An efficient partition based method for exact set similarity joins

Author:

Deng Dong1,Li Guoliang1,Wen He1,Feng Jianhua1

Affiliation:

1. Tsinghua University, Beijing, China

Abstract

We study the exact set similarity join problem, which, given two collections of sets, finds out all the similar set pairs from the collections. Existing methods generally utilize the prefix filter based framework. They generate a prefix for each set and prune all the pairs whose prefixes are disjoint. However the pruning power is limited, because if two dissimilar sets share a common element in their prefixes, they cannot be pruned. To address this problem, we propose a partition-based framework. We design a partition scheme to partition the sets into several subsets and guarantee that two sets are similar only if they share a common subset. To improve the pruning power, we propose a mixture of the subsets and their 1-deletion neighborhoods (the subset of a set by eliminating one element). As there are multiple allocation strategies to generate the mixture, we evaluate different allocations and design a dynamic-programming algorithm to select the optimal one. However the time complexity of generating the optimal one is O ( s 3 ) for a set with size s. To speed up the allocation selection, we develop a greedy algorithm with an approximation ratio of 2. To further reduce the complexity, we design an adaptive grouping mechanism, and the two techniques can reduce the complexity to O ( s log s ). Experimental results on three real-world datasets show our method achieves high performance and outperforms state-of-the-art methods by 2-5 times.

Publisher

VLDB Endowment

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

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1. Open benchmark for filtering techniques in entity resolution;The VLDB Journal;2024-07-09

2. Similarity Joins of Sparse Features;Companion of the 2024 International Conference on Management of Data;2024-06-09

3. Experiences and Lessons Learned from the SIGMOD Entity Resolution Programming Contests;ACM SIGMOD Record;2023-08-10

4. A Two-Level Signature Scheme for Stable Set Similarity Joins;Proceedings of the VLDB Endowment;2023-07

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