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An inverse problem for stochastic growth models with iterated function systems

Year of publication:
2001-01-01
Authors: Torre, Davide La
Institutions: Dipartimento di Economia, Management e Metodi Quantitativi (DEMM), Università degli Studi di Milano
Subject: Optimization | Iterated function system | stochastic growth models
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Extent:
application/pdf
Series:
Departmental Working Papers.
Type of publication: Book / Working Paper
Source:
RePEc - Research Papers in Economics
Persistent link: https://www.econbiz.de/10005007356
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