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Explain the graph error histogram with 20 bins in neural network. what is bins?

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How can we explain the graph error histogram with 20 bins in neural network. what are bins?

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Ameer Hamza
Ameer Hamza el 19 de Mayo de 2018
Bins are the number of vertical bars you are observing on the graph. The total error from neural network ranges from -0.2222 (leftmost bin) to 0.1968 (rightmost bin). This error range is divided into 20 smaller bins, so each bin has a width of
(0.1968-(-0.2222))/20 = 0.02095.
Each vertical bar represents the number of samples from your dataset, which lies in a particular bin. For example, at the mid of your graph, you have a bin corresponding to the error of -0.00166 and the height of that bin for validation dataset is 10. It means that 10 samples from you validation dataset have an error lies in the following range.
(-0.00166 - 0.02095/2 , -0.00166 + 0.02095/2)
(-0.012135, 0.008815) < the range of the bin corrosponding to -0.00166
Similarly, for other bins, you can interpret the result.
  6 comentarios
Yu Hsiang Lin
Yu Hsiang Lin el 31 de Oct. de 2019
Are the errors in terms of prediction minus real data? or are the errors some factor of mean square error?

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