A constraint-based querying system for exploratory pattern discovery

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In this article we present ConQueSt, a constraint-based querying system able to support the intrinsically exploratory (i.e., human-guided, interactive and iterative) nature of pattern discovery. Following the inductive database vision, our framework provides users with an expressive constraint-based query language, which allows the discovery process to be effectively driven toward potentially interesting patterns. Such constraints are also exploited to reduce the cost of pattern mining computation. ConQueSt is a comprehensive mining system that can access real-world relational databases from which to extract data. Through the interaction with a friendly graphical user interface (GUI), the user can define complex mining queries by means of few clicks. After a pre-processing step, mining queries are answered by an efficient and robust pattern mining engine which entails the state-of-the-art of data and search space reduction techniques. Resulting patterns are then presented to the user in a pattern browsing window, and possibly stored back in the underlying database as relations.

论文关键词:Constrained pattern mining,Data mining systems,Inductive databases,Data mining query languages,Interactive data mining

论文评审过程:Received 16 July 2007, Revised 28 January 2008, Accepted 21 February 2008, Available online 7 March 2008.

论文官网地址:https://doi.org/10.1016/j.is.2008.02.007