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Total Loss Functions for Measuring the Accuracy of Nonnegative Cross-Sectional Predictions (2507.15136v1)

Published 20 Jul 2025 in stat.ME, math.ST, and stat.TH

Abstract: The total loss function associated with a set of cross-sectional predictions, that is, estimates or forecasts, summarizes the set's overall accuracy. Its arguments are the individual cross-sectional units' loss functions. Under general assumptions, including impartiality, about the forms of the individual loss functions, and the specific assumptions that the total loss function is anonymous and monotonic, only the additive, multiplicative and L-type (with restrictions) total loss functions are found to be admissible. The first two total loss functions correspond to different interpretations of economic utility. An isomorphism exists between these two total loss functions. Thus, the additive total loss function can always be used. This isomorphism can also be used to explore the properties of various combinations of total and individual loss functions. Moreover, the additive loss function obeys the von Neumann-Morgenstern expected utility axioms.

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