Strategy under uncertainty

被引:2
|
作者
Courtney, H [1 ]
Kirkland, J
Viguerie, P
机构
[1] McKinsey & Co, Washington, DC USA
[2] McKinsey, Pittsburgh, PA USA
[3] McKinsey, Atlanta, GA USA
关键词
D O I
暂无
中图分类号
F [经济];
学科分类号
02 ;
摘要
At the heart of the traditional approach to strategy Lies the assumption that by applying a set of powerful analytic tools, executives can predict the future of any business accurately enough to allow them to choose a clear strategic direction. But what happens when the environment is so uncertain that no amount of analysis will allow us to predict the future! What makes for a good strategy in highly uncertain business environments? The authors, consultants at McKinsey & Company, argue that uncertainty requires a new way of thinking about strategy. AU too often, they say, executives take a binary view: either they underestimate uncertainty to come up with the forecasts required by their companies' planning or capital-budging processes, or they overestimate it, abandon all analysis, and go with their gut instinct. The authors outline a new approach that begins by making a crucial distinction among four discrete levels of uncertainty that any company might face. They then explain how a set of generic strategies-shaping the market, adapting to it, or reserving the right to play at a later time - can be used in each of the four levels. And they illustrate how these strategies can be implemented through a combination of three basic types of actions: big bets, options, and no-regrets moves. The framework can help managers determine which analytic tools can inform decision making under uncertainty - and which cannot. At a broader level, it offers executives a discipline for thinking rigorously and systematically about uncertainty and its implications for strategy.
引用
收藏
页码:66 / +
页数:15
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