English

Exemplar Auditing for Multi-Label Biomedical Text Classification

Computation and Language 2020-04-08 v1

Abstract

Many practical applications of AI in medicine consist of semi-supervised discovery: The investigator aims to identify features of interest at a resolution more fine-grained than that of the available human labels. This is often the scenario faced in healthcare applications as coarse, high-level labels (e.g., billing codes) are often the only sources that are readily available. These challenges are compounded for modalities such as text, where the feature space is very high-dimensional, and often contains considerable amounts of noise. In this work, we generalize a recently proposed zero-shot sequence labeling method, "binary labeling via a convolutional decomposition", to the case where the available document-level human labels are themselves relatively high-dimensional. The approach yields classification with "introspection", relating the fine-grained features of an inference-time prediction to their nearest neighbors from the training set, under the model. The approach is effective, yet parsimonious, as demonstrated on a well-studied MIMIC-III multi-label classification task of electronic health record data, and is useful as a tool for organizing the analysis of neural model predictions and high-dimensional datasets. Our proposed approach yields both a competitively effective classification model and an interrogation mechanism to aid healthcare workers in understanding the salient features that drive the model's predictions.

Keywords

Cite

@article{arxiv.2004.03093,
  title  = {Exemplar Auditing for Multi-Label Biomedical Text Classification},
  author = {Allen Schmaltz and Andrew Beam},
  journal= {arXiv preprint arXiv:2004.03093},
  year   = {2020}
}

Comments

22 pages, 8 tables

R2 v1 2026-06-23T14:42:07.292Z