A Conjugate Property between Loss Functions and Uncertainty Sets in Classification Problems
Takafumi Kanamori, Akiko Takeda, Taiji Suzuki

TL;DR
This paper explores the relationship between loss functions and uncertainty sets in binary classification, revealing that uncertainty sets can be characterized by the conjugate of loss functions, and studies their statistical properties.
Contribution
It establishes a conjugate property linking loss functions and uncertainty sets, providing new insights into their theoretical relationship and statistical analysis in classification.
Findings
Uncertainty sets are described by the level set of the conjugate of the loss function.
The paper provides a theoretical foundation connecting loss functions with uncertainty sets.
Statistical properties of algorithms using uncertainty sets are analyzed.
Abstract
In binary classification problems, mainly two approaches have been proposed; one is loss function approach and the other is uncertainty set approach. The loss function approach is applied to major learning algorithms such as support vector machine (SVM) and boosting methods. The loss function represents the penalty of the decision function on the training samples. In the learning algorithm, the empirical mean of the loss function is minimized to obtain the classifier. Against a backdrop of the development of mathematical programming, nowadays learning algorithms based on loss functions are widely applied to real-world data analysis. In addition, statistical properties of such learning algorithms are well-understood based on a lots of theoretical works. On the other hand, the learning method using the so-called uncertainty set is used in hard-margin SVM, mini-max probability machine…
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Taxonomy
TopicsMachine Learning and Algorithms · Face and Expression Recognition · Advanced Statistical Methods and Models
