I'm trying to build a neural network with TensorFlow, PyTorch, Keras of other ML library.

The input is an image and the output is NOT a category but a vector of 100 elements (with a certain pattern for each image).

Each image has its own distinct pattern that is comprised of a vector of 100 elements, so when I'll get a new image I could predict its pattern.

The problem is that I can't use my own vectors as outputs, the only option I found is to give a category as an output...

Is there a way to establish my own output for each image (input) and let the neural network learn using those output vector (which has 100 elements each)?

I have tried looking for a way to provide my own output vectors by I can't find this option in any ML library.


You can. It is called regression problem (in contrast to classification). Your model should just end in linear layer with required dimension and loss function could be mean squared error. I would recommend to check out some introduction to ML, e.g. Andrew Ng's MOOC on coursera. It will give you general understanding on what you can or can not do with machine learning and specifically neural networks.

  • Thanks for answering :D ! The thing is that I don't want to find a function that can predict my output vector, I want the network itself to learn how to predict my output by tuning the weights and biases of the network, so I don't think regression is the suitable solution. – bar rozenman Oct 22 '19 at 9:30
  • Regression problem is a problem of predicting continuous quantity (or, for instance, a vector of quantities which I assume your vector is). There is also an algorithm that is called Linear regression, but I was talking about the problem in general to which neural networks can be applied. – Nikita Makarov Oct 22 '19 at 9:57

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