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Hi,
I like your code. It's concise and efficient.
But when i read the recommenders part, that's the "class UserBasedRecommender(UserRecommender)", i found the code in the method named estimated_preference can not guarantee that one neighbor's preference will multiple the his similarity rather than others.
It is the previous code:
prefs = prefs[~np.isnan(prefs)]
similarities = similarities[~np.isnan(prefs)]
I take a simple example:
it follows the steps as the code. as you can see, it gets a wrong result.
my code is like this:
temp_prefs = [~np.isnan(prefs)]
temp_similarities = [~np.isnan(similarities)]
noNaN_indices = np.logical_and(temp_prefs, temp_similarities)
with the same example:
as you can see, it gets the right answer.
if i misunderstood, please let me know. Thank you in advance.
Best Wishes