We estimate a model of importers in Hungarian micro data and conduct counterfactual analysis to investigate the effect of imported inputs on productivity. We find that importing all input varieties would increase a firm's revenue productivity by 22 percent, about half of which is due to imperfect substitution between foreign and domestic inputs. Foreign firms use imports more effectively and pay lower fixed import costs. We attribute a quarter of Hungarian productivity growth during 1993-2002 to imported inputs. Simulations show that the productivity gain from a tariff cut is larger when the economy has many importers and many foreign firms. JEL: F12,F14 Keywords: imports, intermediate inputs, firm productivityUnderstanding the link between international trade and aggregate productivity is one of the major challenges in international economics. To learn more about this link at the microeconomic level, a recent literature explores the effect of imported inputs-which constitute the majority of world trade-on firm productivity. Studies show that improved access to foreign inputs has increased firm productivity in several countries, including Indonesia (Mary Amiti Jozef Konings 2007), Chile (Hiroyuki Kasahara Joel Rodrigue 2008) and India (Petia Topalova Amit Khandelwal 2011). 1 A next step in this research agenda is to investigate the underlying mechanism through which imports increase productivity. As Juan Carlos Hallak James A Levinsohn (2008) emphasize, understanding which firms gain most, through what channel, and how the effect depends on the economic environment, are important for evaluating the welfare and redistributive implications of trade policies.To explore these questions, we estimate a structural model of importer firms
We present a generally applicable theory of focusing based on the hypothesis that a person focuses more on, and hence overweights, attributes in which her options differ more. Our model predicts that the decision maker is too prone to choose options with concentrated advantages relative to alternatives, but maximizes utility when the advantages and disadvantages of alternatives are equally concentrated. Applying our model to intertemporal choice, these results predict that a person exhibits present bias and time inconsistency when—such as in lifestyle choices and other widely invoked applications of hyperbolic discounting—the future effect of a current decision is distributed over many dates, and the effects of multiple decisions accumulate. But unlike in previous models, in our theory (1) present bias is lower when the costs of current misbehavior are less dispersed, helping explain why people respond more to monetary incentives than to health concerns in harmful consumption; and (2) time inconsistency is lower when a person commits to fewer decisions with accumulating effects in her ex ante choice. In addition, a person does not fully maximize welfare even when making decisions ex ante: (3) she commits to too much of an activity—for example, exercise or work—that is beneficial overall; and (4) makes “future-biased” commitments when—such as in preparing for a big event—the benefit of many periods’ effort is concentrated in a single goal.
This paper builds a theory of trust based on informal contract enforcement in social networks. In our model, network connections between individuals can be used as social collateral to secure informal borrowing. We define networkbased trust as the largest amount one agent can borrow from another agent and derive a reduced-form expression for this quantity, which we then use in three applications.(1) We predict that dense networks generate bonding social capital that allows transacting valuable assets, whereas loose networks create bridging social capital that improves access to cheap favors such as information.(2) For job recommendation networks, we show that strong ties between employers and trusted recommenders reduce asymmetric information about the quality of job candidates. (3) Using data from Peru, we show empirically that network-based trust predicts informal borrowing, and we structurally estimate and test our model.
We examine integration strategies of multinational firms that face a rich array of choices of international organization. Each firm must provide headquarter services from its home country, but can produce its intermediate inputs and conduct assembly operations in one or more of three locations. We study the equilibrium choices of firms that differ in productivity levels, focusing on the role that industry characteristics such as the fixed costs of foreign subsidiaries, the cost of transporting intermediate and final goods, and the regional composition of the consumer market play in determining the optimal integration strategies. D
Many households devote a large fraction of their budgets to "consumption commitments"-goods that involve transaction costs and are infrequently adjusted. This paper characterizes risk preferences in an expected utility model with commitments. We show that commitments affect risk preferences in two ways: (1) they amplify risk aversion with respect to moderate-stake shocks, and (2) they create a motive to take large-payoff gambles. The model thus helps resolve two basic puzzles in expected utility theory: the discrepancy between moderate-stake and large-stake risk aversion and lottery playing by insurance buyers. We discuss applications of the model such as the optimal design of social insurance and tax policies, added worker effects in labor supply, and portfolio choice. Using event studies of unemployment shocks, we document evidence consistent with the consumption adjustment patterns implied by the model. Copyright by the President and Fellows of Harvard College and the Massachusetts Institute of Technology.
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