I'm currently about 2/3rds through Jane Jacobs' "The Death and Life of Great American Cities". This is one of the defining works of modern urban planning, and Jane Jacobs is considered one of our most important urban planning thinkers.
It's a fine book, but I found myself surprised at just how unimpressive it is for a work of such supposed importance. Her hypothesis is simple enough that I can summarize it here:
-Cities succeed by having many people using the city streets throughout the day. Large numbers of people keep the streets safe, and provide enough traffic for businesses to thrive.
-To achieve this constant stream of people, streets should have a large variety of different businesses which are utilized at different times, and should eliminate barriers that prevent the flow of people.
Jacobs' reaches this hypothesis through her own observations of various cities, along with a few bits of data concerning densities, crime rates, etc. But there's no systematic examination of data, no meticulously constructed arguments, and no addressing of criticisms or alternate explanations. Evidently, all that it takes to be a great work in urban planning is the barest rudiments of basic science. (This isn't the first time I've been critical of supposed great works in this field.)
It strikes me that, for whatever reason, Urban Planning is an underserved field* - the scholarship behind it doesn't compare to, say, the quality of work done in evolution, or cognitive psychology.
I have my theories for why this might be**, but it got me thinking - which other fields show a distinct lack of quality work done in them? What other fields are underserved?
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*There is of course the possibility that I'm unfamiliar with more recent, higher quality urban planning literature.
**Namely, that urban planning is an offshoot of architecture, which has tended to value on aesthetic judgement and intuition over empiricism and rigorously constructed arguments.
Thanks; if you have the time, can you point out any other structural flaws in it? All I had was the vague feeling that it wasn't as precise or rigorous as I like models to be when they claim to establish a natural type.
I don't know enough about some of the other fields to reliably comment but the general impression I get is that this is part of a general pattern where there are technical terms that are being used imprecisely or terms with no actual strict meaning. They seem to confuse a number of different notions of what it means by a system to have ambiguity.. While they separate the different types of ambiguity somewhat explicitly it isn't obvious to me that this is at all a helpful grouping. I don't see why it should be useful to think of the ambiguity created by sel... (read more)