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.

1,450 questions
Filter by
Sorted by
Tagged with
18 views

I'm a beginner trying to learn, in particular, applications of the gradient descent algorithm. Here is an example for a least squares regression I've tried: import pandas as pd import numpy as np ...
8 views

SVM loss function implemantion - understand how to update the gradient

I have this part of code, trying to implemant a loss function for a svm model: from builtins import range import numpy as np from random import shuffle from past.builtins import xrange def ...
1 vote
18 views

Gradients not changing in co-ordinate descent for logistic regression

I am trying to implement a co-ordinate descent algorithm for logistic regression. My gradients are not changing, as a result I end up updating a single co-ordinate for each epoch. Here is the code: ...
30 views

Unable to find out the feature importance list from histgradientboosting classifier

Is there any way to find the feature importances from a histgradientboosting classifier model in python? I tried using model.feature_importances_ but the error message was AttributeError: '...
• 85
42 views

I am working on a project on google colab where I need to visualize gradient maps for an image using TensorFlow and TensorFlow Addons. I have defined a function plot_gradient_maps that uses tfa.image....
111 views

solving Freudenstein and Roth test function using gradient armijo method

I try to solve the Freudenstein and Roth test function which is given by: f1^2 + f2^2, where f1, f2 are given by: f1 (x, y) = −13 + x + ((5 − y) y − 2) y, f2 (x, y) = −29 + x + ((y + 1) y − 14) y. ...
• 1
25 views

Error in backpropagation method from scratch

I'm trying to make an AI that predicts crypto prices for a while now and I´ve encountered this persistent error in my backpropagation method (specifically regarding the scale of the arrays in the np....
• 1
1 vote
40 views

Backpropagation and gradient descent with python

I am new to gradient descent and I'm completely lost on the exercise below. The first part is an explanation with a simple example. Here is that example: When training the model, we want to find ...
• 47
1 vote
68 views

finding the maximum of a function using jax

I have a function which I would like to find its maximum by optimizing two of its variables using Jax. The current code that I have currently, which does not work, reads import jax.numpy as jnp import ...
• 207
57 views

Computing Fisher Information in pytorch models

I want to implement a function that computes the fisher information of each parameter of a yolov5. So, I took a pre-trained model and computed the fisher info by iterating through a batch of data and ...
36 views

Why is my sigmoid layer blocking gradients?

import torch import torch.optim as optim import torch.nn as nn input = torch.tensor([1.,2.], requires_grad=True) sigmoid = nn.Sigmoid() interm = sigmoid(input) optimizer = optim.SGD([input], lr=1, ...
• 1,961
42 views

Weights and Biases not logging gradients properly with Stable-Baselines3

I am training a reinforcement learning model on a custom environment and logging with Weights & Biases. Everything seems to log properly, except the gradient and parameter histograms. No matter ...
• 548
59 views

Gradient Descent Using List Storage Resulting in Division by Zero Error in Image Processing Algorithm for Multi-Variable Optimization

I'm working on an optimization algorithm that utilizes Gradient Ascent to adjust my parameters focus, second_dispersion, and third_dispersion. Since I'm working with a physical system I don't have a ...
31 views

Is normalization of input variables necessary for problem using second order algorithms?

I have a question about normalizing input variables in optimization. While it's widely acknowledged that normalization is crucial for first-order optimization algorithms like gradient descent, I'm ...
69 views

Multivariable Gradient Descent for MLEs (nonlinear model) in Python

I am trying to perform gradient descent to compute three MLEs (from scratch). I have data \$x_i=s_i+w_i\$ where \$s_i=A(nu_i/nu_0)^{alpha}(nu_i/nu_0+1)^{-4alpha}\$ where I have calculated the first ...
31 views

Problem with multivariable gradient ascent for optimization

I'm working with a physical experimental system to track its evolution in real time using a camera. Specifically, I trigger the camera to retrieve images and track the count of each picture. My ...
14 views

Getting TypeError while implementing the gradient descent code for regularized values

My Code (from coursera): def gradient_desc(X, Y, w_in, b_in, cost_f, grad_f, alp, num, lambda_): m = len(X) # An array to store cost J and w's at each iteration primarily for graphing later ...
60 views

Problem building CNN only using python numpy when gradient descent and batching

I am currently learning the book Grokking Deep Learning by Andrew W. Trask. But I have problems understanding the code in Chapter 10 of the book, on building a CNN only using python and numpy: import ...
41 views

how would I restrict some parameters without messing with the whole gradient descent algorithm?

In a gradient descent case i have many parameters that get updated each run, for 3 of those these condition have to hold. 1. (a,b,c) >0 2. a+b+.5c<=1 I apply a gradient descent variant with ...
• 11
1 vote
28 views

How should I realise gradient descent method with these conditions?

I have a task to write optisation of a functional using gradient descent metode. I've got a functional with parameters a and b. For example, a*x + b. I need to find a and b parameters to minimize the ...
66 views

How to write a general version gradient_descent algorithm in c++?

I want to write a general version of gradient descent algorithm in c++ to pass the following gtest. ... #include <cmath> TEST(HW6Test, TEST1) { auto min1 = q1::gradient_descent(0.01, 0.1, ...
1 vote
37 views

Not converge- Simple Actor Critic for Multi-discrete Action Space

import torch import torch.nn as nn import torch.optim as optim import torch.nn.functional as F import numpy as np # ------------------------------------ # # Actor # -----------------------------------...
• 21
68 views

I am trying to learn an arbitrary 1D function using neural networks in TensorFlow. Here is my approach so far: I have a set of fundamental functions, and I want to be able to express any function in ...
• 217
45 views

How to include model's parameter in my custom loss function

I am using PyTorch Lightning and I defined my model like below: class MyModel(MyBaseClass): def __init__(self, ..., **kwargs): super().__init__(**kwargs) self.model_parameter = ...
• 3,629
76 views

Why is my implementation of linear regression not working?

