Questions tagged [gradient-descent]

Gradient Descent is an algorithm for finding the minimum of a function. It iteratively calculates partial derivatives (gradients) of the function and descends in steps proportional to those partial derivatives. One major application of Gradient Descent is fitting a parameterized model to a set of data: the function to be minimized is an error function for the model.

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48 views

Algorithm to distribute N unequally sized rectangles while maintaining an aspect ratio

I want to distribute n rectangles from a dataframe with different heights and lengths so that the aspect ratio (r_expected) of the total length (L) and total height (H) is roughly L/H = 0.33. A sketch ...
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In backpropogation, what does it mean when the error of a neural network converges to 0.5?

I've been trying to learn the math behind neural networks and have implemented (in Octave) a version of the following equations which include bias terms. Back-propagation equations matrix form: ...
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cost becoming NaN after certain iterations

I am trying to do a multiclass classification problem (containing 3 labels) with softmax regression. This is my first rough implementation with gradient descent and back propagation (without using ...
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full-batch gradient descent with tf.GradientTape: OOM error

I want to implement "full-batch" gradient descent algorithm on a dataset using resnet. However, since in the full-batch gradient, at each iteration we need to compute the gradient over all the ...
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Find minimum return value of function with two parameters

I have an error function, and sum of all errors on self.array: #'array' looks something like this [[x1,y1],[x2,y2],[x3,y3],...,[xn,yn]] #'distances' is an array with same length as array with ...
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Backpropagation with SGD-How to update weights

Layers are given here How to update the weights in backpropagation? what will be the updated values of W1,W2,W3,W4 and W5 in the given network?
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Accuracy/train and Loss/train graph by tensorboard

i used tensorboard for my pytorch project and got this result for accuracy/train and loss/train but i dont understand what it means
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How can I use the Gradient Descent algorithm to optimize the value of a matrix?

I want to find the value of B matrix (2*4 matrix) that makes the elements of beta_d (1*4 vector) which is a function of B matrix, equal to the corresponding ones of " a given" beta_u (1*4 vector). ...
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RuntimeWarning: divide by zero encountered in log while calculating cost in DNN

This is the code of neural network with one output layer: features = ['Pclass' , 'Age' , 'Sex'] X = dataset[features] dataset['Survived'] = dataset['Survived'] y = dataset[['Survived'...
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Gradient descent to minimize Rosenbrock Function

I'm writing a program to evaluate a 20-dimensional Rosenbrock function using gradient descent. My learning rate looks quite strange, because it immeadiately converges to zero only after one iteration. ...
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Gradient Descent doesn't match with optimal equation

I have a dataset to fit a curve. I used both of Gradient Descent and Optimal Equation. The optimal equation stands for: theta=inverse(transpose(X)*X)*transpose(X)*Y; Now, as it seems in the image, ...
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Retraining Gradient Descent when new training data is added to existing

I have trained some parameters on a dataset. After optimizing the parameters using Gradient Descent, I have added some new data to the dataset . I want to know whether I should train all the ...
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Plotting decision boundary in logistic regression

I am running logistic regression on a small dataset which looks like this: After implementing gradient descent and the cost function, I am getting a 89% accuracy in the prediction stage, However I ...
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Weak optimizers in Pytorch

Consider a simple line fitting a * x + b = x, where a, b are the optimized parameters and x is the observed vector given by import torch X = torch.randn(1000,1,1) One can immediately see that the ...
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nonlinear gradient descent does not converge nicely

I am doing a nonlinear gradient descent, the main part of code as follows: m = len(train_x) Y = train_y W = np.array([0] * 10, dtype='float') # create new features from x X = np.c_[ np.ones(m), ...
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Gradient descent underfits consistently

I tried to fit a 6 degree polynomial in a training set and it's failing consistently. It underfits. I used the following code, % X is feature scaled % Y is feature scaled too function [J,grad,h]=...
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Tried implementing Gradient Descent

