Sequential Pattern Mining - College of Computing
Rastogi, Shim [VLDB’99]; Pei, Han, Wang [CIKM’02]) • Mining closed sequential patterns: CloSpan (Yan, Han & Afshar [SDM’03]) 9 ... – Disk-based random accessing is very costly • Suggested Approach: – Integration of physical and pseudo-projection – Swapping to pseudo-projection when the data set
Mining, Patterns, Random, Sequential, Sequential pattern mining
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