[R] Joining two datasets - recursive procedure?

Luca Meyer lucam1968 at gmail.com
Mon Mar 23 10:04:08 CET 2015


Dear All,

I think I have found a fix developing the draft syntax I have provided
yesterday, see below or
https://www.dropbox.com/s/pbz9dcgxu6ljj8x/sample_code_1.txt?dl=0.

Only desirable improvement is related to the block where I compute the
modified v4 (lines 46-60 in the attached file). Provided the real data are
of the dimension 8x13x13 (v1xv2xv3), is there anyway to write that block
sentence in an automated way? I recall some function that could do that but
I can't remenber which one...

Thanks to everybody and especially to Bert and David for trying to assist
me with this one. And apologizes for not being so clear upfront but I was
trying to figure it out myself too...

Kind regards,

Luca

===

rm(list=ls())

# this is usual (an extract of) the INPUT file I have:
f1 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B", "B",
"B", "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A",
"B", "C", "A", "B", "C"), v3 = c("B", "B", "B", "C", "C", "C",
"B", "B", "B", "C", "C", "C"), v4 = c(18.18530, 3.43806,0.00273, 1.42917,
1.05786, 0.00042, 2.37232, 3.01835, 0, 1.13430, 0.92872,
0)), .Names = c("v1", "v2", "v3", "v4"), class = "data.frame", row.names =
c(2L,
9L, 11L, 41L, 48L, 50L, 158L, 165L, 167L, 197L, 204L, 206L))

#first I order the file such that I have 6 distinct v1xv2 combinations
f1 <- f1[order(f1$v1,f1$v2),]

#I compute the relative importance of each v1xv2 automatically
t1 <- aggregate(v4~1,f1,sum)
tXX <- aggregate(v4~v1*v2,f1,sum)
tAA <- as.numeric(tXX$v4[tXX$v1=="A"&tXX$v2=="A"]/t1)
tAB <- as.numeric(tXX$v4[tXX$v1=="A"&tXX$v2=="B"]/t1)
tAC <- as.numeric(tXX$v4[tXX$v1=="A"&tXX$v2=="C"]/t1)
tBA <- as.numeric(tXX$v4[tXX$v1=="B"&tXX$v2=="A"]/t1)
tBB <- as.numeric(tXX$v4[tXX$v1=="B"&tXX$v2=="B"]/t1)
tBC <- as.numeric(tXX$v4[tXX$v1=="B"&tXX$v2=="C"]/t1)
tAA+tAB+tAC+tBA+tBB+tBC
rm(t1)

# Next, I compute the difference I need to compute for each C category
(t1 <- aggregate(v4~v3,f1,sum)) # this is the actual distribution
(t2 <- structure(list(v3 = c("B", "C"), v4 = c(29, 2.56723)), .Names =
c("v3",
"v4"), row.names = c(NA, -2L), class = "data.frame")) # this is the target
distribution

# I verify t1 & t2 total is the same
aggregate(v4~1,t1,sum)
aggregate(v4~1,t2,sum)

# I determine the value to be added/subtracted to each instance of v3
t1 <- merge(t1,t2,by="v3")
t1$dif <- t1$v4.y-t1$v4.x
t1 <- t1[,c("v3","dif")]
t1

# I merge the t1 file with the f1
f1 <- merge (f1,t1,by="v3")
f1
rm(t1,t2)

# I compute the modified v4 value
f1$v4mod <- f1$v4
f1$v4mod <- ifelse (f1$v1=="A" & f1$v2=="A" & f1$v3=="B",
f1$v4+(tAA*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="A" & f1$v2=="A" & f1$v3=="C",
f1$v4+(tAA*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="A" & f1$v2=="B" & f1$v3=="B",
f1$v4+(tAB*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="A" & f1$v2=="B" & f1$v3=="C",
f1$v4+(tAB*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="A" & f1$v2=="C" & f1$v3=="B",
f1$v4+(tAC*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="A" & f1$v2=="C" & f1$v3=="C",
f1$v4+(tAC*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="B" & f1$v2=="A" & f1$v3=="B",
f1$v4+(tBA*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="B" & f1$v2=="A" & f1$v3=="C",
f1$v4+(tBA*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="B" & f1$v2=="B" & f1$v3=="B",
f1$v4+(tBB*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="B" & f1$v2=="B" & f1$v3=="C",
f1$v4+(tBB*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="B" & f1$v2=="C" & f1$v3=="B",
f1$v4+(tBC*f1$dif), f1$v4mod)
f1$v4mod <- ifelse (f1$v1=="B" & f1$v2=="C" & f1$v3=="C",
f1$v4+(tBC*f1$dif), f1$v4mod)
f1

