TL;DR
This paper introduces the telescoping adaptive filter, a practical data structure that guarantees false positive rates across multiple queries, improving reliability and efficiency in set membership testing.
Contribution
It presents a new practical adaptive filter with provable false positive and space guarantees, bridging the gap between heuristic and optimal adaptive filters.
Findings
Achieves false positive guarantees across multiple queries.
Provides empirical performance comparable to non-adaptive filters.
Offers theoretical bounds on false positives and space usage.
Abstract
Filters are fast, small and approximate set membership data structures. They are often used to filter out expensive accesses to a remote set S for negative queries (that is, a query x not in S). Filters have one-sided errors: on a negative query, a filter may say "present" with a tunable false-positve probability of epsilon. Correctness is traded for space: filters only use log (1/\epsilon) + O(1) bits per element. The false-positive guarantees of most filters, however, hold only for a single query. In particular, if x is a false positive of a filter, a subsequent query to x is a false positive with probability 1, not epsilon. With this in mind, recent work has introduced the notion of an adaptive filter. A filter is adaptive if each query has false positive epsilon, regardless of what queries were made in the past. This requires "fixing" false positives as they occur. Adaptive…
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