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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Problem with gradient checking in deep neural network

I'm currently writing code for a deep neural network. I've implemented forward porp and back prop. To check that my backpropagation was well done I implemented gradient checking. The difference ...
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Updating variables creates “invalid Syntax” [on hold]

I'm very new to python coding since I started to learn about AI. So this is my following code: # Activation (sigmoid) function def sigmoid(x): return (1 / (1 + np.exp(-x ))) # Output (...
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Gradient Descent cost function explosion

I am writing this code for linear regression and trying Gradient Descent to minimize the RSS. The cost function seems to explode to infinity within 12 iterations. I know this is not supposed to happen....
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How to properly do gradient clipping in pytorch?

What is the correct way to perform gradient clipping in pytorch? I have an exploding gradients problem, and I need to program my way around it.
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Why does the intercept parameter increases in an unexpected direction?

I'm doing 2 gradient descent iterations (initial condition: learning_rate = 0.1, and [w0,w1] = [0,0]) to find the 2 parameters (y_hat = w0 + w1*x) for linear model that fits a simple dataset, x=[0,1,2,...
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Which layers are more intolerant to error in neural networks?

I am doing research and am curious about the impact of gradient descent on layers individually. As we all know, gradient descent always tries to takes us to the global minimum of the valley. However, ...
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20 views

What is the cost function of J(0,1) with a particular training set?

I am going over a Machine learning class on Coursera and I have trouble getting the correct answer on the following task: For this question, assume that we are using the training set: x, y 3, 2 1, ...
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24 views

Tensorflow: generate input to obtain desired output

I am trying to apply gradient descent on the input variable in my TF model make the model output an arbitrary value. I first train the model with real data, then generate a random array to obtain a ...
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How do I correctly define a custom STE gradient in Flux?

I am trying to write a custom STE gradient using Flux. The activation is basically just the sign() function, and its gradient is the incoming gradient as is iff its absolute value is <=1, and ...
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How to calculate the gradient for nce_loss in tensorflow

I need to calculate the gradient of a tensorflow that is stored. I can restore the graph and weights using: model1 = tf.train.import_meta_graph("models/model.meta") model1.restore(sess, tf....
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57 views

Does Gradient Boosting detect non-linear relationships?

I wish to train some data using the Gradient Boosting Regressor of Scikit-Learn. My questions are: 1) Is the algorithm able to capture non-linear relationships? For example, in the case of y=x^2, y ...
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What is difference between Gradient Descent and Grid Search in Machine Learning?

Hyperparameter Tuning use two techniques like Grid Search or Random Search. Gradient Descent is mostly used to minimize the Loss function. Here query is in when we will use Grid Search and Gradient ...
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Multi variable Linear Regression on Boston data set in python

I was trying to perform multi variable linear regression on the Boston data set. I observed some strange behavior in my cost function. During the first 150-200 iteration, the cost function decreases ...
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Concurrently calculate gradients in a Neural Network?

I'm writing a neural network from scratch that uses gradient descent and backpropagation to train. For my descent function, I have the following code: def descend(self): for n in range(len(self....
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1answer
26 views

When to use learning rate finder

Reading the paper ' Cyclical Learning Rates for Training Neural Networks' https://arxiv.org/abs/1506.01186 Does it make sense to use the learning rate finder if the model is over-fitting ? Other than ...
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Why doesn't my custom made linear regression model match sklearn?