# i compare original vs modified marginal distributions
aggregate(v4~v1*v2,f1,sum)
aggregate(v4mod~v1*v2,f1,sum)
aggregate(v4~v3,f1,sum)
aggregate(v4mod~v3,f1,sum)
aggregate(v4~1,f1,sum)
aggregate(v4mod~1,f1,sum)

rm(list=ls())



2015-03-23 9:10 GMT+01:00 Luca Meyer <lucam1968 a gmail.com>:

> Hi David, hello R-experts
>
> Thank you for your input. I have tried the syntax you suggested but
> unfortunately the marginal distributions v1xv2 change after the
> manipulation. Please see below or
> https://www.dropbox.com/s/qhmpkkrejjkpbkx/sample_code.txt?dl=0 for the
> syntax.
>
> > rm(list=ls())
> >
> > # this is usual (an extract of) the INPUT file I have:
> > f1 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B", "B",
> + "B", "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A",
> + "B", "C", "A", "B", "C"), v3 = c("B", "B", "B", "C", "C", "C",
> + "B", "B", "B", "C", "C", "C"), v4 = c(18.18530, 3.43806,0.00273,
> 1.42917, 1.05786, 0.00042, 2.37232, 3.01835, 0, 1.13430, 0.92872,
> + 0)), .Names = c("v1", "v2", "v3", "v4"), class = "data.frame", row.names
> = c(2L,
> + 9L, 11L, 41L, 48L, 50L, 158L, 165L, 167L, 197L, 204L, 206L))
> >
> > #first I order the file such that I have 6 distinct v1xv2 combinations
> > f1 <- f1[order(f1$v1,f1$v2),]
> >
> > # then I compute (manually) the relative importance of each v1xv2
> combination:
> > tAA <-
> (18.18530+1.42917)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
> # this is for combination v1=A & v2=A
> > tAB <-
> (3.43806+1.05786)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
> # this is for combination v1=A & v2=B
> > tAC <-
> (0.00273+0.00042)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
> # this is for combination v1=A & v2=C
> > tBA <-
> (2.37232+1.13430)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
> # this is for combination v1=B & v2=A
> > tBB <-
> (3.01835+0.92872)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
> # this is for combination v1=B & v2=B
> > tBC <-
> (0.00000+0.00000)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
> # this is for combination v1=B & v2=C
> > # and just to make sure I have not made mistakes the following should be
> equal to 1
> > tAA+tAB+tAC+tBA+tBB+tBC
> [1] 1
> >
> > # procedure suggested by David Winsemius
> > lookarr <- array(NA,
> dim=c(length(unique(f1$v1)),length(unique(f1$v2)),length(unique(f1$v3)) ) ,
> dimnames=list( unique(f1$v1), unique(f1$v2), unique(f1$v3) ) )
> > lookarr[] <- c(tAA,tAA,tAB,tAB,tAC,tAC,tBA,tBA,tBB,tBB,tBC,tBC)
> > lookarr["A","B","C"]
> [1] 0.1250369
> > lookarr[ with(f1, cbind(v1, v2, v3)) ]
>  [1] 6.213554e-01 1.110842e-01 1.424236e-01 1.250369e-01 9.978703e-05
> 0.000000e+00 6.213554e-01 1.110842e-01 1.424236e-01 1.250369e-01
> 9.978703e-05
> [12] 0.000000e+00
> > f1$v4mod <- f1$v4*lookarr[ with(f1, cbind(v1,v2,v3)) ]
> >
> > # i compare original vs modified marginal distributions
> > aggregate(v4~v1*v2,f1,sum)
>   v1 v2       v4
> 1  A  A 19.61447
> 2  B  A  3.50662
> 3  A  B  4.49592
> 4  B  B  3.94707
> 5  A  C  0.00315
> 6  B  C  0.00000
> > aggregate(v4mod~v1*v2,f1,sum)
>   v1 v2        v4mod
