Chapter The Price of Uncertainty in Present-Biased Planning

Chapter The Price of Uncertainty in Present-B ...
Susanne Albers, Susanne Albers
Not in Library

My Reading Lists:

Create a new list

Check-In

×Close
Add an optional check-in date. Check-in dates are used to track yearly reading goals.
Today


Buy this book

Last edited by MARC Bot
November 17, 2020 | History

Chapter The Price of Uncertainty in Present-Biased Planning

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.

Publish Date
Publisher
Springer Nature
Pages
15

Buy this book

Book Details


Edition Notes

Open Access Unrestricted online access

H2020 European Research Council

Creative Commons https://creativecommons.org/licenses/by/4.0/

English

The Physical Object

Pagination
1 electronic resource (15 p.)
Number of pages
15

ID Numbers

Open Library
OL31375056M
ISBN 10
978331971924523

Source records

marc_oapen MARC record

Community Reviews (0)

Feedback?
No community reviews have been submitted for this work.

Lists

This work does not appear on any lists.

History

Download catalog record: RDF / JSON
November 17, 2020 Created by MARC Bot import new book