Toward a Principled Framework for Disclosure Avoidance
Michael B Hawes, Evan M Brassell, Anthony Caruso, Ryan Cumings-Menon, Jason Devine, Cassandra Dorius, David Evans, Kenneth Haase, Michele C Hedrick, Alexandra Krause, Philip Leclerc, James Livsey, Rolando A Rodriguez, Luke T Rogers, Matthew Spence, Victoria Velkoff

TL;DR
This paper proposes a structured framework for evaluating and designing disclosure avoidance systems, helping agencies balance risk mitigation, legal, scientific, and stakeholder needs through iterative, adaptable decision-making.
Contribution
It introduces a principled framework to distinguish inherent system features from implementation choices, facilitating adaptable and effective disclosure avoidance strategies.
Findings
Framework clarifies inherent features versus implementation decisions.
Supports iterative adaptation to legal, scientific, and stakeholder requirements.
Enhances flexibility and efficiency in designing disclosure avoidance systems.
Abstract
Responsible disclosure limitation is an iterative exercise in risk assessment and mitigation. From time to time, as disclosure risks grow and evolve and as data users' needs change, agencies must consider redesigning the disclosure avoidance system(s) they use. Discussions about candidate systems often conflate inherent features of those systems with implementation decisions independent of those systems. For example, a system's ability to calibrate the strength of protection to suit the underlying disclosure risk of the data (e.g., by varying suppression thresholds), is a worthwhile feature regardless of the independent decision about how much protection is actually necessary. Having a principled discussion of candidate disclosure avoidance systems requires a framework for distinguishing these inherent features of the systems from the implementation decisions that need to be made…
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Taxonomy
TopicsWater Quality and Resources Studies · Auditing, Earnings Management, Governance · Privacy-Preserving Technologies in Data
