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arXiv 提交日期: 2026-06-22
📄 Abstract - From numerical proportions to analogical proportions between probabilities

Analogical proportions link four items a, b, c, d by a relation stating that ``a is to b as c is to d", a, b, c, d being the formal representation of real world entities, ranging from simple numerical values to more complex structures such as profiles. Accordingly, $a, b, c, d$ could be atomic values like Boolean, nominal or numerical values, more generally vectors of such values, or even families of items represented by logical formulas. In this paper, we consider another representation setting, which is the probabilistic one. Precisely, the article proposes a study of {analogical} proportions between probabilities, whether they are simply between probability values, or between distributions (which requires the preservation of their normalization). More particularly, we study the properties of definitions based on arithmetic proportion, or on a combination of the former with geometric proportion, while other options are also discussed. Previous works have shown that when four profiles a, b, c, d, represented as vectors, form analogical proportions componentwise, it is likely that their classes form an analogical proportion also. This is the basis of an analogical proportion-based classification method that can produce accurate predictions. Similarly, in this paper, each profile is associated with a distribution describing the frequencies of the possible values of a discrete attribute of interest. We then discuss and experimentally investigate if the distributions associated to four profiles forming an analogical proportion themselves also form an analogical proportion.

顶级标签: machine learning theory model evaluation
详细标签: analogical reasoning probabilistic proportions classification distribution preservation analogical proportion 或 搜索:

从数值比例到概率之间的类比比例 / From numerical proportions to analogical proportions between probabilities


1️⃣ 一句话总结

本文研究了如何将类比比例这一概念从简单的数值或向量扩展到概率值以及概率分布,并通过实验验证了当四个数据对象的分布构成类比关系时,其对应类别也往往满足类似的类比模式,从而为基于类比的分类方法提供了新的理论支撑。

源自 arXiv: 2606.23029