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  4. Bounded Memory, Inertia, Sampling and Weighting model for Market Entry Games
 
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Bounded Memory, Inertia, Sampling and Weighting model for Market Entry Games

Journal
Games
Journal Volume
2
Journal Issue
1
Pages
187-199
Date Issued
2011
Author(s)
WEI JAMES CHEN  
Liu, S.-Y.
Chen, C.-H.
Lee, Y.-S.
DOI
10.3390/g2010187
URI
https://www.scopus.com/inward/record.uri?eid=2-s2.0-84864299348&doi=10.3390%2fg2010187&partnerID=40&md5=3f5672134d22edd0cb8ef79c55ab9ac7
https://scholars.lib.ntu.edu.tw/handle/123456789/556351
Abstract
This paper describes the "Bounded Memory, Inertia, Sampling and Weighting" (BI-SAW) model, which won the http://sites.google.com/site/gpredcomp/Market Entry Prediction Competition in 2010. The BI-SAW model refines the I-SAW Model (Erev et al. [1]) by adding the assumption of limited memory span. In particular, we assume when players draw a small sample to weight against the average payoff of all past experience, they can only recall 6 trials of past experience. On the other hand, we keep all other key features of the I-SAW model: (1) Reliance on a small sample of past experiences, (2) Strong inertia and recency effects, and (3) Surprise triggers change. We estimate this model using the first set of experimental results run by the competition organizers, and use it to predict results of a second set of similar experiments later ran by the organizers. We find significant improvement in out-of-sample predictability (against the I-SAW model) in terms of smaller mean normalized MSD, and such result is robust to resampling the predicted game set and reversing the role of the sets of experimental results. Our model's performance is the best among all the participants. ? 2011 by the authors; licensee MDPI, Basel, Switzerland.
Subjects
Learning; Market entry game; Prediction competition

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