TY - JOUR
T1 - Introducing “Inside” out of distribution
AU - Lazebnik, Teddy
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2026/6
Y1 - 2026/6
N2 - Detecting and understanding out-of-distribution (OOD) samples is crucial in machine learning (ML) to ensure reliable model performance. Current OOD studies primarily focus on extrapolatory (outside) OOD, neglecting potential cases of interpolatory (inside) OOD. In this study, we introduce a novel perspective on OOD by suggesting that it can be divided into inside and outside cases. We examine the inside–outside OOD profiles of datasets and their impact on ML model performance, using normalized root mean squared error (RMSE) and F1 score as the performance metrics on synthetically generated datasets with both inside and outside OOD. Our analysis demonstrates that different inside–outside OOD profiles lead to unique effects on ML model performance, with outside OOD generally causing greater performance degradation, on average. These findings highlight the importance of distinguishing between inside and outside OOD for developing effective counter-OOD methods.
AB - Detecting and understanding out-of-distribution (OOD) samples is crucial in machine learning (ML) to ensure reliable model performance. Current OOD studies primarily focus on extrapolatory (outside) OOD, neglecting potential cases of interpolatory (inside) OOD. In this study, we introduce a novel perspective on OOD by suggesting that it can be divided into inside and outside cases. We examine the inside–outside OOD profiles of datasets and their impact on ML model performance, using normalized root mean squared error (RMSE) and F1 score as the performance metrics on synthetically generated datasets with both inside and outside OOD. Our analysis demonstrates that different inside–outside OOD profiles lead to unique effects on ML model performance, with outside OOD generally causing greater performance degradation, on average. These findings highlight the importance of distinguishing between inside and outside OOD for developing effective counter-OOD methods.
KW - High-dimensional analysis
KW - Machine learning robustness
KW - Out-of-distribution profile
KW - Performance evaluation
UR - https://www.scopus.com/pages/publications/105023712156
U2 - 10.1007/s41060-025-00947-0
DO - 10.1007/s41060-025-00947-0
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AN - SCOPUS:105023712156
SN - 2364-415X
VL - 21
JO - International Journal of Data Science and Analytics
JF - International Journal of Data Science and Analytics
IS - 1
M1 - 43
ER -