Inductive Conformal Prediction under Data Scarcity: Exploring the Impacts of Nonconformity Measures
Yuko Kato, David M.J. Tax, Marco Loog

TL;DR
This paper investigates how different nonconformity measures affect the performance of inductive conformal prediction in small datasets, highlighting the importance of measure selection based on data characteristics.
Contribution
It systematically evaluates various nonconformity measures in conformal prediction under data scarcity, providing insights into their relative effectiveness and influencing factors.
Findings
No single nonconformity measure consistently outperforms others.
Dataset size increase does not always enhance efficiency.
Data characteristics heavily influence measure effectiveness.
Abstract
Conformal prediction, which makes no distributional assumptions about the data, has emerged as a powerful and reliable approach to uncertainty quantification in practical applications. The nonconformity measure used in conformal prediction quantifies how a test sample differs from the training data and the effectiveness of a conformal prediction interval may depend heavily on the precise measure employed. The impact of this choice has, however, not been widely explored, especially when dealing with limited amounts of data. The primary objective of this study is to evaluate the performance of various nonconformity measures (absolute error-based, normalized absolute error-based, and quantile-based measures) in terms of validity and efficiency when used in inductive conformal prediction. The focus is on small datasets, which is still a common setting in many real-world applications. Using…
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Taxonomy
TopicsNeural Networks and Applications
MethodsFocus