I'm attempting to create a simple linear model with Python using no libraries (other than numpy). Here's what I have import numpy as np import pandas np.random.seed(1) alpha = 0.1 def h(x, w): ...
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scipy's optimize.minimize function return status 3(fails) due to Max. number of function evaluations reached

I am trying to make a movie recommender system. I have data which contains about 1700 movies and 950 users who rated those movies. I am trying to find THETA with gradient descent. Y is 1900 x 950 ...
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23 views

Gradient Decent using SGDRegressor algorithm of scikit-learn

I am implementing Gradient Decent using SGDRegressor algorithm of scikit-learn on my rental dataset to predict rent on the basis of the area but getting weird coefficients and intercept, and therefore,...
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25 views

MXNet-Caret Training and Optimization

I am using MXNet library in RStudio to train a neural network model. When training the model using caret, I can tune (among others) the "momentum" parameter. Is this related with the Stochastic ...
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gradient descent for batch normalized layers

If i have to compute the sthocastic gradient descent with a mini batch of size n with theta as the weights and biases of my network, then new_theta = old_theta - learning_rate * mean on the batch of ...
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78 views

Grad-CAM problem with Keras on VGG16 with Fine-Tuning

I'm currently studying the "Deep Learning with Python" book by François Cholet and I trained a ConvNet with some Fine-tuning to classify cats and dogs. And that's OK, it works fine. And a few ...
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34 views

Gradient Descent algorithm raises valueError

I have these gradient descent algorithm for multivariate regression but it raises an ValueError: operands could not be broadcast together with shapes (3,) (3,140). I checked out other answers on ...
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Will gradient descent be stuck in non-minima point? How can we prove its correctness?

For stuck example, let our cost function be J(x,y) = x * y and we are currently at point (0,0) Then the gradient vector will be (0,0). That means we will not move to any other point with the gradient ...
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Why is gradient descent not working properly?

This is my first attempt at encoding a multilayer neural network in Python (code is attached below). I'm having a hard time trying to use the gradient descent partial derivatives, because it seems ...
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14 views

SGDClassifier save loss from every iteration to array

When I train a SGDClassifier in scikit-learn, I can print out the loss value from every iteration (setting verbosity). How to store the values into an array?
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Defining a “safe apply” function in R [duplicate]

In the Gradient Descent chapter from Joel Grus' Data Science from Scratch, he defines a "safe apply" function which takes a function (call it f) as its argument and returns a new function that takes ...
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29 views

hell going on with stochastic gradient descent

I am working with multivariate linear regression and using stochastic gradient descent to optimize. Working on this dataSet http://archive.ics.uci.edu/ml/machine-learning-databases/abalone/ for ...
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1answer
65 views

Gradient Descent for multivariate Regression value not converging

I have tried this piece of code for multi variable regression for finding the coefficients but couldn't find where I am making mistake or if I am on the right path? The problem is the mse value not ...
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21 views

Should the Perceptron weights be updated based on prediction or loss values?

The book Neural Networks and Deep Learning by Charu C.Aggarwal lists the Perceptron weight update rule as W <-- W + a*(y_i - y_hat_i)*X where W is your weight vector, X is your data vector with ...
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40 views

Multiple Parameter Gradient Descent in R

I am an R user and I am currently trying to use a Gradient Descent algorithm for which to compare against a multiple linear regression. I have seen some codes online but they do not work on all data ...
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55 views

Solving mountain car (gym) with linear value-function approximation with temporal difference weight update

So, in my assignment i need to solve Mountain car, by optimizing the action state value function using linear function approximation- specifically the using polynomials as features. For solving this i ...
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ForwardDiff.jl and ReverseDiff.jl error message related to ::getfield()

I am attempting to use the ForwardDiff.jl and / or ReverseDiff.jl libraries for computing the gradient in an optimization problem. Both of these packages give me an error message related to ::...
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Gradient descent algorithm in MATLAB

first thank you for taking the time to help. I thought I had a really good handle on the calculus behind gradient descent but for some reason by the algorithm is only getting very close to the optimal ...
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50 views

How to write Multiplicative Update Rules for Matrix Factorization when one doesn't have access to the whole matrix?

