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Most Influential SIGMOD 2000 Paper · 2026-03 edition

Turbo-charging Vertical Mining Of Large Databases

Pradeep Shenoy, Jayant R. Haritsa, S. Sudarshan, Gaurav Bhalotia, Mayank Bawa, Devavrat Shah

Venue
ACM SIGMOD Conference (SIGMOD) 2000
Recognition
Most Influential SIGMOD 2000 Paper (Rank No. 14)
Edition
2026-03
Impact factor
6
Certificate ID
3d4a33889e5defd0

Abstract

In a vertical representation of a market-basket database, each <i>item</i> is associated with a column of values representing the transactions in which it is present. The association-rule mining algorithms that have been recently proposed for this representation show performance improvements over their classical horizontal counterparts, but are either efficient only for certain database sizes, or assume particular characteristics of the database contents, or are applicable only to specific kinds of database schemas. We present here a new vertical mining algorithm called VIPER, which is general-purpose, making no special requirements of the underlying database. VIPER stores data in compressed bit-vectors called “snakes” and integrates a number of novel optimizations for efficient snake generation, intersection, counting and storage. We analyze the performance of VIPER for a range of synthetic database workloads. Our experimental results indicate significant performance gains, especially for large databases, over previously proposed vertical and horizontal mining algorithms. In fact, there are even workload regions where VIPER outperforms an optimal, but practically infeasible, horizontal mining algorithm.

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