Combinatorial Testing Metrics for Machine Learning
Erin Lanus, Laura Freeman, D. Richard Kuhn, Raghu N. Kacker
Abstract
This paper defines a set difference metric for comparing machine learning (ML) datasets and proposes the difference between datasets be a function of combinatorial coverage. We illustrate its utility for evaluating and predicting performance of ML models. Identifying and measuring differences between datasets is of significant value for ML problems, where the accuracy of the model is heavily dependent on the degree to which training data are sufficiently representative of data encountered in application. The method is illustrated for transfer learning without retraining, the problem of predicting performance of a model trained on one dataset and applied to another.
Topics & Concepts
RetrainingComputer scienceMetric (unit)Machine learningArtificial intelligenceSet (abstract data type)Transfer of learningFunction (biology)Training setData setData miningEngineeringBiologyProgramming languageEvolutionary biologyInternational tradeOperations managementBusinessMachine Learning and Data ClassificationMachine Learning and AlgorithmsBayesian Modeling and Causal Inference