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Tania Treibich

Researcher at Maastricht University

Publications -  39
Citations -  779

Tania Treibich is an academic researcher from Maastricht University. The author has contributed to research in topics: Fiscal policy & Business cycle. The author has an hindex of 11, co-authored 35 publications receiving 586 citations. Previous affiliations of Tania Treibich include Sciences Po & University of Nice Sophia Antipolis.

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Fiscal and monetary policies in complex evolving economies

TL;DR: This article used an agent-based model that is able to reproduce a wide array of macro- and micro-empirical regularities to find the most appropriate combination of fiscal and monetary policies in economies subject to banking crises and deep recessions.
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Micro and macro policies in the Keynes +Schumpeter evolutionary models

TL;DR: In this article, the authors present the family of the Keynes+Schumpeter (K+S) evolutionary agent-based models, which study the effects of a rich ensemble of innovation, industrial dynamics and macroeconomic policies on the long-term growth and short-run fluctuations of the economy.
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Three green financial policies to address climate risks

TL;DR: In this paper, the authors employ a macro-financial agent-based model to study the interaction between climate change, credit and economic dynamics and test a mix of policy interventions to increase the resilience of the financial system to climate risks.
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The medium-term effect of R&D on firm growth

TL;DR: In this paper, the effect of R&D expenditure on firm employment growth in the medium term was analyzed using six cross-sectional waves of an innovation survey conducted in the Netherlands in all sectors.
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Dynamics of investment and firm performance: comparative evidence from manufacturing industries

TL;DR: In this paper, the authors investigate the channels linking investment and firm performance in the French and Italian manufacturing industries and propose a novel methodology to identify investment spikes which corrects for nonlinear size dependence.