So we want to approximate the matrix A with m rows and n columns with the product of two matrices P and Q that have dimension mxk and kxn respectively. Here is an implementation of the multiplicative ...
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65 views

Tensorflow Projected Gradient Descent with Box Constraints using native Optimizer's apply_gradients

Say that our model parameters w have box constraints (e.g. 0 < w_i < 1). How can I implement projected gradient descent in Tensorflow respecting this constraints when I optimize using a subclass ...
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1answer
34 views

Difficulty with running gradient descent in eager execution

I've built a neural network with python in TensorFlow, but I can't seem to resolve this issue with TensorFlow's eager execution. All the gradients output zero, and I'm not really sure where I've gone ...
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1answer
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Why doesn't tf.train.GradientOptimizer work on my digit recognition model, while ShampooOptimizer from tensorflow.contrib works just fine?

I developed a neural network model for digit recognition using tensorflow. I used tf.train.GradientDescent as my optimizer, and I got very low prediction accuracy (around 11%). But if I only change my ...
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1answer
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gradient descent algorithm in machine learning

I am beginner in machine learning.ihave problem in gradient descent algo.in the code, mentioned below, my doubt is during first iteration value of x will be 1 second iteration value of x will be 2 ...
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1answer
49 views

Linear regression implementation in Octave

I recently tried implementing linear regression in octave and couldn't get past the online judge. Here's the code function [theta, J_history] = gradientDescent(X, y, theta, alpha, num_iters) m = ...
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1answer
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In gradient checking, do we add/subtract epsilon (a tiny value) to both theta and constant parameter b?

I've been doing Andrew Ng's DeepLearning AI course (course 2). For the exercise in gradient checking, he implements a function converting a dictionary containing all of the weights (W) and constants (...
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gradient descent algorithm dealing with a cost function not known at start time?

I am working on a homework in which I have to simulate a robot which moves in a 2-dimensional space and must maximize an objective function (signal quality). This robot can read the value of the ...
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31 views

Machine learning linear regression nan value while doing gradient descent

I have a simple code, I am trying linear regression on sine on interval 0 to 2pi, I am trying to determine coefficients of taylor expansion of sine with linear regression but when I add up to 5th ...
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1answer
38 views

How to self-define the gradient of sign function in Keras or Tensorflow?

I have a neural network, which accept the input I and output a real vector W. For some particular situation, I need to add a sign function to W and then put it into to loss function to compute my loss....
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53 views

Updating linear regression with many features

The problem I have is the following: I have a csv file with roughly 10 million rows. With that, I want to to run a linear regression with many interaction terms. In the end I will have 3000 such ...
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1answer
99 views

Pytorch: How does SGD with momentum works when optimizer has to call zero_grad() to help accumulation of gradients?

In pytorch, the backward() function accumulates gradients and we have to reset it every mini-batch by calling optimizer.zero_grad(). In this case, how does the SGD with momentum works when actually ...
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1answer
174 views

pytorch - connection between loss.backward() and optimizer.step()

Where is an explicit connection between the optimizer and the loss? How does the optimizer know where to get the gradients of the loss without a call liks this optimizer.step(loss)? -More context- ...
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Tensorflow: Modify datapoints used in loss function evaluation after each gradient step using tf optimizer

Typically a tf optimizer flow is as follows: # Create an optimizer. opt = GradientDescentOptimizer(learning_rate=0.1) # Compute the gradients for a list of variables. grads_and_vars = opt....
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44 views

Mini batch stochastic gradient descent

My question is what changes should be made to SGD algorithm to implement mini-batch SGD algorithm. In the book, Machine Learning by Tom Mitchell, the GD, and SGD algorithms are explained very well. ...
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1answer
55 views

why too many epochs will cause overfitting?

I am reading the a deep learning with python book. After reading chapter 4, Fighting Overfitting, I have two questions. Why might increasing the number of epochs cause overfitting? I know increasing ...
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Backpropagation of a Neural Network containing Rolling Tensors and an Input Layer that is not at the Bottom of the Neural Net?

I am currently creating a neural network for a side-project I am working on. I do not have the code ready, however for my basic structure, I was wondering if the following is possible / allowed with ...