Probabilistic Safety Regions via Finite Families of Adjustable Classifiers

被引:0
作者
Carlevaro, Alberto [1 ,2 ]
Alamo, Teodoro [3 ]
Dabbene, Fabrizio [1 ]
Mongelli, Maurizio
机构
[1] Ist Elettron & Ingn Informaz & Telecomunicazioni, CNR, I-00185 Rome, Italy
[2] Univ Genoa, Dept Elect Elect & Telecommun Engn & Naval Archite, I-16145 Genoa, Italy
[3] Univ Seville, Escuela Super Ingn, Dept Ingn Sistemas & Automat, Seville 41020, Spain
关键词
Probabilistic logic; Safety; Error correction; Predictive models; Vectors; Robustness; Uncertainty; Data models; Computational modeling; Classification algorithms; Adjustable classifiers (ACs); misclassification error control; probabilistic safety regions (PSRs); CONFORMAL PREDICTION; QUANTIFICATION; CLASSIFICATION; ERROR; SMOTE;
D O I
10.1109/TNNLS.2025.3568174
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The supervised classification recognizes patterns in the data to separate classes of behaviors. Canonical solutions contain misclassification errors that are intrinsic to the numerical approximating nature of machine learning (ML). The data analyst may minimize the classification error on a class at the expense of increasing the error of the other classes. The error control of such a design phase is often done in a heuristic manner. In this article, it is key to develop theoretical foundations capable of providing probabilistic certifications to the obtained classifiers. In this perspective, we introduce the concept of probabilistic safety region to describe a subset of the input space in which the number of misclassified instances is probabilistically controlled. The notion of adjustable classifiers, a special class of classifiers that share the property of being controllable by a scalar parameter, is then exploited to link the tuning of ML with error control. Several tests and examples corroborate the approach. They are provided through the synthetic data in order to highlight all the steps involved, as well as notable benchmark datasets and a smart mobility application.
引用
收藏
页码:16198 / 16212
页数:15
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