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Subjective Interestingness in Exploratory Data Mining

机译:探索性数据挖掘的主观兴趣

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Exploratory data mining has as its aim to assist a user in improving their understanding about the data. Considering this aim, it seems self-evident that in optimizing this process the data as well as the user need to be considered. Yet, the vast majority of exploratory data mining methods (including most methods for clustering, itemset and association rule mining, subgroup discovery, dimensionality reduction, etc) formalize interestingness of patterns in an objective manner, disregarding the user altogether. More often than not this leads to subjectively uninteresting patterns being reported. Here I will discuss a general mathematical framework for formalizing interestingness in a subjective manner. I will further demonstrate how it can be successfully instantiated for a variety of exploratory data mining problems. Finally, I will highlight some connections to other work, and outline some of the challenges and research opportunities ahead.
机译:探索性数据挖掘旨在帮助用户提高他们对数据的理解。考虑到这一目标,似乎是不言而喻的,在优化这一过程时,需要考虑数据以及用户。然而,绝大多数探索性数据挖掘方法(包括大多数聚类,项目集和关联规则挖掘,亚组发现,维度减少等)以客观方式形式化模式的有趣性,无视用户。通常不会导致主观的不感兴趣的模式。在这里,我将以主观的方式讨论用于正式化有趣的一般数学框架。我将进一步展示如何为各种探索数据挖掘问题成功实施。最后,我将突出一些与其他工作的联系,并概述了一些挑战和研究机会。

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