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Analyse precision recall curve #59

@KoenLoeffen

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@KoenLoeffen

I have two questions:

  1. The precision-recall curve is a trade off between the min similarity and the percentage matched. So in the ideal case you want both the precision as the recall as high as possible. However I found out in my results that the model with the highest precision and recall isn't always the best. Am I missing something?
  2. How would I set the optimal threshold for the similarity? Is this also based on the precision recall curve?

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