City size, Monopolies and Modelling
I need to begin with stating I’m not trained neither in urban nor in environmental studies, yet as a true economist, I will use the liberty of talking about things I’m not educated about. In this case, I believe my attempt is legitimized for two reasons, first, main argument I want to make has to do with the ways in which we use models, not necessarily on the environmental catastrophes and self-organization of cities. Second, this is just a simple blog post where I will intentionally avoid necessary steps to show the validity of the model for the example I will discuss. Thus, I do not claim the proposed model has any explanatory power anyway.
You may have come across to the nasty photos of the Sea of Marmara,
an inner sea between the Black Sea and the Aegean Sea. What is believed to be a
natural phenomenon, sea snot, seem to have built up uncontrollably both on the
shores and on the bottom part of the sea, seriously threatening the sea life. According
to a BBC article1, it was first observed in the Aegean in 2007, yet
never at this scale.
It does, of course, have to do with the climate change, yet
by the looks of it pretty much all the cities around the Sea of Marmara have
been pumping their sewage into the sea, mostly untreated. Some of these cities
are important industrial centers, meaning even more pollution. None of these
may sound unfamiliar to anyone from a highly populated city of course.
But then, there is the obvious question that needs to be
asked: is the root cause of pollution Istanbul? Is Istanbul completely out of
control even for its own good?
Is it really the case that Istanbul simply is “too
populated”? This is where one starts to think of criterions. How much of a population would have been
acceptable then? Based on what kind of criterions one can state a city like
Istanbul is over-crowded or not? In case relatively well-off residents of
Istanbul obtain their deepest desire -which they do not even shy away from demanding
it out loud in most instances- and relatively poor residents of Istanbul simply
leave the city, are they really ready to live in a city without an
overabundance of desperate working people ready to do whatever job for
whichever price? If something needs to be done, who decides on
who stays and who leaves and who decides on what is the criterion for these
decisions?
When the question in hand is how cities are shaped and
people’s mobility, the obvious complexities mentioned above turn from some
inconveniences for modelling purposes to the center of the whole discussion.
Most social systems are composed of many actors that are interacting with each
other in many ways and together with these interactions there exists strong
feedback effects, sometimes negative and sometimes positive feedbacks.
The Self-Organizing Economy, by Krugman, offers a short and
insightful introduction to the complex systems. He identifies three definitions for
the complex systems, 1) Systems with complicated feedback mechanisms (which,
economists should feel maybe too confident but definitely confident to talk
about), 2) Systems that emerge, which is different than simply scaling up one
individual’s behavior and again resembles notions like, you know, the
invisible hand, so should be familiar to the economists, 3) Self-organizing
systems: systems that even when they start from an almost homogenous or almost
random state, spontaneously form large-scale patterns. What is striking about
this third definition is, studying the properties of a self-organizing system
may bring many valuable insights, while a self-organizing system itself will
not necessarily bring desirable outcomes (very much at odds with the FFTWE).
Krugman gives the example of two economies, one in which a strong
business-cycle exhibits more temporal self-organization while in the other
economy there is just smooth growth, where many would prefer to live in the
latter.
Now, back to Istanbul. Is there a way to make sense out of
the highly populated life of Istanbul? One may want to check the city
populations in Turkey to see if there are any common trends there:
Above, I present the 70 highest populated cities in Turkey
on a rank-size plot with a linear fit. As mentioned at the beginning I
will not discuss the relevance of the linear model fit and if it is appropriate
or not but rather point out to the rich literature studying city sizes and
finding the linear relationship between the size of the cities and their ranks
on a log-log scale. Such patterns are disregarded and often the studies on such
patterns are looked down on by economists, while they may indicate some “hidden
principle at work”. I simply tried to present the rank-size rule, and a simple
application of it to Turkey and wanted to point out to the spooky fact that
Istanbul was consistent with the so called Zipf-law. It’s spooky because,
Istanbul was way too consistent with this “rule”.
As arbitrary as it is, I wondered if pre-2007, right before first time sea snot was seen in the Aegean according to BBC, presented similar patterns:
The rank-size rule seems to be strong regardless and needs
some explanation. A common trick when one encounters with Zipf-laws on a
log-log scale is to suppose a hierarchy, which will generate an exponential
shape on a linear-linear scale and use that as an explanation. Krugman,
however, goes against the hierarchical explanation and states the rule assumes
a constant number of parameters while there is no need to make such assumption
and maybe more importantly the empirical figures show not only a power-law but
a very specific one with parameter estimate almost always equal to 1. He finds
Herbert Simon’s explanation as a much better candidate (one may want to check
out “On a Class of Skew Distribution Functions”).
What do these say about the sea snot? As an unlikely event
that is now threatening the entire sea life and the life around the sea, was it
caused by unlikely large populations around it? Clearly, I have nothing to say
about the causal mechanism but wanted to point out to the other unlikely events
probably tied to this one and located around this one, such as very large
populations. This small exercise, however, made me think about models in
general which is the main issue I wanted to bring up. Models come with a lot of
normative judgements, such as ‘an undisrupted random process will generate the most desirable
outcome’, while the outcome could be far from being desirable. In case the
outcome turns out to be undesirable, while being consistent with an unfettered
process, then the researcher starts to think about how the process was actually
not an undisrupted one. So it is either “people would’ve realized the
environmental catastrophe around themselves and leave Istanbul if it was that bad,
which is what my model says” or “since people did not leave Istanbul
already, as opposed to the predictions of a model of unregulated mobility,
there should be imperfections or interventions”, meaning, while models are
claimed to be simplifications of reality but not reality itself, the researchers
tend to have very little room in their mind to distinguish between reality and
their model.
Is Amazon anything
like the sea snot?
What is it about the city sizes that is related to the monopolies
and modelling? Is it awful monopolies destroying our lives and only if we were
to live in a more competitive capitalism things would’ve been just fine and
monopolies are the sea snot that is now destroying the sea? Am I trying to
invite you to some sort of a higher state of consciousness by using some analogies?
Well, not really. I wanted to share some views on how it
seems we end up coming to these conclusions. One may define a random process,
say a hierarchical one, with that rule of interaction generate patterns
consistent with rank-size rule, then observe Istanbul laying above the
suggested Zipf-law and then conclude some people need to leave and start
studying who needs to leave. Following the same process, one may see Istanbul
laying below where it needs to be at and conclude they need to get more people
there, maybe start studying ways to do that. This is a very common way of doing
theory based empirical work, yet still very much dependent on researchers' views
on interactions and feedbacks and how they matter and to what extent they
matter.
In a similar way, what is an ok size for a firm? What is an
acceptable amount of profit/rate of profit? What legitimizes and delegitimizes
a very large firm? One needs to recognize these questions should not have
dogmatic answers (treating any deviation from the average rate of profit as
failure or monopoly rents). Competition is a complex process just like the
formation of cities; it entails a lot of interaction, negative and positive
feedbacks while most economics models will put emphasis on only one aspect of
these three, and only very partially. A very large firm could be consistent with a
self-organizing system, while its’ existence may still not be desirable.
So, models… They tend to carry a lot of normative judgement
underneath and I wish these judgements were always very explicit.
1: Turkey
president Erdogan vows to solve 'sea snot' outbreak - BBC News



This is very well-written!
ReplyDeleteThank you Swayam! Feels great to get such a nice first comment :)
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