Selecting Efficient and Reliable Preservation Strategies

Author:

Altman Micah,Landau Richard

Abstract

This article addresses the problem of formulating efficient and reliable operational preservation policies that ensure bit-level information integrity over long periods, and in the presence of a diverse range of real-world technical, legal, organizational, and economic threats. We develop a systematic, quantitative prediction framework that combines formal modeling, discrete-event-based simulation, hierarchical modeling, And then use empirically calibrated sensitivity analysis to identify effective strategies. Specifically, the framework formally defines an objective function for preservation that maps a set of preservation policies and a risk profile to a set of preservation costs, and an expected collection loss distribution. In this framework, a curator’s objective is to select optimal policies that minimize expected loss subject to their budget constraint. To estimate preservation loss under different policy conditions optimal policies, we develop a statistical hierarchical risk model – that statistically four sources of risk: the storage hardware; the physical environment; the curating institution; and the global environment. We then employ a general discrete event-based simulation framework to evaluate the expected loss and cost of employing varying preservation strategies under specific parameterization of risks. The framework offers flexibility for the modeling of a wide range of preservation policies and threats. Since this framework is open source, and easily deployed in a cloud computing environment, it can be used to produce analysis based on independent estimates of scenario-specific costs, reliability, and risks. We present results summarizing hundreds of thousands of simulations using this framework. This analysis points to a number of robust and broadly applicable preservation strategies, provides novel insights into specific preservation tactics, and provides evidence that challenges received wisdom.

Publisher

Edinburgh University Library

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. On the Long-term Archiving of Research Data;Neuroinformatics;2023-02-01

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