Welcome to D
SIGMOD 2005
PODS 2005
SIGMOD-RECOR
CIDR 2005
CIKM 2005
COMAD 2005
CVDB 2005
DaMoN 2005
Data Enginee
DEBS05
DMSN 2005
DOLAP 2005
GIR 2005
GIS 2005
Hypertext 20
ICDE 2005
ICDM 2005
IHIS 2005
IQIS 2005
JCDL 2005
KRAS 2005
MDM 2005
MIR 2005
MobiDE 2005
P2PIR 2005
RIDE 2005
SBBD 2005
SIGIR 2005
SIGIR-FORUM
SIGKDD 2005
SIGKDD-EXP
SSDBM 2005
TIME 2005
TKDE 2005
<<< = TKDE'05 Pape>>>
TODS 2005
VLDB 2005
VLDBJ 2005
WebDB 2005
WIDM 2005

Toward intelligent assistance for a data mining process: an ontology-based approach for cost-sensitive classification


Abraham Bernstein, Foster J. Provost, and Shawndra Hill

  View Paper (PDF)  

Return to April 2005, Volume 17, Issue 4


Abstract

A data mining (DM) process involves multiple stages. A simple, but typical, process might include preprocessing data, applying a data mining algorithm, and postprocessing the mining results. There are many possible choices for each stage, and only some combinations are valid. Because of the large space and nontrivial interactions, both novices and data mining specialists need assistance in composing and selecting DM processes. Extending notions developed for statistical expert systems we present a prototype intelligent discovery assistant (IDA), which provides users with 1) systematic enumerations of valid DM processes, in order that important, potentially fruitful options are not overlooked, and 2) effective rankings of these valid processes by different criteria, to facilitate the choice of DM processes to execute. We use the prototype to show that an IDA can indeed provide useful enumerations and effective rankings in the context of simple classification processes. We discuss how an IDA could be an important tool for knowledge sharing among a team of data miners. Finally, we illustrate the claims with a demonstration of cost-sensitive classification using a more complicated process and data from the 1998 KDDCUP competition.


©2006 Association for Computing Machinery