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A Fixed Point Convergence Theorem in Euclidean Spaces and its Application to Non-Bayesian Learning in Social Networks


Manuel Mueller-Frank


University of Oxford - Nuffield College

September 29, 2010


Abstract:     
I characterize the fixed points of continuous and (neighbor-)constricting functions f:ℝ^{v}→ℝ^{v} and show that each recursively defined sequence x^{k 1}=f(x^{k}), k=0,1,2,... converges to a fixed point of f. The results are applied to generalize the existing results on convergence of beliefs of non-Bayesian agents in social networks of DeGroot (1974), DeMarzo, Vayanos and Zwiebel (2003), and Golub and Jackson (2010).

Number of Pages in PDF File: 13

Keywords: Fixed Point, Convergence, Learning, Social Networks, Bounded Rationality, Consensus.

JEL Classification: C69, D83, D85

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Date posted: October 13, 2010  

Suggested Citation

Mueller-Frank, Manuel, A Fixed Point Convergence Theorem in Euclidean Spaces and its Application to Non-Bayesian Learning in Social Networks (September 29, 2010). Available at SSRN: http://ssrn.com/abstract=1690925 or http://dx.doi.org/10.2139/ssrn.1690925

Contact Information

Manuel Mueller-Frank (Contact Author)
University of Oxford - Nuffield College ( email )
New Road
Oxford, OX1 1NF
United Kingdom
HOME PAGE: http://www.economics.ox.ac.uk/index.php/staff/mueller-frank/
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