> 1  A  A 1.145829e+01
> 2  B  A 1.600057e+00
> 3  A  B 6.219326e-01
> 4  B  B 5.460087e-01
> 5  A  C 2.724186e-07
> 6  B  C 0.000000e+00
> > aggregate(v4~v3,f1,sum)
>   v3       v4
> 1  B 27.01676
> 2  C  4.55047
> > aggregate(v4mod~v3,f1,sum)
>   v3      v4mod
> 1  B 13.6931347
> 2  C  0.5331569
>
> Any suggestion on how this can be fixed? Remember, I am searching for a
> solution where by aggregate(v4~v1*v2,f1,sum)==aggregate(v4~v1*v2,f1,sum)
> while aggregate(v4~v3,f1,sum)!=aggregate(v4mod~v3,f1,sum) by specified
> amounts (see my earlier example).
>
> Thank you very much,
>
> Luca
>
>
> 2015-03-22 22:11 GMT+01:00 David Winsemius <dwinsemius a comcast.net>:
>
>>
>> On Mar 22, 2015, at 1:12 PM, Luca Meyer wrote:
>>
>> > Hi Bert,
>> >
>> > Maybe I did not explain myself clearly enough. But let me show you with
>> a
>> > manual example that indeed what I would like to do is feasible.
>> >
>> > The following is also available for download from
>> > https://www.dropbox.com/s/qhmpkkrejjkpbkx/sample_code.txt?dl=0
>> >
>> > rm(list=ls())
>> >
>> > This is usual (an extract of) the INPUT file I have:
>> >
>> > f1 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B", "B",
>> > "B", "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A",
>> > "B", "C", "A", "B", "C"), v3 = c("B", "B", "B", "C", "C", "C",
>> > "B", "B", "B", "C", "C", "C"), v4 = c(18.18530, 3.43806,0.00273,
>> 1.42917,
>> > 1.05786, 0.00042, 2.37232, 3.01835, 0, 1.13430, 0.92872,
>> > 0)), .Names = c("v1", "v2", "v3", "v4"), class = "data.frame",
>> row.names =
>> > c(2L,
>> > 9L, 11L, 41L, 48L, 50L, 158L, 165L, 167L, 197L, 204L, 206L))
>> >
>> > This are the initial marginal distributions
>> >
>> > aggregate(v4~v1*v2,f1,sum)
>> > aggregate(v4~v3,f1,sum)
>> >
>> > First I order the file such that I have nicely listed 6 distinct v1xv2
>> > combinations.
>> >
>> > f1 <- f1[order(f1$v1,f1$v2),]
>> >
>> > Then I compute (manually) the relative importance of each v1xv2
>> combination:
>> >
>> > tAA <-
>> >
>> (18.18530+1.42917)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
>> > # this is for combination v1=A & v2=A
>> > tAB <-
>> >
>> (3.43806+1.05786)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
>> > # this is for combination v1=A & v2=B
>> > tAC <-
>> >
>> (0.00273+0.00042)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
>> > # this is for combination v1=A & v2=C
>> > tBA <-
>> >
>> (2.37232+1.13430)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
>> > # this is for combination v1=B & v2=A
>> > tBB <-
>> >
>> (3.01835+0.92872)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
>> > # this is for combination v1=B & v2=B
>> > tBC <-
>> >
>> (0.00000+0.00000)/(18.18530+1.42917+3.43806+1.05786+0.00273+0.00042+2.37232+1.13430+3.01835+0.92872+0.00000+0.00000)
>> > # this is for combination v1=B & v2=C
>> > # and just to make sure I have not made mistakes the following should be
>> > equal to 1
>> > tAA+tAB+tAC+tBA+tBB+tBC
>> >
>> > Next, I know I need to increase v4 any time v3=B and the total increase
>> I
>> > need to have over the whole dataset is 29-27.01676=1.98324. In turn, I
