A Bloom filter is a method for reducing the space (memory) required for
representing a set by allowing a small error probability. In this paper we
consider a \emph{Sliding Bloom Filter}: a data structure that, given a stream
of elements, supports membership queries of the set of the last n elements (a
sliding window), while allowing a small error probability. We formally define
the data structure and its relevant parameters and analyze the time and memory
requirements needed to achieve them. We give a low space construction that runs
in O(1) time per update with high probability (that is, for all sequences with
high probability all operations take constant time) and provide an almost
matching lower bound on the space that shows that our construction has the best
possible space consumption up to an additive lower order term