沃尔多在哪里?量化营销应用中隐私与效用权衡的框架

IF 5.9 2区 管理学 Q1 BUSINESS
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引用次数: 0

摘要

企业可以依靠各种数据保护方法来遵守《一般数据保护条例》(GDPR)的匿名化指令。我们开发了一种隐私攻击来估计客户的隐私风险,并发现实际中常用的数据保护方法并不能提供可靠的隐私保护保证。因此,我们开发了一个框架,描述了如何利用深度学习生成既(有区别地)保护隐私又对营销分析师有用的合成数据。在实证方面,我们将我们的框架应用于两个隐私敏感的营销应用中,在这两个应用中,分析师面临着日常的管理实践。与 GDPR 关于尽量减少数据收集的指令相反,我们表明,客户的隐私风险可以通过融入人群来降低:这就是 "Where's Waldo "效应。我们的框架提供了一种具有正式隐私保证的数据保护方法,使分析人员能够量化、控制隐私风险水平,并与利益相关者进行沟通,得出有意义的见解,并在符合隐私法规的情况下共享数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Where’s Waldo? A framework for quantifying the privacy-utility trade-off in marketing applications

Firms can rely on various data protection methods to comply with the General Data Protection Regulation’s (GDPR) anonymization directive. We develop a privacy attack to estimate customers’ privacy risk and find that data protection methods commonly used in practice do not offer a reliable guarantee of privacy protection. We therefore develop a framework that describes the use of deep learning to generate synthetic data that are both (differentially) private, and useful for marketing analysts. Empirically, we apply our framework to two privacy-sensitive marketing applications in which an analyst is faced with everyday managerial practices. In contrast to GDPR’s directive to minimize data collection, we show that customers’ privacy risk can be reduced by blending into a large crowd: a “Where’s Waldo” effect. Our framework provides a data protection method with a formal privacy guarantee and allows analysts to quantify, control, and communicate privacy risk levels with stakeholders, draw meaningful insights, and share data even under privacy regulations.

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来源期刊
CiteScore
11.80
自引率
4.30%
发文量
77
审稿时长
66 days
期刊介绍: The International Journal of Research in Marketing is an international, double-blind peer-reviewed journal for marketing academics and practitioners. Building on a great tradition of global marketing scholarship, IJRM aims to contribute substantially to the field of marketing research by providing a high-quality medium for the dissemination of new marketing knowledge and methods. Among IJRM targeted audience are marketing scholars, practitioners (e.g., marketing research and consulting professionals) and other interested groups and individuals.
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