>> need
>> > to dimish v4 any time V3=C by the same amount (4.55047-2.56723=1.98324).
>> > This aspect was perhaps not clear at first. I need to move v4 across v3
>> > categories, but the totals will always remain unchanged.
>> >
>> > Since I want the data alteration to be proportional to the v1xv2
>> > combinations I do the following:
>> >
>> > f1$v4 <- ifelse (f1$v1=="A" & f1$v2=="A" & f1$v3=="B",
>> f1$v4+(tAA*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="A" & f1$v2=="A" & f1$v3=="C",
>> f1$v4-(tAA*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="A" & f1$v2=="B" & f1$v3=="B",
>> f1$v4+(tAB*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="A" & f1$v2=="B" & f1$v3=="C",
>> f1$v4-(tAB*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="A" & f1$v2=="C" & f1$v3=="B",
>> f1$v4+(tAC*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="A" & f1$v2=="C" & f1$v3=="C",
>> f1$v4-(tAC*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="B" & f1$v2=="A" & f1$v3=="B",
>> f1$v4+(tBA*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="B" & f1$v2=="A" & f1$v3=="C",
>> f1$v4-(tBA*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="B" & f1$v2=="B" & f1$v3=="B",
>> f1$v4+(tBB*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="B" & f1$v2=="B" & f1$v3=="C",
>> f1$v4-(tBB*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="B" & f1$v2=="C" & f1$v3=="B",
>> f1$v4+(tBC*1.98324),
>> > f1$v4)
>> > f1$v4 <- ifelse (f1$v1=="B" & f1$v2=="C" & f1$v3=="C",
>> f1$v4-(tBC*1.98324),
>> > f1$v4)
>> >
>>
>> Seems that this could be done a lot more simply with a lookup matrix and
>> ordinary indexing
>>
>> > lookarr <- array(NA,
>> dim=c(length(unique(f1$v1)),length(unique(f1$v2)),length(unique(f1$v3)) ) ,
>> dimnames=list( unique(f1$v1), unique(f1$v2), unique(f1$v3) ) )
>> > lookarr[] <- c(tAA,tAA,tAB,tAB,tAC,tAC,tBA,tBA,
>>                  tBB, tBB, tBC, tBC)
>>
>> > lookarr[ "A","B","C"]
>> [1] 0.1250369
>>
>> > lookarr[ with(f1, cbind(v1, v2, v3)) ]
>>  [1] 6.213554e-01 1.110842e-01 1.424236e-01 1.250369e-01 9.978703e-05
>>  [6] 0.000000e+00 6.213554e-01 1.110842e-01 1.424236e-01 1.250369e-01
>> [11] 9.978703e-05 0.000000e+00
>> > f1$v4mod <- f1$v4*lookarr[ with(f1, cbind(v1,v2,v3)) ]
>> > f1
>>     v1 v2 v3       v4        v4mod
>> 2    A  A  B 18.18530 1.129954e+01
>> 41   A  A  C  1.42917 1.587582e-01
>> 9    A  B  B  3.43806 4.896610e-01
>> 48   A  B  C  1.05786 1.322716e-01
>> 11   A  C  B  0.00273 2.724186e-07
>> 50   A  C  C  0.00042 0.000000e+00
>> 158  B  A  B  2.37232 1.474054e+00
>> 197  B  A  C  1.13430 1.260028e-01
>> 165  B  B  B  3.01835 4.298844e-01
>> 204  B  B  C  0.92872 1.161243e-01
>> 167  B  C  B  0.00000 0.000000e+00
>> 206  B  C  C  0.00000 0.000000e+00
>>
>> --
>> david.
>>
>>
>> > This are the final marginal distributions:
>> >
>> > aggregate(v4~v1*v2,f1,sum)
>> > aggregate(v4~v3,f1,sum)
>> >
>> > Can this procedure be made programmatic so that I can run it on the
>> > (8x13x13) categories matrix? if so, how would you do it? I have really
>> hard
>> > time to do it with some (semi)automatic procedure.
>> >
