# With fixed number of functions, how can I calculate the size of a Bloom Filter given the probability of false positives?

I need to implement a bloom filter. And I cannot find a way out of this.

With fixed number of functions, how can I calculate size of a Bloom Filter given the probability of false positives ?

For example, I want that the filter have 10% of false positives, I have the number functions and the number of elements in the set.

How can I calculate the size of Bloom Filter that match the false positive probability ?

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## 1 Answer

The formula for this is on the Wikipedia. Assuming you have enough hash functions available, you need ~4.8 bits per element given the false positive rate you specified of 0.1.

In this case it looks like 4 hash functions would be optimal. Note that more hash functions isn't always better -- if there are very many hash functions relative to the size of the filter, you quickly set almost all the bits on, and you get lots of false positives.

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I should add that in practice you should check your hash functions to verify they are well-behaved on real world input. Writing good hash functions is non trivial. –  cah Dec 19 '11 at 2:40