I am trying to implement linear regression from scratch in python. For reference, here are the mathematical formulae I have used: Equations This is what I tried: class LinearRegression: def ...
1 vote
121 views

unexpected output with stochastic gradient descent algorithm for linear regression

I had an unexpected output while implementing SGD algorithm for my ML homework. This is part of my training data which normally has 320 rows: my dataset: https://github.com/Jangrae/csv/blob/master/...
• 25
27 views

Could the forward function of torch.nn pass the learnable parameters and update it?

I have write two torch.nn modules, and I want pass some learnable parameters between them. I know this may not be the norm, but could this lead to some training errors or parameter updating error? An ...
• 11
1 vote
473 views

How to modify parameters that require gradients in meta learning?

I have a neural network that is trained to output learning rates: import torch import torch.nn as nn import torch.optim as optim criterion = nn.MSELoss() device = torch.device("cuda" if ...
• 2,084
65 views

I've implemented the gradient descent method for finding roots of a system of nonlinear equations and I am wondering how the residual is determined? Is the residual simply the Euclidean norm (2-norm) ...
• 9
65 views

Gymnasium environment consisting of multiple environments

I'm using reinforcement learning to train an agent to estimate the stepsize in gradient descent. I want to train the agent on different objective functions of the form x'Qx. I'm currently using the ...
• 19
223 views

Gradient descent stuck in local minima?

I'm running gradient descent to find a root for a system of nonlinear equations and I am wondering how you might detect if the method is stuck at the local minima, because I believe with the settings ...
• 649
18 views

Not getting the optimal value of minimization problem and empty plots

To solve the minimization problem using the gradient method with exact line search, the tolerance parameter = 10^-5 and initial vector x0= (2,1)^t: min x^2+y^2 I attempted to execute a Matlab code, ...
• 41
1 vote
49 views

How to calculate the values at each node in a scikit-learn GradientBoostingRegressor?

I am trying to manually calculate the values shown at each node of each tree of an ensemble returned by a GradientBoostingRegressor. So here is how I train the model: import numpy as np import ...
• 887
24 views

What dimension is the gradient vector output of tSNE

My question is this: Suppose we have 𝑛 𝑑-dimensional vectors. We want to reduce the dimension to 2 using tSNE, naturally. When we compute tSNE using gradient descent, the gradient vector computed ...
33 views

Regress in MATLAB vs My code for multiple linear regression

I am trying to do a multiple linear regression using the data available in MATLAB as 'carsmall' file. My aim is to predict mileage as a function of weight and horsepower. Basically, y =w1x1 +w2x2 +b; ...
• 99
1 vote
40 views

How to apply gradient descent onto a 3-particle system and calculate its energy

I'm running into an overflow problem with my code. I'm supposed to write Python code to apply gradient descent onto a 3 particle system and calculate its energy. For reference, the energy of the ...
35 views

when i do the gradient descent the value is inflation

In this code, I created a Gradient Descent algorithm to optimize Theta0 and Theta1, and each time it is checked: Is the cost of the function with the new Theta smaller? --- then set this Theta. But ...
• 11
29 views

Find the point, that is the closest to the given set of line segments

The problem seems to be very similar to Geometric median problem which can be solved with Weiszfeld's algorithm. I've tried to solve my problem using the algorithm but for every new iteration I find ...
42 views

optimizing 3 variables in a differential equation based on available data point from solution of differential equation

I have following data points (I call them actual data points): y_data = np.array([0, 32.1463583, 33.1915926, 37.9100309, 39.2501778, 40.8225707, 48]) t_data = np.array([0, 26.75, 72.25, 163.4166667, ...
• 901
1 vote
45 views

Gradient descent for linear regression outputs all converge near (0, 0)

I have been trying to implement my own gradient descent algorithm in Python and have been unable to get an output that suitably fits the data. class GradientDescent: def __init__(self, ...
• 113
121 views

Why is my simple MATLAB gradient descend for linear regression not working

I am starting to learn linear regression. I wanted to implement gradient descend by myself. I wrote the code below. %% Linear regression close all; dataset =load('accidents'); data = dataset.hwydata;...
• 99
36 views

Error in Gradient Descent Function with backtracking line search

I am attempting to write a gradient descent function in R that uses backtracking line search to determine the step size. Ultimately, I want to find the minimizer of a function (let's say f). ...
23 views

steepest descent-Optimisation funktion is not converging

I need to implement an steepest descent function one without a Armijo step size control and one with. I implementented it, but it would not converge, to any spot. After try and error, I found out, ...
• 71
1 vote
80 views

Why is my gradient descent function giving me large negative values?

I am trying to code gradient descent in python. The first code below plots error function for 2D (wx+b) and 1D(wx) cases. The 2nd code is my gradient descent function which is saved as a separate ...
95 views

Backpropagation through concatenation of elements of a batch

I have two feature vectors V1(N, F1, 1) and V2(N, F2, 1). I want to concatenate them across dimension 1 to create a vector V3(N, F1+F2, 1) and apply self attention across elements of the batch, i.e ...
101 views

My python implementation of Gradient Descent is not working well

I am trying to create a Linear regression model that uses batch gradient descent but the error or mse value never decreases. The LinearModel is just a template class that initializes the ...
70 views

Coefficient for the gradient term in stochastic gradient descent (SGD) with momentum [closed]

I'm studying SGD with momentum and have come across two versions of the update formula. The first is from a wiki: dw = a * dw - lr * dL/dw # w: weights; lr: learning rate; dL/dw: drivatives of loss ...