>> > Thank you very much indeed once more :)
>> >
>> > Luca
>> >
>> >
>> > 2015-03-22 18:32 GMT+01:00 Bert Gunter <gunter.berton a gene.com>:
>> >
>> >> Nonsense. You are not telling us something or I have failed to
>> >> understand something.
>> >>
>> >> Consider:
>> >>
>> >> v1 = c("a","b")
>> >> v2 = "c("a","a")
>> >>
>> >> It is not possible to change the value of a sum of values
>> >> corresponding to v2="a" without also changing that for v1, which is
>> >> not supposed to change according to my understanding of your
>> >> specification.
>> >>
>> >> So I'm done.
>> >>
>> >> -- Bert
>> >>
>> >>
>> >> Bert Gunter
>> >> Genentech Nonclinical Biostatistics
>> >> (650) 467-7374
>> >>
>> >> "Data is not information. Information is not knowledge. And knowledge
>> >> is certainly not wisdom."
>> >> Clifford Stoll
>> >>
>> >>
>> >>
>> >>
>> >> On Sun, Mar 22, 2015 at 8:28 AM, Luca Meyer <lucam1968 a gmail.com>
>> wrote:
>> >>> Sorry forgot to keep the rest of the group in the loop - Luca
>> >>> ---------- Forwarded message ----------
>> >>> From: Luca Meyer <lucam1968 a gmail.com>
>> >>> Date: 2015-03-22 16:27 GMT+01:00
>> >>> Subject: Re: [R] Joining two datasets - recursive procedure?
>> >>> To: Bert Gunter <gunter.berton a gene.com>
>> >>>
>> >>>
>> >>> Hi Bert,
>> >>>
>> >>> That is exactly what I am trying to achieve. Please notice that
>> negative
>> >> v4
>> >>> values are allowed. I have done a similar task in the past manually by
>> >>> recursively alterating v4 distribution across v3 categories within fix
>> >> each
>> >>> v1&v2 combination so I am quite positive it can be achieved but
>> honestly
>> >> I
>> >>> took me forever to do it manually and since this is likely to be an
>> >>> exercise I need to repeat from time to time I wish I could learn how
>> to
>> >> do
>> >>> it programmatically....
>> >>>
>> >>> Thanks again for any further suggestion you might have,
>> >>>
>> >>> Luca
>> >>>
>> >>>
>> >>> 2015-03-22 16:05 GMT+01:00 Bert Gunter <gunter.berton a gene.com>:
>> >>>
>> >>>> Oh, wait a minute ...
>> >>>>
>> >>>> You still want the marginals for the other columns to be as
>> originally?
>> >>>>
>> >>>> If so, then this is impossible in general as the sum of all the
>> values
>> >>>> must be what they were originally and you cannot therefore choose
>> your
>> >>>> values for V3 arbitrarily.
>> >>>>
>> >>>> Or at least, that seems to be what you are trying to do.
>> >>>>
>> >>>> -- Bert
>> >>>>
>> >>>> Bert Gunter
>> >>>> Genentech Nonclinical Biostatistics
>> >>>> (650) 467-7374
>> >>>>
>> >>>> "Data is not information. Information is not knowledge. And knowledge
>> >>>> is certainly not wisdom."
>> >>>> Clifford Stoll
>> >>>>
>> >>>>
>> >>>>
>> >>>>
>> >>>> On Sun, Mar 22, 2015 at 7:55 AM, Bert Gunter <bgunter a gene.com>
>> wrote:
>> >>>>> I would have thought that this is straightforward given my previous
>> >>>> email...
>> >>>>>
>> >>>>> Just set z to what you want -- e,g, all B values to 29/number of
>> B's,
>> >>>>> and all C values to 2.567/number of C's (etc. for more categories).
>> >>>>>
>> >>>>> A slick but sort of cheat way to do this programmatically -- in the
