The hybrid confirmation tree: A robust strategy for hybrid intelligence

Authors: Julian Berger, Pantelis P. Analytis, Frederik Andersen, Kristian P. Lorenzen, Ville Satopää, Ralf HJM Kurvers

Published: 2026-02-02 17:39:07+00:00

AI Summary

This paper introduces and evaluates the hybrid confirmation tree, a simple aggregation strategy for combining human and artificial intelligence decisions. It compares independent decisions of a human and an AI, with disagreements triggering a second human tiebreaker. Analytical and empirical results show it improves decision accuracy and reduces human input compared to human-only majority votes across diverse real-world datasets, while maintaining human agency.

Abstract

Combining human and artificial intelligence (AI) is a potentially powerful approach to boost decision accuracy. However, few such approaches exist that effectively integrate both types of intelligence while maintaining human agency. Here, we introduce and evaluate the hybrid confirmation tree, a simple aggregation strategy that compares the independent decisions of both a human and AI, with disagreements triggering a second human tiebreaker. Through analytical derivations, we show that the hybrid confirmation tree can match and exceed the accuracy of a three-person human majority vote while requiring fewer human inputs, particularly when AI accuracy is comparable to or exceeds human accuracy. We analytically demonstrate that the hybrid confirmation tree's ability to achieve complementarity -- outperforming individual humans, AI, and the majority vote -- is maximized when human and AI accuracies are similar and their decisions are not overly correlated. Empirical reanalysis of six real-world datasets (covering skin cancer diagnosis, deepfake detection, geopolitical forecasting, and criminal rearrest) validates these findings, showing that the hybrid confirmation tree improves accuracy over the majority vote by up to 10 percentage points while reducing the cost of decision making by 28--44$\\%$. Furthermore, the hybrid confirmation tree provides greater flexibility in navigating true and false positive trade-offs compared to fixed human-only heuristics like hierarchies and polyarchies. The hybrid confirmation tree emerges as a practical, efficient, and robust strategy for hybrid collective intelligence that maintains human agency.


Key findings
The hybrid confirmation tree consistently improved accuracy over a three-person human majority vote by up to 10 percentage points and reduced human decision-making costs by 28-44%. Its optimal performance, outperforming individual humans, AI, and majority votes, is achieved when human and AI accuracies are similar and their decisions are not overly correlated. The strategy also offers enhanced flexibility in navigating true and false positive trade-offs compared to fixed human-only heuristics.
Approach
The hybrid confirmation tree functions by first obtaining independent decisions from a human and an AI. If these decisions align, that outcome is accepted. If there is a disagreement, a second human is consulted to provide a tiebreaking decision, ensuring human oversight and reducing the overall human effort.
Datasets
Melanoma Classification Benchmark (dermoscopic and nondermoscopic images), Deepfake Detection Challenge, COMPAS dataset (criminal rearrest prediction), Hybrid Forecasting Competition, ForecastBench (geopolitical forecasting)
Model(s)
UNKNOWN
Author countries
Germany, Denmark