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[WIP] Detect precision issues in euclidean distance calculations #12142
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should we not just back off to using the exact algorithm in this case?
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Yes, that would probably be the best outcome. But I would like to explore more fine-grained detection of problematic points, instead of considering just the min/max of the distribution for this to actually be useful.
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Standardizing, centering etc. will not help in all cases. Consider the 1d data set -10001,-10000,10000,10001 with FP32; essentially the symmetric version of the example I provided before. The mean is zero; and scaling it will not resolve the relative closeness of the pairs of values.
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I agree, sample statistics is not the solution here. This was merely an attempt at prototyping. Theoretically though since we already have the norms, we could use comparison between the norms as a proxy to determine potentially problematic points at the cost of
O(n_samples_a*n_samples_b)
as compared to the overall costO(n_samples_a*n_samples_b*n_features)
for the full calculation. Or less if we use some tree structure. Then recompute those points exactly, though it would have its own limitations...