This paper focuses on the discovery of surprising, unexpected patterns, based on a data mining method that consists of detecting instances of Simpson’s paradox. By its very nature, instances of this Paradox tend to be surprising to the user. Previous work in the literature has proposed an algorithm for discovering instances of that paradox, but it addressed only “flat ” data stored in a single relation. This work proposes a novel algorithm that considerably extends that previous work, by discovering instances of Simpson’s paradox in hierarchical multidimensional data – the kind of data typically found in data warehouse and OLAP environments. Hence, the proposed algorithm can be regarded as integrating the areas of data mining and data wareh...
We consider a model in which background knowledge on a given domain of interest is available in term...
Association rules have become an important paradigm in knowledge discovery. Nevertheless, the huge n...
Simpson\u27s paradox is a phenomenon arising from multivariate statistical analyses that often leads...
This paper proposes to integrate two very different kinds of methods for data mining, namely the con...
We describe a data-driven discovery method that leverages Simpson's paradox to uncover interesting p...
This work is aimed at finding potential Simpson’s paradoxes in Big Data. Simpson’s paradox (SP) aris...
© 2009 Dr. Yen-Ting KuoFrom the perspective of an end-user, patterns derived during the data mining ...
We consider the problem of discovering descriptive models of large, multidimensional datasets contai...
Several pattern discovery methods proposed in the data mining literature have the drawbacks that the...
We present a new technique for interactively mining patterns and generating explanations by harnessi...
This work is aimed at finding potential Simpson´s paradoxes in Big Data. Simpson´s paradox (SP) aris...
In this paper, we focus on mining surprising periodic patterns in a sequence of events. In many appl...
Organizations are taking advantage of "data-mining" techniques to leverage the vast amounts of data ...
The direction of an association at the population-level may be reversed within the subgroups compris...
Abstract. There has been much attention given recently to the task of finding interesting patterns i...
We consider a model in which background knowledge on a given domain of interest is available in term...
Association rules have become an important paradigm in knowledge discovery. Nevertheless, the huge n...
Simpson\u27s paradox is a phenomenon arising from multivariate statistical analyses that often leads...
This paper proposes to integrate two very different kinds of methods for data mining, namely the con...
We describe a data-driven discovery method that leverages Simpson's paradox to uncover interesting p...
This work is aimed at finding potential Simpson’s paradoxes in Big Data. Simpson’s paradox (SP) aris...
© 2009 Dr. Yen-Ting KuoFrom the perspective of an end-user, patterns derived during the data mining ...
We consider the problem of discovering descriptive models of large, multidimensional datasets contai...
Several pattern discovery methods proposed in the data mining literature have the drawbacks that the...
We present a new technique for interactively mining patterns and generating explanations by harnessi...
This work is aimed at finding potential Simpson´s paradoxes in Big Data. Simpson´s paradox (SP) aris...
In this paper, we focus on mining surprising periodic patterns in a sequence of events. In many appl...
Organizations are taking advantage of "data-mining" techniques to leverage the vast amounts of data ...
The direction of an association at the population-level may be reversed within the subgroups compris...
Abstract. There has been much attention given recently to the task of finding interesting patterns i...
We consider a model in which background knowledge on a given domain of interest is available in term...
Association rules have become an important paradigm in knowledge discovery. Nevertheless, the huge n...
Simpson\u27s paradox is a phenomenon arising from multivariate statistical analyses that often leads...