554 research outputs found
Minority Games, Local Interactions, and Endogenous Networks
In this paper we study a local version of the Minority Game where agents are placed on the nodes of a directed graph. Agents care about beingin the minority of the group of agents they are currently linked to and employ myopic best-reply rules to choose their next-period state. We show that, in this benchmark case, the smaller the size of local networks, the larger long-run population-average payoffs. We then explore the collective behavior of the system when agents can: (i) assign weights to each link they hold and modify them over time in response to payoff signals; (ii) delete badly-performing links (i.e. opponents) and replace them with randomly chosen ones. Simulations suggest that, when agents are allowed to weight links but cannot delete/replace them, the system self-organizes into networked clusters which attain very high payoff values. These clustered configurations are not stable and can be easily disrupted, generating huge subsequent payoff drops. If however agents can (and are sufficiently willing to) discard badly performing connections, the system quickly converges to stable states where all agents get the highest payoff, independently of the size of the networks initially in placeMinority Games, Local Interactions, Non-Directed Graphs, Endogenous Networks, Adaptive Systems.
Animal Spirits, Lumpy Investment, and the Business Cycle
Empirical literature on investment and output dynamics is characterized by two robust stylized facts at the macro level. First, investment is considerably more volatile than output. Second, fluctuations of output and investment are highly synchronized. Furthermore, at the micro level, firm investment appears to be very lumpy. In this paper, we ask whether the two macroeconomic stylized facts above can be explained in terms of bounded rationality (i.e. "animal spirits") in firm investment behavior and the ensuing lumpiness in investment patterns. To address this question, we present an evolutionary, agent-based, model of industry dynamics and firm investment behavior. The economy is composed of consumers and firms, who belong to two industries. Firms in the first industry perform R&D and produce heterogeneous machine tools. Firms in the second industry invest in new machines and produce a consumption good. Lumpiness of firm investment is not grounded on non-convex adjustment costs, but on "animal spirits": manufacturing firms invest only if they expect a large growth in the demand for their product. Simulations show that the model is able to generate - as emergent properties - Keynesian endogenous business cycles and to reproduce the foregoing empirical macro output-investment regularities at the business cycle frequencies.Evolutionary Models, ACE Models, Animal Spirits, Lumpy Investment, Output Fluctuations, Endogenous Business Cycles
Propagation of Economic Shocks in Input-Output Networks: A Cross-Country Analysis
This paper investigates how economic shocks propagate and amplify through the
input-output network connecting industrial sectors in developed economies. We
study alternative models of diffusion on networks and we calibrate them using
input-output data on real-world inter-sectoral dependencies for several
European countries before the Great Depression. We show that the impact of
economic shocks strongly depends on the nature of the shock and country size.
Shocks that impact on final demand without changing production and the
technological relationships between sectors have on average a large but very
homogeneous impact on the economy. Conversely, when shocks change also the
magnitudes of input-output across-sector interdependencies (and possibly sector
production), the economy is subject to predominantly large but more
heterogeneous avalanche sizes. In this case, we also find that: (i) the more a
sector is globally central in the country network, the largest its impact; (ii)
the largest European countries, such as those constituting the core of the
European Union's economy, typically experience the largest avalanches,
signaling their intrinsic higher vulnerability to economic shocks.Comment: 9 pages, 12 figures, supplemental material sectio
Clustering in Complex Directed Networks
Many empirical networks display an inherent tendency to cluster, i.e. to form
circles of connected nodes. This feature is typically measured by the
clustering coefficient (CC). The CC, originally introduced for binary,
undirected graphs, has been recently generalized to weighted, undirected
networks. Here we extend the CC to the case of (binary and weighted) directed
networks and we compute its expected value for random graphs. We distinguish
between CCs that count all directed triangles in the graph (independently of
the direction of their edges) and CCs that only consider particular types of
directed triangles (e.g., cycles). The main concepts are illustrated by
employing empirical data on world-trade flows
Are Output Growth-Rate Distributions Fat-Tailed? Some Evidence from OECD Countries
This work explores some distributional properties of aggregate output growth-rate time series. We show that, in the majority of OECD countries, output growth-rate distributions are well approximated by symmetric exponential power densities with tails much fatter than those of a Gaussian (but with finite moments of any order). Fat tails robustly emerge in output growth rates independently of: (i) the way we measure aggregate output; (ii) the family of densities employed in the estimation; (iii) the length of time lags used to compute growth rates. We also show that fat tails still characterize output growth-rate distributions even after one washes away outliers, autocorrelation and heteroscedasticity
Spatial Localization in Manufacturing: A Cross-Country Analysis
This paper employs a homogeneous-firm database to investigate industry localization in European countries. More specifically, it compares, across industries and countries, the predictions of two of the most popular localization indexes, that is, the Ellison and Glaeser index of 1997 and the Duranton and Overman index of 2005. Independently from the index used, it is found that localization is a pervasive phenomenon in all countries studied; and the degree of localization is very unevenly distributed across industries in each country. Furthermore, it is shown that in all countries localized sectors are mainly ‘traditional’ sectors or, if one controls for country industrial structures, science-based sectors. Moreover, it is found that the two indexes significantly diverge in predicting the intensity of localization of the same industry both across and within countries. In turn, these differences point to the different role played by pecuniary versus non-pecuniary externalities in driving firms' location decisions
Null Models of Economic Networks: The Case of the World Trade Web
In all empirical-network studies, the observed properties of economic
networks are informative only if compared with a well-defined null model that
can quantitatively predict the behavior of such properties in constrained
graphs. However, predictions of the available null-model methods can be derived
analytically only under assumptions (e.g., sparseness of the network) that are
unrealistic for most economic networks like the World Trade Web (WTW). In this
paper we study the evolution of the WTW using a recently-proposed family of
null network models. The method allows to analytically obtain the expected
value of any network statistic across the ensemble of networks that preserve on
average some local properties, and are otherwise fully random. We compare
expected and observed properties of the WTW in the period 1950-2000, when
either the expected number of trade partners or total country trade is kept
fixed and equal to observed quantities. We show that, in the binary WTW,
node-degree sequences are sufficient to explain higher-order network properties
such as disassortativity and clustering-degree correlation, especially in the
last part of the sample. Conversely, in the weighted WTW, the observed sequence
of total country imports and exports are not sufficient to predict higher-order
patterns of the WTW. We discuss some important implications of these findings
for international-trade models.Comment: 39 pages, 46 figures, 2 table
Country centrality in the international multiplex network
Abstract In this work we introduce and analyze a new and comprehensive multilayer dataset covering a wide spectrum of international relationships between coutries. We select two cross sections of the dataset corresponding to years 2003 and 2010 with 19 layers and 112 nodes to study the structure and evolution of the network. Country centrality is measured by the multiplex PageRank (MultiRank) and the multiplex hub and authority scores (MultiHub and MultiAuth). We find that the MultiHub measure has the highest correlation to GDP per capita, with respect to the other multilayer measures and to their single layer analogues. Finally we analyze the differences in the ranking between GDP per capita and the multilayer centrality measures to evaluate them as measures of development
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