A tree-based formalization proves complementarity is attainable in multi-agent regression but obstructed in classification under endpoint-monotone losses.
Investigating Human + Machine Complementarity for Recidivism Predictions
3 Pith papers cite this work. Polarity classification is still indexing.
abstract
When might human input help (or not) when assessing risk in fairness domains? Dressel and Farid (2018) asked Mechanical Turk workers to evaluate a subset of defendants in the ProPublica COMPAS data for risk of recidivism, and concluded that COMPAS predictions were no more accurate or fair than predictions made by humans. We delve deeper into this claim to explore differences in human and algorithmic decision making. We construct a Human Risk Score based on the predictions made by multiple Turk workers, characterize the features that determine agreement and disagreement between COMPAS and Human Scores, and construct hybrid Human+Machine models to predict recidivism. Our key finding is that on this data set, Human and COMPAS decision making differed, but not in ways that could be leveraged to significantly improve ground-truth prediction. We present the results of our analyses and suggestions for data collection best practices to leverage complementary strengths of human and machines in the fairness domain.
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Complementarity in human-AI teams serves as evidence of epistemic reliability within a justificatory framework rather than acting as a standalone post-hoc accuracy metric.
Proposes a taxonomy of Hybrid Decision Making Systems as a conceptual and technical framework for modeling human-machine interaction in machine learning literature.
citing papers explorer
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Tree-Based Formalization of Multi-Agent Complementarity in Human-AI Interactions
A tree-based formalization proves complementarity is attainable in multi-agent regression but obstructed in classification under endpoint-monotone losses.
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Epistemology gives a Future to Complementarity in Human-AI Interactions
Complementarity in human-AI teams serves as evidence of epistemic reliability within a justificatory framework rather than acting as a standalone post-hoc accuracy metric.