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31 January 2026

Insuring Algorithmic Operations: Liability Risk, Pricing, and Risk Control

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1
Scott College of Business, Indiana State University, Terre Haute, IN 47809, USA
2
AI Safety Lab, Bailey College of Technology & Engineering, Indiana State University, Terre Haute, IN 47809, USA
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Author to whom correspondence should be addressed.
Risks2026, 14(2), 26;https://doi.org/10.3390/risks14020026 
(registering DOI)
This article belongs to the Special Issue AI for Financial Risk Perception

Abstract

Businesses increasingly rely on algorithmic systems and machine learning models to make operational decisions about customers, employees, and counterparties. These “algorithmic operations” can improve efficiency but also concentrate liability in a small number of technically complex, drifting models. Algorithmic operations liability (AOL) risk arises when these systems generate legally cognizable harm. We develop a simple taxonomy of AOL risk sources: model error and bias, data quality failures, distribution shift and concept drift, miscalibration, machine learning operations (MLOps) and integration failures, governance gaps, and ecosystem-level externalities. Building on this taxonomy, we outline a simple analysis of AOL risk pricing using some basic actuarial building blocks: (i) a confusion-matrix-based expected-loss model for false positives and false negatives; (ii) drift-adjusted error rates and stress scenarios; and (iii) credibility-weighted rates when insureds have limited experience data. We then introduce capital and loss surcharges that incorporate distributional uncertainty and tail risk. Finally, we link the framework to AOL risk controls by identifying governance, documentation, model-monitoring, and MLOps practices that both reduce loss frequency and severity and serve as underwriting prerequisites.

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