>> >>>>> sense that it relies on the implementation of factor() rather than
>> its
>> >>>>> API -- is:
>> >>>>>
>> >>>>> y <- f1$v3  ## to simplify the notation; could be done using with()
>> >>>>> z <- (c(29,2.567)/table(y))[c(y)]
>> >>>>>
>> >>>>> Then proceed to z1 as I previously described
>> >>>>>
>> >>>>> -- Bert
>> >>>>>
>> >>>>>
>> >>>>> Bert Gunter
>> >>>>> Genentech Nonclinical Biostatistics
>> >>>>> (650) 467-7374
>> >>>>>
>> >>>>> "Data is not information. Information is not knowledge. And
>> knowledge
>> >>>>> is certainly not wisdom."
>> >>>>> Clifford Stoll
>> >>>>>
>> >>>>>
>> >>>>>
>> >>>>>
>> >>>>> On Sun, Mar 22, 2015 at 2:00 AM, Luca Meyer <lucam1968 a gmail.com>
>> >> wrote:
>> >>>>>> Hi Bert, hello R-experts,
>> >>>>>>
>> >>>>>> I am close to a solution but I still need one hint w.r.t. the
>> >> following
>> >>>>>> procedure (available also from
>> >>>>>> https://www.dropbox.com/s/qhmpkkrejjkpbkx/sample_code.txt?dl=0)
>> >>>>>>
>> >>>>>> rm(list=ls())
>> >>>>>>
>> >>>>>> # this is (an extract of) the INPUT file I have:
>> >>>>>> f1 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B", "B",
>> >> "B",
>> >>>>>> "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A", "B", "C",
>> >> "A",
>> >>>>>> "B", "C"), v3 = c("B", "B", "B", "C", "C", "C", "B", "B", "B", "C",
>> >> "C",
>> >>>>>> "C"), v4 = c(18.18530, 3.43806,0.00273, 1.42917, 1.05786, 0.00042,
>> >>>> 2.37232,
>> >>>>>> 3.01835, 0, 1.13430, 0.92872, 0)), .Names = c("v1", "v2", "v3",
>> >> "v4"),
>> >>>> class
>> >>>>>> = "data.frame", row.names = c(2L, 9L, 11L, 41L, 48L, 50L, 158L,
>> 165L,
>> >>>> 167L,
>> >>>>>> 197L, 204L, 206L))
>> >>>>>>
>> >>>>>> # this is the procedure that Bert suggested (slightly adjusted):
>> >>>>>> z <- rnorm(nrow(f1)) ## or anything you want
>> >>>>>> z1 <- round(with(f1,v4 + z -ave(z,v1,v2,FUN=mean)), digits=5)
>> >>>>>> aggregate(v4~v1*v2,f1,sum)
>> >>>>>> aggregate(z1~v1*v2,f1,sum)
>> >>>>>> aggregate(v4~v3,f1,sum)
>> >>>>>> aggregate(z1~v3,f1,sum)
>> >>>>>>
>> >>>>>> My question to you is: how can I set z so that I can obtain
>> specific
>> >>>> values
>> >>>>>> for z1-v4 in the v3 aggregation?
>> >>>>>> In other words, how can I configure the procedure so that e.g. B=29
>> >> and
>> >>>>>> C=2.56723 after running the procedure:
>> >>>>>> aggregate(z1~v3,f1,sum)
>> >>>>>>
>> >>>>>> Thank you,
>> >>>>>>
>> >>>>>> Luca
>> >>>>>>
>> >>>>>> PS: to avoid any doubts you might have about who I am the following
>> >> is
>> >>>> my
>> >>>>>> web page: http://lucameyer.wordpress.com/
>> >>>>>>
>> >>>>>>
>> >>>>>> 2015-03-21 18:13 GMT+01:00 Bert Gunter <gunter.berton a gene.com>:
>> >>>>>>>
>> >>>>>>> ... or cleaner:
>> >>>>>>>
>> >>>>>>> z1 <- with(f1,v4 + z -ave(z,v1,v2,FUN=mean))
>> >>>>>>>
>> >>>>>>>
>> >>>>>>> Just for curiosity, was this homework? (in which case I should
>> >>>>>>> probably have not provided you an answer -- that is, assuming
>> that I
>> >>>>>>> HAVE provided an answer).
>> >>>>>>>
>> >>>>>>> Cheers,
>> >>>>>>> Bert
>> >>>>>>>
>> >>>>>>> Bert Gunter
>> >>>>>>> Genentech Nonclinical Biostatistics
>> >>>>>>> (650) 467-7374