I am totally new to ML and python, Read linear regression and tried to implement gradient descent first, Could anyone please let me know what wrong I am doing? Input Data - x = np.array([1,2,...
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Weird errors on Gradient Descent in Octave (Syntax errors on known command)

I'm trying to implement Gradient descent in octave. I know I can do it by calculating every value of theta by itself like this function [theta, J_history] = gradientDescent(X, y, theta, alpha, ...
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Numerical jump in sklearn GradientBoostingRegressor

I have been investigating a "hand-rolled" version of a gradient boosted regression tree. I find that the errors agree very well with the sklearn GradientBoostingRegressor module until I increase the ...
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Efficacy of Regularization in Logistic Regression

I'm trying to build a Regularized Logistic Regression from scratch in Python. I'm using 500 training dataset with 30 features and 50 test data set. So far the algorithm seems to work WITH lambda set ...
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Is there a way of calculating the gradient descent of a Neural Nework output w.r.t the input with tensorflow 2.0?

I have trained a Recurrent Neural Network for time-series prediction and I'm now trying to find the optimal input for the network (i.e. the input that minimizes the output). At this purpose, I was ...
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Losses in Neural Networks

Hi all I have a question regarding neural networks. In a network with multiple layers during a single run say while classifying a single test image, will we calculate the loss across all classes or ...
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Neuron with binary output maintaining the gradient

I'm pretty new to the field of machine learning. I'm designing a neural network which in a hidden layer. it must take a real value and output either 0 or 1 depending on the sign of the value. are ...
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Calculate Gamma from Loss function for Gradient Boosting

How do I find Gamma from the loss function given below: Wikipedia says its a one dimensional optimization problem. There is also a statement that says since this is linear in Gamma this cannot be ...
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How to calculate the correct values for a neural network when using gradient descent?

Below is part of my coding attempt to try to implement a simple neural network with 1 hidden layer. When setting the second delta for backpropagation, denoted by del2, the equations for ...
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We can minimize the cost function in Gradient Descent by directly equating the gradient/derivative of cost function to zero

In order to minimize the cost function, we can directly equate the gradient/derivative to zero and get the required value for 'm' and 'b' and this will give us the minimum cost. Then why to use the ...
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Implementing gradient descent on with known objective function

I have an objective function from a paper that I would like to minimize with gradient descent. I have not yet had to do this "from scratch" and would like some advice as to how to code it up manually. ...
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how to define the objective function 1/2 x^T Qx + q^T x in python?

I have a optimisation problem. I am trying to minimise 1/2 x^T Qx + q^T x. With Q random positive definite matrix of size 100 x 100. q random vector in R^100. I am using the gradient descent method. ...
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Tensorflow 2.0 second order gradient cross-variable

I would like to get the cross gradient for my monte-carlo function , which I am running under tensorflow 2.0. I can calculate first order & second order gradient as shown in the code at the end. ...
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Gradient descent method does not work well in linear regression?

In R, I generated some artificial data to perform a linear regression using gradient descent method Y = c0 + c1 * x1 + c2 * x2 + noise I also use a analytical method to calculate the parameters theta ...
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where is summation when implementing gradient descent for linear regression

def gradientDescent(X, y, theta, alpha, num_iters): """ Performs gradient descent to learn `theta`. Updates theta by taking `num_iters` gradient steps with learning rate `alpha`. ...
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why doesn't gradient descnet step back to avoid oscilation

I am performing an optimization using gradient descent but sometime it jumps over the mimimum and the cost function increases. I added a condition that if cost function value increased then step back ...
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My cost function behaves unexpectedly while training my machine learning model

I've recently started the Coursera ML course and took It upon my self to train a linear regression model through gradient descent using python. Here's the code I came up with: import csv # ...
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Andrew Ng's ML course excercise using python: gradient descent

