Result: Chapter The Price of Uncertainty in Present-Biased Planning

Title:
Chapter The Price of Uncertainty in Present-Biased Planning
Publisher Information:
Springer Nature, 2020.
Publication Year:
2020
Original Material:
H2020 European Research Council
Web and Internet Economics
Contents Note:
691672
Document Type:
eBook eBook
File Description:
image/jpeg
Language:
English
DOI:
10.1007/978-3-319-71924-5_23
Rights:
Notes:
644832

OCN: 1076689890

European Research Council (ERC)

EU collection

H2020
Accession Number:
edsdob.20.500.12854.31947
Database:
Directory of Open Access Books

Further Information

The tendency to overestimate immediate utility is a common cognitive bias. As a result people behave inconsistently over time and fail to reach long-term goals. Behavioral economics tries to help affected individuals by implementing external incentives. However, designing robust incentives is often difficult due to imperfect knowledge of the parameter β ∈ (0, 1] quantifying a person’s present bias. Using the graphical model of Kleinberg and Oren [8], we approach this problem from an algorithmic perspective. Based on the assumption that the only information about β is its membership in some set B ⊂ (0, 1], we distinguish between two models of uncertainty: one in which β is fixed and one in which it varies over time. As our main result we show that the conceptual loss of effi- ciency incurred by incentives in the form of penalty fees is at most 2 in the former and 1 + max B/ min B in the latter model. We also give asymptotically matching lower bounds and approximation algorithms.