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I have come across few (Machine learning-classification problem) journal papers mentioned about evaluate accuracy with Top-N approach. Data was show that Top 1 accuracy = 42.5%, and Top-5 accuracy = 72.5% in the same training, testing condition. I wonder how to calculate this percentage of top-1 and top-5?

Can some one show me example and steps to calculate this?

Thanks

  • Take a look at your question from a perspective of a casual reader. Do you think it is possible to answer it. Here is how I read it: I read X which tells about Y. It shows that a=5 and b=14. How do they do this? Gimme codez. I am sure that my question is not possible to answer. Do you think yours is? – Salvador Dali Jun 7 '16 at 3:40
  • @SalvadorDali check below answer from "rcpinto". Maybe something you can understand also from there. Thanks for your reply, i will make my question clear next time. – D_9268 Jun 8 '16 at 7:29
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Top-1 accuracy is the conventional accuracy: the model answer (the one with highest probability) must be exactly the expected answer.

Top-5 accuracy means that any of your model 5 highest probability answers must match the expected answer.

For instance, let's say you're applying machine learning to object recognition using a neural network. A picture of a cat is shown, and these are the outputs of your neural network:

  • Tiger: 0.4
  • Dog: 0.3
  • Cat: 0.1
  • Lynx: 0.09
  • Lion: 0.08
  • Bird: 0.02
  • Bear: 0.01

Using top-1 accuracy, you count this output as wrong, because it predicted a tiger.

Using top-5 accuracy, you count this output as correct, because cat is among the top-5 guesses.

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    Thanks a lot ! this is a good explanation and example. – D_9268 Jun 8 '16 at 7:26
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    Thanks for this answer. In your opinion, is Top-5 really a good metric, or is it a way to exaggerate the true capabilities of a neural network? If I were blind, and asked someone to tell me what animal was in front of me, I would expect "It is a cat" rather than "It is either a Tiger, Dog, Cat, Lynx, or Lion". – Jonathon Reinhart Dec 5 '17 at 14:09
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    I think top-5 metric is useful, among other reasons, because a picture can have more than one object... – cag51 Apr 29 '18 at 22:59
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    So we can say that top-5 accuracy will always be higher than Top-1 accuracy – Ashiq Imran May 31 '18 at 20:02
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The Complement of the accuracy is the error, The top-1 error is the percentage of time that the classifier did not give the correct class highest probability score. The top-5 error:- The percentage of time that the classifier did not include the correct class among the top 5 probabilities or guesses.

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