Tagged Questions

In statistics, the mean squared error (MSE) of an estimator is one of many ways to quantify the difference between values implied by an estimator and the true values of the quantity being estimated.

learn more… | top users | synonyms

0
votes
0answers
11 views

Cross Entropy, Softmax and the derivative term in Backpropagation

I'm currently interested in using Cross Entropy Error when performing the BackPropagation algorithm for classification, where I use the Softmax Activation Function in my output layer. From what I ...
0
votes
1answer
58 views

MATLAB: : Mean square error vs SNR plot

I am having difficulty in understanding the logic behind generating a plot of SNR (db) vs MSE. Different Signal to Noise Ratio (SNR) is created by varying the noise power . The formula of MSE is ...
0
votes
1answer
35 views

Measuring performance by MSE or RMSE in classification/clustering tasks?

I employ K-means and MLP algorithms for two simple clustering and classification tasks. I searched many in the literature and I found that some researchers applied MSE and other RMSE for comparing ...
0
votes
0answers
24 views

How do I get an incoming frame from the camera mean square error

Hi do not bother my friends This piece of code that brought down the frame that the camera gets And the area around the eye will Now I want a function that is called a template variable I get a mean ...
0
votes
1answer
38 views

How calculate the mean of Mean Squared Errors?

I have an array A where each element is an Mean Squared Error. How can I calculate the mean of A? If I do a simply mean (If I do so I should got a mean of means) of the elements of A, is it a correct ...
1
vote
1answer
88 views

Issue in calculating error for several runs of an experiment

In the following short example code which is a part of a larger code, I am trying to find the Mean square error which is a performance metric that will decide how good the function has been evaluated ...
0
votes
0answers
62 views

Deep Neural Network final output neurons stops at a medium point and does not go towards desired Target

Hope you all to be well. I have two questions. 1) in my deep network, my desired target output is [1,0] for class1 and [0,1] for class2. However after thousands of epochs (2000, 3000) it comes to MSE ...
0
votes
1answer
105 views

is the Netlab's function mlperr calculating the mean squared error?

I wonder if the mlperr from the Netlab package is calculating the mean squared error. The documentation states that it's dependent on the ouput's units activation function. How does that make sense? ...
1
vote
1answer
202 views

How to do iterative ANOVA and extract Mean Square Values from lm object in R

I have a dataset in which I have 18 populations. Each population has several individuals in it, each individual has a "Color" call. I would like to only compare two populations at once in a one-way ...
5
votes
1answer
4k views

Mean Squared Error in Numpy?

Is there a method in numpy for calculating the Mean Squared Error between two matrices? I've tried searching but found none. Is it under a different name? If there isn't, how do you overcome this? ...
0
votes
1answer
2k views

How to know if a regression model generated by random forests is good? ( MSE and %Var(y)) [closed]

I tried to use random forests for regression. The original data is a data frame of 218 rows and 9 columns. The first 8 columns are categorical values ( can be either A, B, C, or D), and the last ...
1
vote
1answer
341 views

size difference in an image after downscale/upscale operation using imresize

I resized an image with scale of 0.25 then upscaled it using scale of 4. imageReduced = imresize(imageOriginal, 0.25, 'nearest'); imageGenerated = imresize(imageReduced, 4, 'nearest'); I want to ...
2
votes
2answers
15k views

How to get mean square error in a quick way using Matlab?

I don't know whether this is possible or not but let me explain my question Imagine that I have the below array errors=[e1,e2,e3]; Now what I want to calculate is below ...