used in regression with Neural Networks?

I am following the official TensorFlow with Keras tutorial and I got stuck here: Predict house prices: regression - Create the model Why is an activation function used for a task where a continuous ...
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Activation Function for a conv layer

Why does everyone use Relu for Conv layers? I understand that it makes training quicker; however, I was wondering if anyone has come across a paper that tried multiple activation functions for their ...
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Neural Chess: Sample neural network gets stuck at value

I am attempting to write a neural network to play chess, but I am running into problems with the output. I am using python-chess library, and built rewards in. The network has 4 outputs and three ...
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Why pytorch has two kinds of Non-linear activations?

Why pytorch has two kinds of Non-linear activations? Non-liner activations (weighted sum, nonlinearity): https://pytorch.org/docs/stable/nn.html#non-linear-activations-weighted-sum-nonlinearity Non-...
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Which activation function should I use for my output layer if my output is a Glove vector representing a word

My output is 332 dimension (300 glove + 32 my custom vector) values of this vector range from -1 to +1 I got horrible results using sigmoid as it confined the output to 0 to 1. I'm trying Tanh right ...
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267 views

Is there a logit function in tensorflow?

Is there a logit function in tensorflow, i.e. the inverse of sigmoid function? I have searched google but have not found any.
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How to set a suitable activation function for an ANN having negative input values

I am creating an ANN which has 3 input neurons which take inputs from the device "s accelerometer in the form of x , y , z. These values are positive as well as negative depending upon the ...
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538 views

How do I implement leaky relu using Numpy functions

I am trying to implement leaky Relu, the problem is I have to do 4 for loops for a 4 dimensional array of input. Is there a way that I can do leaky relu only using Numpy functions?
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Differing results for MNIST autoencoder due to different placement of activation function

I stumbled across a strange phenomenon while playing around with variational autoencoders. The problem is quite simple to describe: When defining the loss function for the VAE, you have to use some ...
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When does ReLU kills the neurons?

I am confused regarding the dying ReLU problem. ReLU will kill the neuron only during the forward pass? Or also during the backward pass?
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Keras - Default Axis for softmax function is set to Axis

I am learning how to create sequential models. I have a model: *model = Sequential()* I then went on to add pooling layers and convolution layers (which were fine). But when creating the dense ...
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Supervised classification combined with off-policy reinforcement learning

I have 2 neural networks: Predicts action values Q(s, a) using off-policy reinforcement learning - Approximates the best response to an opponent's average behaviour. Imitate its own average best ...
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704 views

Implementing sigmoid function in python

I am trying to implement a simple neural network for XOR function. The activation function I am using is Sigmoid function. The code for the sigmoid function is: def ActivationFunction(a) e = 2....
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389 views

ReLU activation function with neuralnet package in R

Due to the neuralnet package doesn't have ReLU function, so I try to write the code for ReLU function. But there is an error I don't understand. Please see my code and error information below. relu&...
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Keras PReLU does not support variable size inputs?

Using Keras 2.1.4 version. I have a CNN which needs to support variable size images. I got that working by using None values for InputLayer. I want to test out PReLU activation function with this ...
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528 views

ReLU derivative with NumPy

import numpy as np def relu(z): return np.maximum(0,z) def d_relu(z): z[z>0]=1 z[z<=0]=0 return z x=np.array([5,1,-4,0]) y=relu(x) z=d_relu(y) print("y = {}".format(y)) print("...
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Is there a better activation function for my neural network?

I am writing a program to recognize handwritten letters. I have 500px*500px images that I import as BufferedImages and I am taking every pixel's getRBG() value as inputs to the neural network, ...
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Deep neural network not learning

I am training MNIST on 8 layers (1568-784-512-256-128-64-32-10) fully-connected deep neural network with the newly created activation function as shown in the figure below.This function looks a bit ...
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713 views

Sigmoid activation for multi-class classification?

I am implementing a simple neural net from scratch, just for practice. I have got it working fine with sigmoid, tanh and ReLU activations for binary classification problems. I am now attempting to use ...
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116 views

Neural Network with Input - Relu - SoftMax - Cross Entropy Weights and Activations grow unbounded

I have implemented a neural network with 3 layers Input to Hidden Layer with 30 neurons(Relu Activation) to Softmax Output layer. I am using the cross entropy cost function. No outside libraries are ...
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405 views

Tensorflow custom activation function

I implemented a network with TensorFlow and created the model doing the following in my code: def multilayer_perceptron(x, weights, biases): layer_1 = tf.add(tf.matmul(x, weights["h1"]), biases["...
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286 views

Softmax MLP Classifier - which activation function to use in hidden layer?

I am writing a single Multi-Layer Perceptron from scratch, with just an input, hidden and output layer. The output layer will use the softmax activation function to produce probabilities of several ...
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What loss function and activation to use on last layer with multiple categories? [duplicate]

Can someone shed some light, please? Using Keras on top of Tensorflow. I have a deep neural network composed of multiple hidden layers. I am looking for a way to create my last output with a size of ...
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860 views

Advanced Activation layers in Keras Functional API

When setting up a Neural Network using Keras you can use either the Sequential model, or the Functional API. My understanding is the the former is easy to set up and manage, and operates as a linear ...
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About the impact of activation functions in CNN on computation time

Currently I am reading the following paper: "SqueezeNet: AlexNet-level accuracy with 50 x fewer parameters and <0.5 MB model size". In this 4.2.3 (Activation function layer), there is the ...