Data-SUITE: Data-centric identification of in-distribution incongruous examples

02/17/2022
by   Nabeel Seedat, et al.
5

Systematic quantification of data quality is critical for consistent model performance. Prior works have focused on out-of-distribution data. Instead, we tackle an understudied yet equally important problem of characterizing incongruous regions of in-distribution (ID) data, which may arise from feature space heterogeneity. To this end, we propose a paradigm shift with Data-SUITE: a data-centric framework to identify these regions, independent of a task-specific model. DATA-SUITE leverages copula modeling, representation learning, and conformal prediction to build feature-wise confidence interval estimators based on a set of training instances. These estimators can be used to evaluate the congruence of test instances with respect to the training set, to answer two practically useful questions: (1) which test instances will be reliably predicted by a model trained with the training instances? and (2) can we identify incongruous regions of the feature space so that data owners understand the data's limitations or guide future data collection? We empirically validate Data-SUITE's performance and coverage guarantees and demonstrate on cross-site medical data, biased data, and data with concept drift, that Data-SUITE best identifies ID regions where a downstream model may be reliable (independent of said model). We also illustrate how these identified regions can provide insights into datasets and highlight their limitations.

READ FULL TEXT

page 14

page 35

research
05/31/2023

Assessing the Generalizability of a Performance Predictive Model

A key component of automated algorithm selection and configuration, whic...
research
06/01/2023

Estimating Semantic Similarity between In-Domain and Out-of-Domain Samples

Prior work typically describes out-of-domain (OOD) or out-of-distributio...
research
01/25/2022

Identifying a Training-Set Attack's Target Using Renormalized Influence Estimation

Targeted training-set attacks inject malicious instances into the traini...
research
07/18/2022

Calibrated ensembles can mitigate accuracy tradeoffs under distribution shift

We often see undesirable tradeoffs in robust machine learning where out-...
research
11/17/2022

Data-Centric Debugging: mitigating model failures via targeted data collection

Deep neural networks can be unreliable in the real world when the traini...
research
05/19/2023

SFP: Spurious Feature-targeted Pruning for Out-of-Distribution Generalization

Model substructure learning aims to find an invariant network substructu...
research
06/20/2019

A Segmentation-Oriented Inter-Class Transfer Method: Application to Retinal Vessel Segmentation

Retinal vessel segmentation, as a principal nonintrusive diagnose method...

Please sign up or login with your details

Forgot password? Click here to reset