Optimal Advertising for Information Products
Shuran Zheng, Yiling Chen

TL;DR
This paper investigates optimal advertising strategies for selling information products by revealing partial information, analyzing different buyer types, and providing computational methods and complexity results.
Contribution
It introduces a framework for optimal partial information disclosure, characterizes the problem for specific buyer types, and proves NP-hardness for the general case.
Findings
Optimal strategies can be computed via convex programming for certain cases.
The problem is NP-hard in the general setting.
An approximation algorithm is provided for predictable buyer types.
Abstract
When selling information products, the seller can provide some free partial information to change people's valuations so that the overall revenue can possibly be increased. We study the general problem of advertising information products by revealing partial information. We consider buyers who are decision-makers. The outcomes of the decision problems depend on the state of the world that is unknown to the buyers. The buyers can make their own observations and thus can hold different personal beliefs about the state of the world. There is an information seller who has access to the state of the world. The seller can promote the information by revealing some partial information. We assume that the seller chooses a long-term advertising strategy and then commits to it. The seller's goal is to maximize the expected revenue. We study the problem in two settings. (1) The seller targets…
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Taxonomy
TopicsAuction Theory and Applications · Consumer Market Behavior and Pricing · Advanced Bandit Algorithms Research
