4.8 Article

Machine Learning With the Sugeno Integral: The Case of Binary Classification

期刊

IEEE TRANSACTIONS ON FUZZY SYSTEMS
卷 29, 期 12, 页码 3723-3733

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TFUZZ.2020.3026144

关键词

Aggregation; binary classification; machine learning; nonadditive measures; Sugeno integral

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This article discusses the application of the Sugeno integral in machine learning, proposing a method for binary classification that is particularly suitable for learning from ordinal data. By developing an algorithm based on linear programming, the approach involves transforming local evaluations and tuning global evaluation thresholds.
In this article, we elaborate on the use of the Sugeno integral in the context of machine learning. More specifically, we propose a method for binary classification, in which the Sugeno integral is used as an aggregation function that combines several local evaluations of an instance, pertaining to different features, or measurements, into a single global evaluation. Due to the specific nature of the Sugeno integral, this approach is especially suitable for learning from ordinal data, i.e., when measurements are taken from ordinal scales. This is a topic that has not received much attention in machine learning so far. The core of the learning problem itself consists of identifying the capacity underlying the Sugeno integral. To tackle this problem, we develop an algorithm based on linear programming. The algorithm also includes a suitable technique for transforming the original feature values into local evaluations (local utility scores), as well as a method for tuning a threshold on the global evaluation. To control the flexibility of the classifier and mitigate the problem of overfitting the training data, we generalize our approach toward k-maxitive capacities, where k plays the role of a hyperparameter of the learner. We present experimental studies, in which we compare our method with competing approaches on several benchmark datasets.

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