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Most Influential SIGMOD 1998 Paper · 2026-03 edition

Automatic Subspace Clustering Of High Dimensional Data For Data Mining Applications

Rakesh Agrawal; Johannes Gehrke; Dimitrios Gunopulos; Prabhakar Raghavan

Venue
ACM SIGMOD Conference (SIGMOD) 1998
Recognition
Most Influential SIGMOD 1998 Paper (Rank No. 2)
Edition
2026-03
Impact factor
9
Certificate ID
8549d5e2225157c0

Abstract

Data mining applications place special requirements on clustering algorithms including: the ability to find clusters embedded in subspaces of high dimensional data, scalability, end-user comprehensibility of the results, non-presumption of any canonical data distribution, and insensitivity to the order of input records. We present CLIQUE, a clustering algorithm that satisfies each of these requirements. CLIQUE identifies dense clusters in subspaces of maximum dimensionality. It generates cluster descriptions in the form of DNF expressions that are minimized for ease of comprehension. It produces identical results irrespective of the order in which input records are presented and does not presume any specific mathematical form for data distribution. Through experiments, we show that CLIQUE efficiently finds accurate cluster in large high dimensional datasets.

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