The Self-Organizing Economy
β Scribed by Paul R. Krugman
- Year
- 1996
- Tongue
- English
- Leaves
- 66
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
In the last few years, the concept of self-organizing systems - of complex systems in which ramdomness and chaos seem spontaneously to evolve into unexpected order - has become an increasingly influential idea that links together researchers in many fields, from artificial intelligence to chemistry, from evolution to geology. For whatever reason, however, this movement has so far largely passed economic theory by. It is time to see how the new ideas can usefully be applied to that immensely complex, but indisputably self-organizing system called the economy. This volume shows how models of self-organization can be applied to many economic phenomena: how the principles of "order from instability", which explains the growth of hurricanes and embryos, can also explain the formation of cities and business cycles; how the principles of "order from random growth" can explain the strangely simple rules that describe the sizes of earthquakes, meteorites and metropolitan areas. Without discarding the insights of conventional economic analysis, Krugman weaves together strands from many different disciplines, from location theory to biology, to create a new view of how the economy forms structures in space and time.
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