>> >>>>>>>
>> >>>>>>> "Data is not information. Information is not knowledge. And
>> >> knowledge
>> >>>>>>> is certainly not wisdom."
>> >>>>>>> Clifford Stoll
>> >>>>>>>
>> >>>>>>>
>> >>>>>>>
>> >>>>>>>
>> >>>>>>> On Sat, Mar 21, 2015 at 7:53 AM, Bert Gunter <bgunter a gene.com>
>> >> wrote:
>> >>>>>>>> z <- rnorm(nrow(f1)) ## or anything you want
>> >>>>>>>> z1 <- f1$v4 + z - with(f1,ave(z,v1,v2,FUN=mean))
>> >>>>>>>>
>> >>>>>>>>
>> >>>>>>>> aggregate(v4~v1,f1,sum)
>> >>>>>>>> aggregate(z1~v1,f1,sum)
>> >>>>>>>> aggregate(v4~v2,f1,sum)
>> >>>>>>>> aggregate(z1~v2,f1,sum)
>> >>>>>>>> aggregate(v4~v3,f1,sum)
>> >>>>>>>> aggregate(z1~v3,f1,sum)
>> >>>>>>>>
>> >>>>>>>>
>> >>>>>>>> Cheers,
>> >>>>>>>> Bert
>> >>>>>>>>
>> >>>>>>>> Bert Gunter
>> >>>>>>>> Genentech Nonclinical Biostatistics
>> >>>>>>>> (650) 467-7374
>> >>>>>>>>
>> >>>>>>>> "Data is not information. Information is not knowledge. And
>> >> knowledge
>> >>>>>>>> is certainly not wisdom."
>> >>>>>>>> Clifford Stoll
>> >>>>>>>>
>> >>>>>>>>
>> >>>>>>>>
>> >>>>>>>>
>> >>>>>>>> On Sat, Mar 21, 2015 at 6:49 AM, Luca Meyer <lucam1968 a gmail.com
>> >
>> >>>> wrote:
>> >>>>>>>>> Hi Bert,
>> >>>>>>>>>
>> >>>>>>>>> Thank you for your message. I am looking into ave() and tapply()
>> >> as
>> >>>> you
>> >>>>>>>>> suggested but at the same time I have prepared a example of
>> input
>> >>>> and
>> >>>>>>>>> output
>> >>>>>>>>> files, just in case you or someone else would like to make an
>> >>>> attempt
>> >>>>>>>>> to
>> >>>>>>>>> generate a code that goes from input to output.
>> >>>>>>>>>
>> >>>>>>>>> Please see below or download it from
>> >>>>>>>>> https://www.dropbox.com/s/qhmpkkrejjkpbkx/sample_code.txt?dl=0
>> >>>>>>>>>
>> >>>>>>>>> # this is (an extract of) the INPUT file I have:
>> >>>>>>>>> f1 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B",
>> >> "B",
>> >>>>>>>>> "B", "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A",
>> >>>>>>>>> "B", "C", "A", "B", "C"), v3 = c("B", "B", "B", "C", "C", "C",
>> >>>>>>>>> "B", "B", "B", "C", "C", "C"), v4 = c(18.18530, 3.43806,0.00273,
>> >>>>>>>>> 1.42917,
>> >>>>>>>>> 1.05786, 0.00042, 2.37232, 3.01835, 0, 1.13430, 0.92872,
>> >>>>>>>>> 0)), .Names = c("v1", "v2", "v3", "v4"), class = "data.frame",
>> >>>>>>>>> row.names =
>> >>>>>>>>> c(2L,
>> >>>>>>>>> 9L, 11L, 41L, 48L, 50L, 158L, 165L, 167L, 197L, 204L, 206L))
>> >>>>>>>>>
>> >>>>>>>>> # this is (an extract of) the OUTPUT file I would like to
>> obtain:
>> >>>>>>>>> f2 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B",
>> >> "B",
>> >>>>>>>>> "B", "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A",
>> >>>>>>>>> "B", "C", "A", "B", "C"), v3 = c("B", "B", "B", "C", "C", "C",
>> >>>>>>>>> "B", "B", "B", "C", "C", "C"), v4 = c(17.83529, 3.43806,0.00295,
>> >>>>>>>>> 1.77918,
>> >>>>>>>>> 1.05786, 0.0002, 2.37232, 3.01835, 0, 1.13430, 0.92872,
>> >>>>>>>>> 0)), .Names = c("v1", "v2", "v3", "v4"), class = "data.frame",
>> >>>>>>>>> row.names =
>> >>>>>>>>> c(2L,
>> >>>>>>>>> 9L, 11L, 41L, 48L, 50L, 158L, 165L, 167L, 197L, 204L, 206L))
>> >>>>>>>>>
>> >>>>>>>>> # please notice that while the aggregated v4 on v3 has changed …
