Jul5 awarded Popular Question Jul2 awarded Curious Jun2 awarded Notable Question May3 comment Matlab Neural Net: tansig always returns positive value Well, since some samples of class 0 are correctly classified, `tansig` must have been returning some negative values, right? Though I am assuming your algorithm rounds -ve values to class 0 and +ve values to class 1. May2 comment Matlab Neural Net: tansig always returns positive value What is the ratio of positive patterns to negative patterns? May2 answered How to choose the number of nodes for using BP network in face recognition? Apr29 awarded Notable Question Apr5 awarded Popular Question Apr3 comment Training a neural network with constrained units The benefit of KL-Divergence lies in its non-symmetric nature and sparsity control. We can observe from the figure above how values below "p = 0.2" are less penalized than higher values, meaning it encourages sparsity more than if we used simpler regularization terms. Secondly, the value of `p` determines how much sparsity we want. For different data, different sparsity values is desirable. Apr3 revised Training a neural network with constrained units edited body Mar22 comment 2D Deconvolution using FFT in Matlab Problems I was referring to @SeanJamesJamieson last step in getting the Gaussian function. In his words, "I indexed the matrix for the first 300 rows and columns and I recovered my function." The division results in a 599x599 matrix, but how do we get the 300x300 matrix representing the Gaussian function? Mar21 comment 2D Deconvolution using FFT in Matlab Problems Nice, but how do you know that the first 300 rows and columns represent the Gaussian function? For example, what happens if you take the last 300 rows and columns? I am doing something similar and this part is confusing me :/ Mar21 comment 2D Deconvolution using FFT in Matlab Problems Since the division results in a 599x599 matrix, how do you get the 2D Gaussian Function which is 300x300? Mar20 asked Deconvolution to extract the latent kernel Mar12 asked Would Richardson–Lucy deconvolution work for recovering the latent kernel? Mar12 accepted “valid” and “full” convolution using fft2 in Python Mar11 asked “valid” and “full” convolution using fft2 in Python Mar5 comment How can I calculate the nearest positive semi-definite matrix? This might be a stupid question but can you convert back, i.e. from PSD to the original matrix? Mar4 awarded Yearling Feb19 revised Quadratic Program (QP) Solver that only depends on NumPy/SciPy? added 6 characters in body