Designing Incentive Schemes for Privacy-Sensitive Users

Businesses (retailers) often wish to offer personalized advertisements (coupons) to individuals (consumers), but run the risk of strong reactions from consumers who want a customized shopping experience but feel their privacy has been violated. Existing models for privacy such as differential priva...

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Main Authors: Chong Huang, Lalitha Sankar, Anand D. Sarwate
Format: Article
Language:English
Published: Labor Dynamics Institute 2015-12-01
Series:The Journal of Privacy and Confidentiality
Subjects:
Online Access:https://journalprivacyconfidentiality.org/index.php/jpc/article/view/646
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spelling doaj-4173e33bd18c457383c48d5e221a298f2020-11-24T21:22:25ZengLabor Dynamics InstituteThe Journal of Privacy and Confidentiality2575-85272015-12-017110.29012/jpc.v7i1.646Designing Incentive Schemes for Privacy-Sensitive UsersChong Huang0Lalitha Sankar1Anand D. Sarwate2Electrical Engineering Department, Arizona State University, Tempe, AZDepartment of Electrical, Computer, and Energy Engineering, Arizona State University, Tempe, AZDepartment of Electrical and Computer Engineering, Rutgers, The State University of New Jersey, New Brunswick, NJ Businesses (retailers) often wish to offer personalized advertisements (coupons) to individuals (consumers), but run the risk of strong reactions from consumers who want a customized shopping experience but feel their privacy has been violated. Existing models for privacy such as differential privacy or information theory try to quantify privacy risk but do not capture the subjective experience and heterogeneous expression of privacy-sensitivity. We propose a Markov decision process (MDP) model to capture (i) different consumer privacy sensitivities via a time-varying state; (ii) different coupon types (action set) for the retailer; and (iii) the action-and-state-dependent cost for perceived privacy violations. For the simple case with two states ("Normal" and "Alerted"), two coupons (targeted and untargeted) model, and consumer behavior statistics known to the retailer, we show that a stationary threshold-based policy is the optimal coupon-offering strategy for a retailer that wishes to minimize its expected discounted cost. The threshold is a function of all model parameters; the retailer offers a targeted coupon if its belief that the consumer is in the "Alerted" state is below the threshold. We extend this two-state model to consumers with multiple privacy-sensitivity states as well as coupon-dependent state transition probabilities. Furthermore, we study the case with imperfect (noisy) cost feedback from consumers and uncertain initial belief state. https://journalprivacyconfidentiality.org/index.php/jpc/article/view/646Privacy Markov decision processes retailer-consumer interaction optimal policy
collection DOAJ
language English
format Article
sources DOAJ
author Chong Huang
Lalitha Sankar
Anand D. Sarwate
spellingShingle Chong Huang
Lalitha Sankar
Anand D. Sarwate
Designing Incentive Schemes for Privacy-Sensitive Users
The Journal of Privacy and Confidentiality
Privacy
Markov decision processes
retailer-consumer interaction
optimal policy
author_facet Chong Huang
Lalitha Sankar
Anand D. Sarwate
author_sort Chong Huang
title Designing Incentive Schemes for Privacy-Sensitive Users
title_short Designing Incentive Schemes for Privacy-Sensitive Users
title_full Designing Incentive Schemes for Privacy-Sensitive Users
title_fullStr Designing Incentive Schemes for Privacy-Sensitive Users
title_full_unstemmed Designing Incentive Schemes for Privacy-Sensitive Users
title_sort designing incentive schemes for privacy-sensitive users
publisher Labor Dynamics Institute
series The Journal of Privacy and Confidentiality
issn 2575-8527
publishDate 2015-12-01
description Businesses (retailers) often wish to offer personalized advertisements (coupons) to individuals (consumers), but run the risk of strong reactions from consumers who want a customized shopping experience but feel their privacy has been violated. Existing models for privacy such as differential privacy or information theory try to quantify privacy risk but do not capture the subjective experience and heterogeneous expression of privacy-sensitivity. We propose a Markov decision process (MDP) model to capture (i) different consumer privacy sensitivities via a time-varying state; (ii) different coupon types (action set) for the retailer; and (iii) the action-and-state-dependent cost for perceived privacy violations. For the simple case with two states ("Normal" and "Alerted"), two coupons (targeted and untargeted) model, and consumer behavior statistics known to the retailer, we show that a stationary threshold-based policy is the optimal coupon-offering strategy for a retailer that wishes to minimize its expected discounted cost. The threshold is a function of all model parameters; the retailer offers a targeted coupon if its belief that the consumer is in the "Alerted" state is below the threshold. We extend this two-state model to consumers with multiple privacy-sensitivity states as well as coupon-dependent state transition probabilities. Furthermore, we study the case with imperfect (noisy) cost feedback from consumers and uncertain initial belief state.
topic Privacy
Markov decision processes
retailer-consumer interaction
optimal policy
url https://journalprivacyconfidentiality.org/index.php/jpc/article/view/646
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