Agent-Based Modeling of a Non-tâtonnement Process for the Scarf Economy: The Role of Learning

Chen, Shu-Heng; Chie, Bin-Tzong; Kao, Ying-Fang and Venkatachalam, Ragupathy. 2019. Agent-Based Modeling of a Non-tâtonnement Process for the Scarf Economy: The Role of Learning. Computational Economics, 54, pp. 305-341. ISSN 0927-7099 [Article]

[img]
Preview
Text
iscef_final_corrected_July2017.pdf - Accepted Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (6MB) | Preview

Abstract or Description

In this paper, we propose a meta-learning model to hierarchically integrate individual learning and social learning schemes. This meta-learning model is incorporated into an agent-based model to show that Herbert Scarf’s famous counterexample on Walrasian stability can become stable in some cases under a non-tâtonnement process when both learning schemes are involved, a result previously obtained by Herbert Gintis. However, we find that the stability of the competitive equilibrium depends on how individuals learn—whether they are innovators (individual learners) or imitators (social learners), and their switching frequency (mobility) between the two. We show that this endogenous behavior, apart from the initial population of innovators, is mainly determined by the agents’ intensity of choice. This study grounds the Walrasian competitive equilibrium based on the view of a balanced resource allocation between exploitation and exploration. This balance, achieved through a meta-learning model, is shown to be underpinned by a behavioral/psychological characteristic.

Item Type:

Article

Identification Number (DOI):

https://doi.org/10.1007/s10614-017-9721-5

Keywords:

Non-tâtonnement process, Co-ordination, Agent-based modelling, Learning

Departments, Centres and Research Units:

Institute of Management Studies
Institute of Management Studies > Structural Economic Analysis

Dates:

DateEvent
4 August 2017Published Online
1 July 2017Accepted
15 July 2019Published

Item ID:

20656

Date Deposited:

11 Jul 2017 15:50

Last Modified:

26 Feb 2024 13:12

Peer Reviewed:

Yes, this version has been peer-reviewed.

URI:

https://research.gold.ac.uk/id/eprint/20656

View statistics for this item...

Edit Record Edit Record (login required)