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An algebraic approach to data mining: some examples

机译:数据挖掘的代数方法:一些示例

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We introduce an algebraic approach to the foundations of data mining. Our approach is based upon two algebras of functions defined over a common state space X and a pairing between them. One algebra is an algebra of state space observations, and the other is an algebra of labeled sets of states. We interpret H as the algebraic encoding of the data and the pairing as the misclassification rate when the classifier f is applied to the set of states X. We give a realization theorem giving conditions on formal series of data sets built from D that imply there is a realization involving a state space X, a classifier f ∈ R and a set of labeled states χ ∈ R0 that yield this series.
机译:我们为数据挖掘的基础介绍了一种代数方法。我们的方法基于在公共状态空间X上定义的两个函数代数以及它们之间的配对。一个代数是状态空间观测的代数,另一个是标记状态集的代数。当将分类器f应用于状态X时,我们将H解释为数据的代数编码,将配对解释为误分类率。我们给出了一个实现定理,给出了从D构造的正式数据集上的条件,这意味着存在一个涉及状态空间X,分类器f∈R和一组标记状态χ∈R 0 的实现的实现,这些状态产生了这个系列。

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