DocumentCode
2731409
Title
ScalParC: a new scalable and efficient parallel classification algorithm for mining large datasets
Author
Joshi, Mahesh V. ; Karypis, George ; Kumar, Vipin
Author_Institution
Dept. of Comput. Sci., Minnesota Univ., Minneapolis, MN, USA
fYear
1998
fDate
30 Mar-3 Apr 1998
Firstpage
573
Lastpage
579
Abstract
We present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a decision tree based classification process. Like other state-of-the-art decision tree classifiers such as SPRINT, ScalParC is suited for handling large datasets. We show that existing parallel formulation of SPRINT is unscalable, whereas ScalParC is shown to be scalable in both runtime and memory requirements. We present the experimental results of classifying up to 6.4 million records on up to 128 processors of Cray T3D, in order to demonstrate the scalable behavior of ScalParC. A key component of ScalParC is the parallel hash table. The proposed parallel hashing paradigm can be used to parallelize other algorithms that require many concurrent updates to a large hash table
Keywords
Cray computers; classification; database theory; knowledge acquisition; parallel algorithms; trees (mathematics); very large databases; Cray T3D; SPRINT; ScalParC; Scalable Parallel Classifier; concurrent updates; data mining; decision tree; large datasets; large hash table; memory requirements; parallel classification algorithm; parallel hash table; run-time; scalable algorithm; Classification algorithms; Classification tree analysis; Computer science; Contracts; Data mining; Decision trees; High performance computing; Military computing; Runtime; Sorting;
fLanguage
English
Publisher
ieee
Conference_Titel
Parallel Processing Symposium, 1998. IPPS/SPDP 1998. Proceedings of the First Merged International ... and Symposium on Parallel and Distributed Processing 1998
Conference_Location
Orlando, FL
ISSN
1063-7133
Print_ISBN
0-8186-8404-6
Type
conf
DOI
10.1109/IPPS.1998.669983
Filename
669983
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