A Profit Maximization Model for Data Consumers with Data Providers’ Incentives in Personal Data Trading Market
Abstract
:1. Introduction
- This paper proposes a personal data trading model considering payments of direct incentives to the data providers, in which a data consumer collects personal data from data providers with explicit consent about providing direct incentives through data brokers and creates a new service for targeting the same data providers.
- This paper proposes new revenue and cost models for a data consumer by considering the behavioral models (i.e., willingness-to-pay of service users and willingness-to-sell of data providers) adopted from the authors’ previous works [25,26], which are inspired by the real-world surveys and observations [6,28].
- According to the revenue and cost models, this paper proposes a profit maximization problem. By applying convex optimization techniques, this paper transforms the problem to be more practical. Consequently, this paper finally proposes a constrained profit maximization problem with the limited budget of the data consumer under the practical boundary of cost allocation, which is a constrained nonlinear optimization problem.
- With parameters inspired by real-world survey [29] on data providers, which provided the results with about 1000 respondents regarding willingness-to-share their personal information in exchange for money (i.e., willingness-to-sell personal data), this paper shows various numerical results to check the feasibility of the proposed models. Moreover, this paper identifies several discussion points regarding the proposed model and the analytical results.
2. Related Work
3. System Model
- Data providers: a group of candidate individuals who may provide their own personal data according to their informed consent of using personal data while receiving direct incentives as compensation;
- Data brokers: a group of data brokers who participate data trading market to intermediate between data providers and the data consumer;
- Data consumer: a data consumer who processes personal data and creates new services for service users. The data consumer wants to maximize its profit by providing good quality services to service users while minimizing budget consumption (note that it is a main target for profit maximization analysis in this paper);
- Service users: a group of candidate individuals who may use a service that is provided by the data consumer.
3.1. Cost Model of Data Consumer
3.1.1. Willingness-to-Sell of Data Providers
3.1.2. The Size of Collected Dataset
3.1.3. The Expected Costs of the Data Consumer
3.2. Revenue of Data Consumer
3.2.1. A Service Quality of the Data Consumer
3.2.2. Willingness-to-Pay of the Service Consumers
3.2.3. The Expected Revenue of Data Consumer
4. Proposed Personal Data Trading Model for Data Consumer
4.1. Profit Maximization Model for Data Consumer
Profit Maximization Problem
4.2. Constrained Profit Maximization Problem
5. Numerical Results
5.1. Theoretical Analysis
5.1.1. Data Trading with a Single Data Broker
5.1.2. Data Trading with Two Data Brokers
5.2. Experiments with Real-World Parameters
5.3. Discussions
5.3.1. The Correlation among , , and Data Quality
5.3.2. Time Complexity of SLSQP
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
Symbol | Definition |
N | Number of data brokers in the market |
Number of potential data providers with data broker i | |
Privacy sensitivity of data providers | |
Data provider’s willingness-to-sell function | |
B | The entire budget of the data consumer |
budget allocation for data brokers | |
cost allocation for each data provider | |
U | Number of potential service users |
s | Service fee paid by each service user |
Service user’s willingness-to-pay function | |
P | Profit function of the data consumer |
Q | Service quality function of the data consumer |
D | Size of the entire dataset collected by all data brokers |
Size of dataset collected by data broker i |
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5 data brokers, , , | ||||||
Problem 3 without boundary condition (24) | Problem 3 with boundary condition (24) | |||||
Case 1: Sufficient budget 200,000 | (17.9, 33.6, 41.6, 57.8, 77.6) | 1,002,123 | 945,146 | |||
WTS (%) | WTS (%) | |||||
(, , , , ) | 109,262 | (, , , , ) | 64,619 | |||
Case 2: Tight budget 50,000 | 927,297 | 919,124 | ||||
WTS (%) | WTS (%) | |||||
(, , , , ) | 50,000 | (, , , , ) | 50,000 | |||
Case 3: Inadequate budget 10,000 | 584,408 | 584,408 | ||||
WTS (%) | WTS (%) | |||||
(, , , , ) | 10,000 | (, , , , ) | 10,000 |
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Park, H.; Oh, H.; Choi, J.K. A Profit Maximization Model for Data Consumers with Data Providers’ Incentives in Personal Data Trading Market. Data 2024, 9, 6. https://doi.org/10.3390/data9010006
Park H, Oh H, Choi JK. A Profit Maximization Model for Data Consumers with Data Providers’ Incentives in Personal Data Trading Market. Data. 2024; 9(1):6. https://doi.org/10.3390/data9010006
Chicago/Turabian StylePark, Hyojin, Hyeontaek Oh, and Jun Kyun Choi. 2024. "A Profit Maximization Model for Data Consumers with Data Providers’ Incentives in Personal Data Trading Market" Data 9, no. 1: 6. https://doi.org/10.3390/data9010006
APA StylePark, H., Oh, H., & Choi, J. K. (2024). A Profit Maximization Model for Data Consumers with Data Providers’ Incentives in Personal Data Trading Market. Data, 9(1), 6. https://doi.org/10.3390/data9010006