Frontiers: Digital Hermits

As firms accumulate more data, users’ data-sharing decisions may polarize. Some users may share all data, whereas others may share no data, becoming “digital hermits.” When users share multidimensional data about themselves with a firm, the firm learns about the correlations between different dimens...

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Veröffentlicht in:Marketing science (Providence, R.I.) R.I.), 2024-07, Vol.43 (4), p.697-708
Hauptverfasser: Miklós-Thal, Jeanine, Goldfarb, Avi, Haviv, Avery, Tucker, Catherine
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container_title Marketing science (Providence, R.I.)
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creator Miklós-Thal, Jeanine
Goldfarb, Avi
Haviv, Avery
Tucker, Catherine
description As firms accumulate more data, users’ data-sharing decisions may polarize. Some users may share all data, whereas others may share no data, becoming “digital hermits.” When users share multidimensional data about themselves with a firm, the firm learns about the correlations between different dimensions of user data. We incorporate this type of learning into a model of a data market in which a firm acquires data from users with privacy concerns. Each user can share no data, only nonsensitive data, or their full data with the firm. As the firm collects more data and becomes better at drawing inferences about a user’s privacy-sensitive data from their nonsensitive data, the share of new users who share no data (“digital hermits”) grows. This growth of digital hermits occurs even though the firm offers higher compensation for a user’s nonsensitive data and a user’s full data as its ability to draw inferences improves. At the same time, the share of new users who share their full data also grows. The model thus predicts a polarization of users’ data-sharing choices away from nonsensitive data sharing to no sharing and full sharing. Our model suggests that recent privacy policies, which are focused on control of data rather than inferences, may be misplaced. History: Anthony Dukes served as the senior editor. This paper was accepted through the Marketing Science : Frontiers review process. Funding: Partial financial support was received from the Social Sciences and Humanities Research Council of Canada [Grant 435-2023-0492].
doi_str_mv 10.1287/mksc.2023.0612
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subjects Compensation
data
Data integrity
Datasets
digital markets
game theory
Inference
Information sharing
microeconomics
Personal information
Polarization
prediction
Privacy
title Frontiers: Digital Hermits
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