Closure Operators: Complexity and Applications to Classification and Decision-making

Hamed Hamze Bajgiran, F. Echenique
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Abstract

We study the complexity of closure operators, with applications to machine learning and decision theory. In machine learning, closure operators emerge naturally in data classification and clustering. In decision theory, they can model equivalence of choice menus, and therefore situations with a preference for flexibility. Our contribution is to formulate a notion of complexity of closure operators, which translate into the complexity of a classifier in ML, or of a utility function in decision theory.
闭包操作符:复杂性及其在分类和决策中的应用
我们研究闭包算子的复杂性,并将其应用于机器学习和决策理论。在机器学习中,闭包运算符自然出现在数据分类和聚类中。在决策理论中,它们可以模拟选择菜单的等效性,因此可以模拟具有灵活性偏好的情况。我们的贡献是形成闭包操作符复杂性的概念,它转化为ML中分类器的复杂性,或决策理论中的效用函数的复杂性。
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