Litcius/Paper detail

Characterizing Structural Regularities of Labeled Data in Overparameterized Models

Ziheng Jiang, Chiyuan Zhang, Kunal Talwar, Michael C. Mozer

2021International Conference on Machine Learning23 citations

Abstract

Humans are accustomed to environments that contain both regularities and exceptions. For example, at most gas stations, one pays prior to pumping, but the occasional rural station does not accept payment in advance. Likewise, deep neural networks can generalize across instances that share common patterns or structures yet have the capacity to memorize rare or irregular forms. We analyze how individual instances are treated by a model via a consistency score. The score characterizes the expected accuracy for a held-out instance given training sets of varying size sampled from the data distribution. We obtain empirical estimates of this score for individual instances in multiple data-sets, and we show that the score identifies out-of-distribution and mislabeled examples at one end of the continuum and strongly regular examples at the other end. We identify computationally inexpensive proxies to the consistency score using statistics collected during training. We apply the score toward understanding the dynamics of representation learning and to filter outliers during training, and we discuss other potential applications including curriculum learning and active data collection.

Topics & Concepts

OutlierConsistency (knowledge bases)Computer scienceArtificial intelligenceMachine learningFilter (signal processing)Representation (politics)Artificial neural networkData miningPoliticsComputer visionLawPolitical scienceMachine Learning and Data ClassificationModel Reduction and Neural NetworksMachine Learning and Algorithms