Nonlinear Aggregate Investment Dynamics: Theory and Evidence
Ricardo Caballero () and
Eduardo Engel
No 6420, NBER Working Papers from National Bureau of Economic Research, Inc
Abstract:
In this paper we derive a model of aggregate investment that builds from the lumpy microeconomic behavior of firms facing stochastic fixed adjustment costs. Instead of the standard sharp (S,s) bands, firms' adjustment policies take the form of a probability of adjustment (adjustment hazard) that responds smoothly to changes in firms' capacity gap. The model has appealing aggregation properties, and yields nonlinear aggregate time series processes. The passivity of normal times is, occasionally, more than offset by the brisk response to large accumulated shocks. Using within and out-of-sample criteria, we find that the model performs substantially better than the standard linear models of investment for postwar sectoral U.S. manufacturing equipment and structures investment data.
JEL-codes: D92 E22 (search for similar items in EconPapers)
Date: 1998-02
Note: EFG
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Citations: View citations in EconPapers (8)
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Working Paper: Nonlinear Aggregate Investment Dynamics: Theory and Evidence (1998)
Working Paper: Nonlinear Aggregate Investment Dynamics: Theory and Evidence (1998)
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