Working Paper 2024-008, Human Capital and Economic Opportunity Working Group, University of Chicago.
ISSN/ISBN: Not available at this time. DOI: Not available at this time.
Abstract: In this study we develop measures of the potential value of information with an emphasis on observed information - data. Though value is a relative concept, developing approximate and applicable measures is essential. Such a measure (or set of measures) allows us to evaluate the potential value of public and privately available datasets, and the value of accessing each. There are several benefits to having such measures. First, providers of data can perform a cost-benefit analysis. Second, policy makers can better determine the benefits of different data when deciding whether to invest in its collection, production and release. The proposed measures are derived from information-theoretic principles as well as other statistics, in conjunction with relative measures based on semantic arguments. These measures are functions of attributes that can be aggregated into three basic blocks: (i) data reliability, integrity and accuracy, (ii) data quality, and (iii) potential value. We provide detailed empirical examples applying these measures to three data sets, each of which is different in context, size and complexity.
Bibtex:
@TechReport{,
author={Amos Golan and Spiro Stefanou},
title={{Potential Value of Data and Free Access to Data}},
year=2024,
month=Apr,
institution={Human Capital and Economic Opportunity Working Group},
type={Working Papers},
url={https://ideas.repec.org/p/hka/wpaper/2024-008.html},
number={2024-008},
keywords={benford's law; compressibility; condition number; mutual information; potential value; relative entr},
doi={},
}
Reference Type: Technical Report
Subject Area(s): Applied Mathematics, Economics