I have been trying to implement the solutions of Andrew Ng's exercises in python and not sure why I cannot make the gradient descent work properly. This is the code I used for gradient descent: def ...
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I Built this code of general gradient descent for linear regression however confused how to deal with intercept value

1how to deal with the intercept thing like i have studie somewhere the during generalising it for n+1 features where +1 is for intercept use an array of n+1 size but coulnt able to figure out how to ...
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how to calculate gradient descent of critic in actor-critic model

In step 2.4 of the actor critic pseudo algorithm here, it states that the critic's weights with the temporal difference error * the state value. w ← w + αw δ ∇w Qw(s,a) where δ = r + γ Qw(s′,a′) − ...
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Is it possible that our algorithm will converge to different local minima if we use same data twice (twice randomization of the initial parameters)?

Suppose we are training a neural network using gradient descent using the same data twice (twice randomization of the initial parameters). Is it possible that our algorithm will converge to different ...
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Tensorflow Error: Custom Gradient in Keras Layer: Shapes must be equal rank, but are 1 and 2

I have a working custom activation function for my custom keras layer and I am trying to code a custom gradient for it. The reason for creating this custom gradient is numeric differentiation is ...
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How does the derivative of cost function gives direction of fastest decrease in cost?

I am learning Gadient descent to find the minimum of a function. There I found a line of code as shown m1' = m1 - alpha* d/dm1 j(m0,m1) # m0,m1 are weights, j(m0,m1) is the loss function It is ...
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Basic questions about fitting a formula with gradient descent or genetic algorythm

I've been trying to code a following problem. I have defined a function depending on a number of parameters (in my case, those of a Bragg mirror and a x-ray beam). Now I am trying to compare the ...
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Cost function of logistic regression outputs NaN for some values of theta

While implement logistic regression with only numpy library, I wrote the following code for cost function: #sigmoid function def sigmoid(z): sigma = 1/(1+np.exp(-z)) return sigma #cost function ...
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Does correction to weights include derivative of Sigmoid function also?

Let's evaluate usage of this line in the block of code given below. L1_delta = L1_error * nonlin(L1,True) # line 36 import numpy as np #line 1 # sigmoid function def nonlin(x,deriv=False): if(...
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Learning rate too large, how does this affect the loss function for logistic regression using batch gradient descent

Question: If the learning rate (a) is too large, what happens to the graph and how could this affect the loss function with iterations I've read somewhere that the graph may not converge or there ...
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Gradient Descent Algorithm And Different Learning Rates

In the gradient descent algorithm, can we choose the learning rate to be different in each iteration of the algorithm until its convergence?
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Gradient Descent with Tanh, 0 gradient on incorrect classification?

The derivative of the tanh(x) activation function is 1-tanh^2(x). When performing gradient descent on this function, this derivative becomes part of the gradients for the weights. For example, with ...
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Batch gradient descent in scikit-learn

How do we set parameters for sklearn.linear_model.SGDRegressor to make it perform Batch gradient descent? I want to solve a linear-regression problem using Batch gradient descent. I need to make SGD ...
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Gradient Descent - Difference between theta as a list and as a numpy array

I’ve implemented a gradient descent algorithm and that produce different results depending on whether my theta is of type list or a numpy array: When theta is a python list my program is working fine ...
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what is d in time complexity of GBDT?

Is it a depth of the tree or dimensionality of the point. The computation of pseudo residuals (r_im) is O(d) per point. So, for a dataset of size n, computing pseudo residuals is O(nd) per iteration. ...
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Neural Network Gradient Descent: Matrix Shapes of Derivatives of Weights not Aligned

I am trying to create my own network from scratch (without using libraries such as keras or tensorflow) to better understand machine learning and neural networks. I have run into the problem that when ...
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Neural Net gradient calculation with Batch Normalization C++

I was trying to change my activation function of my neural net from sigmoid to RELU (or more specifically SELU). Since I got a lot of exploding gradients with that change, I tried to use the batch ...

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