Auditing for Human Expertise
Rohan Alur, Loren Laine, Darrick K. Li, Manish Raghavan, Devavrat, Shah, Dennis Shung

TL;DR
This paper introduces a statistical framework to test whether human experts provide unique, valuable insights beyond what algorithms can capture, using a hypothesis test based on independence conditioned on available features.
Contribution
The authors develop a novel hypothesis testing procedure to detect human expertise that is not explainable by available data, highlighting the potential for human-AI complementarity.
Findings
Physicians' decisions incorporate information not captured by standard algorithms.
Accuracy alone is insufficient to justify replacing human experts with algorithms.
The proposed test can identify when human expertise adds unique value.
Abstract
High-stakes prediction tasks (e.g., patient diagnosis) are often handled by trained human experts. A common source of concern about automation in these settings is that experts may exercise intuition that is difficult to model and/or have access to information (e.g., conversations with a patient) that is simply unavailable to a would-be algorithm. This raises a natural question whether human experts add value which could not be captured by an algorithmic predictor. We develop a statistical framework under which we can pose this question as a natural hypothesis test. Indeed, as our framework highlights, detecting human expertise is more subtle than simply comparing the accuracy of expert predictions to those made by a particular learning algorithm. Instead, we propose a simple procedure which tests whether expert predictions are statistically independent from the outcomes of interest…
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Taxonomy
TopicsMachine Learning in Healthcare · Explainable Artificial Intelligence (XAI) · Artificial Intelligence in Healthcare and Education
