Hi Roger,

Thanks for your reply. Coding the joins is not a problem I've already done that 
on a smaller scale in a different project.

No postcodes in my country. I have polygon data from the census and I have 
geocoded cases for every case of a rare disease. This is all pretty much fixed 
there is nothing I can do about it. I have performed an analysis based on about 
3500 polygons and that works ok. However the population data has bad maths 
properties. There I'm now working with newer data using 18,000 polygons and the 
same cases. This population data has better maths properties (i.e. population 
per polygon is more symmetrically distributed). But there are too many polygons 
- most of the polygons have no cases. So when I do Bayesian smoothing I just 
end up with a uniform map of Relative Risk =1 everywhere as all the polygons 
with cases are all surrounded by polygons with no cases.

I figure to get around this I either fiddle with the spatial weighting (seems 
unwise), or join polygons in some sensible fashion. My question was really 
wondering are there algorithms to deduce a list of polygon joins based on 
polygon properties. For example - I don't want to join urban and rural polygons 
as I am interested in the association of population density with incidence 
rate. I'm also interested in the relationship with social deprivation - so I 
don't want to join an area of high deprivation with and area of low 
deprivation. Basically I want to know is there a package that will create me a 
join list based on such rules ? I can of course write some code to do it but I 
was hoping not to have to spend the time on it!

James
________________________________________
From: Roger Bivand [roger.biv...@nhh.no]
Sent: 07 January 2014 08:28
To: James Rooney
Cc: r-sig-geo@r-project.org
Subject: Re: [R-sig-Geo] algorthirm to join polygons based on population 
properties

On Tue, 7 Jan 2014, James Rooney wrote:

> Dear all,
>
> I have dataset with very many more polygons than cases. I wish to apply
> Bayesian smoothing to areal disease rates, however I have too many
> polygons and need a smart way to combine them so that there are less
> overall polygons.
> Bascially I need to only combine polygons of similar population density
> and it would be best if the new polygons have a distribution of total
> population that was within a limited range/normally distributed.

This is not clear. Do you mean density (count/area) or just count? If you
have "too many polygons", then probably you haven't thought through your
sampling design - you need polygons with the correct support for the data
collection protocol used. Are you looking at postcode polygons and sparse
geocoded cases, with many empty postcodes? Are postcodes the relevant
support?

If you think through support first (Gotway & Young 2002), then ad hoc
aggregation (that's the easy part) may be replaced by appropriate
aggregation (postcodes by health agency, surgery, etc.). The aggregation
can be done with rgeos::gUnaryUnion, but you need a vector assigning
polygons to aggregates first, preferably coded so that the data can be
maptools::spCbind using well-matched row.names of the aggregated
SpatialPolygons and data.frame objects to key on observation IDs.

First clarity on support, then aggregate polygons to appropriate support,
then merge. Otherwise you are ignoring the uncertainty introduced into
your Bayesian analysis by the aggregation (dfferent aggregations will give
different results). There are good chapters on this in the Handbook of
Spatial Statistics by Gelfand and Wakefield/Lyons.

Hope this clarifies,

Roger

>
> I can of course come up with some way of doing this myself, but I'm not
> keen to reinvent the wheel and so I am wondering - are there any smart
> algorithms already out there for doing this kind of thing ?
>
> Thanks,
> James
> _______________________________________________
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> R-sig-Geo@r-project.org
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>

--
Roger Bivand
Department of Economics, Norwegian School of Economics,
Helleveien 30, N-5045 Bergen, Norway.
voice: +47 55 95 93 55; fax +47 55 95 95 43
e-mail: roger.biv...@nhh.no

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