The Quest Data mining System

作者: Ramakrishnan Srikant , John Shafer , Toni Bollinger , Andreas Arning , Rakesh Agrawal

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摘要: The goal of the Quest project at IBM Almaden Research center is to develop technology enable a new breed data-intensive decision-support applications. This paper capsule summary current functionality and architecture data mining System. Our overall approach has been identify basic operations that cut across applications fast, scalable algorithms for their execution (Agrawal, Imielinski, & Swami 1993a). We wanted our to:

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