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Firm Structure, Multinationals, and Manufacturing Plant Deaths

October 2005

Working Paper Number:

CES-05-18

Abstract

Plant shutdowns shape industry and aggregate productivity paths and play a major role in the dynamics of employment and industrial restructuring. Plant closures in the U.S. manufacturing sector account for more than half of gross job destruction. While multi-plant firms and multinationals dominate U.S. manufacturing, theoretical and empirical work has largely ignored the role of firms in the plant shutdown decision. This paper examines the effects of firm structure on manufacturing plant closures. Using U.S. data, we find that plants belonging to multi-plant firms are less likely to exit. Similarly, plants owned by U.S. multinationals are less likely to close. However, the superior survival chances are due to the characteristics of the plants themselves rather than the nature of the firms. Controlling for plant and industry attributes that reduce the probability of death, we find that plants owned by multi-unit firms and U.S. multinationals are much more likely to close. A recent change in ownership also increases the chances that a plant will be closed.

Document Tags and Keywords

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:
production, manufacturing, industrial, manufacturer, restructuring, takeover, acquisition, firms plants, monopolistic, produce, multinational, plants industry, plants industries, manufacturing plants

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:
Longitudinal Research Database, Center for Economic Studies, Total Factor Productivity, National Bureau of Economic Research, Administrative Records, Chicago Census Research Data Center, Special Sworn Status

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