
TL;DR
This paper surveys ratio-based loss functions in machine learning, analyzing their properties and proposing new variants, to facilitate future research without focusing on specific algorithms.
Contribution
It systematically investigates properties of ratio-based loss functions and introduces new loss functions for potential future research.
Findings
Analyzed continuity, Lipschitz-continuity, convexity, and differentiability of ratio-based loss functions.
Proposed new ratio-based loss functions for regression and classification tasks.
Provided a foundation for future research on algorithm-specific properties of these loss functions.
Abstract
Algorithms in machine learning and AI do critically depend on at least three key components: (i) the risk function, which is the expectation of the loss function, (ii) the function space, which is often called the hypothesis space, and (iii) the set of probability measures, which are allowed for the specified algorithm. This paper gives a survey of a certain class of loss functions, which we call ratio-based. In supervised learning, margin-based loss functions for classification tasks depending on the product of the output values and the predictions as well as distance-based loss functions depending on the difference of and for regression are common. Distance-based loss functions are in particular useful, if an additive model assumption seems plausible, i.e. the common signal plus noise assumption. However, in the literature, several loss functions proposed…
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