>> >>>>>>>>> aggregate(f1[,c("v4")],list(f1$v3),sum)
>> >>>>>>>>> aggregate(f2[,c("v4")],list(f2$v3),sum)
>> >>>>>>>>>
>> >>>>>>>>> # … the aggregated v4 over v1xv2 has remained unchanged:
>> >>>>>>>>> aggregate(f1[,c("v4")],list(f1$v1,f1$v2),sum)
>> >>>>>>>>> aggregate(f2[,c("v4")],list(f2$v1,f2$v2),sum)
>> >>>>>>>>>
>> >>>>>>>>> Thank you very much in advance for your assitance.
>> >>>>>>>>>
>> >>>>>>>>> Luca
>> >>>>>>>>>
>> >>>>>>>>> 2015-03-21 13:18 GMT+01:00 Bert Gunter <gunter.berton a gene.com
>> >:
>> >>>>>>>>>>
>> >>>>>>>>>> 1. Still not sure what you mean, but maybe look at ?ave and
>> >>>> ?tapply,
>> >>>>>>>>>> for which ave() is a wrapper.
>> >>>>>>>>>>
>> >>>>>>>>>> 2. You still need to heed the rest of Jeff's advice.
>> >>>>>>>>>>
>> >>>>>>>>>> Cheers,
>> >>>>>>>>>> Bert
>> >>>>>>>>>>
>> >>>>>>>>>> Bert Gunter
>> >>>>>>>>>> Genentech Nonclinical Biostatistics
>> >>>>>>>>>> (650) 467-7374
>> >>>>>>>>>>
>> >>>>>>>>>> "Data is not information. Information is not knowledge. And
>> >>>> knowledge
>> >>>>>>>>>> is certainly not wisdom."
>> >>>>>>>>>> Clifford Stoll
>> >>>>>>>>>>
>> >>>>>>>>>>
>> >>>>>>>>>>
>> >>>>>>>>>>
>> >>>>>>>>>> On Sat, Mar 21, 2015 at 4:53 AM, Luca Meyer <
>> >> lucam1968 a gmail.com>
>> >>>>>>>>>> wrote:
>> >>>>>>>>>>> Hi Jeff & other R-experts,
>> >>>>>>>>>>>
>> >>>>>>>>>>> Thank you for your note. I have tried myself to solve the
>> >> issue
>> >>>>>>>>>>> without
>> >>>>>>>>>>> success.
>> >>>>>>>>>>>
>> >>>>>>>>>>> Following your suggestion, I am providing a sample of the
>> >>>> dataset I
>> >>>>>>>>>>> am
>> >>>>>>>>>>> using below (also downloadble in plain text from
>> >>>>>>>>>>>
>> >> https://www.dropbox.com/s/qhmpkkrejjkpbkx/sample_code.txt?dl=0):
>> >>>>>>>>>>>
>> >>>>>>>>>>> #this is an extract of the overall dataset (n=1200 cases)
>> >>>>>>>>>>> f1 <- structure(list(v1 = c("A", "A", "A", "A", "A", "A", "B",
>> >>>> "B",
>> >>>>>>>>>>> "B", "B", "B", "B"), v2 = c("A", "B", "C", "A", "B", "C", "A",
>> >>>>>>>>>>> "B", "C", "A", "B", "C"), v3 = c("B", "B", "B", "C", "C", "C",
>> >>>>>>>>>>> "B", "B", "B", "C", "C", "C"), v4 = c(18.1853007621835,
>> >>>>>>>>>>> 3.43806581506388,
>> >>>>>>>>>>> 0.002733567617055, 1.42917483425029, 1.05786640463504,
>> >>>>>>>>>>> 0.000420548864162308,
>> >>>>>>>>>>> 2.37232740842861, 3.01835841813241, 0, 1.13430282139936,
>> >>>>>>>>>>> 0.928725667117666,
>> >>>>>>>>>>> 0)), .Names = c("v1", "v2", "v3", "v4"), class = "data.frame",
>> >>>>>>>>>>> row.names
>> >>>>>>>>>>> =
>> >>>>>>>>>>> c(2L,
>> >>>>>>>>>>> 9L, 11L, 41L, 48L, 50L, 158L, 165L, 167L, 197L, 204L, 206L))
>> >>>>>>>>>>>
>> >>>>>>>>>>> I need to find a automated procedure that allows me to adjust
>> >> v3
>> >>>>>>>>>>> marginals
>> >>>>>>>>>>> while maintaining v1xv2 marginals unchanged.
>> >>>>>>>>>>>
>> >>>>>>>>>>> That is: modify the v4 values you can find by running:
>> >>>>>>>>>>>
>> >>>>>>>>>>> aggregate(f1[,c("v4")],list(f1$v3),sum)
>> >>>>>>>>>>>
>> >>>>>>>>>>> while maintaining costant the values you can find by running:
>> >>>>>>>>>>>
>> >>>>>>>>>>> aggregate(f1[,c("v4")],list(f1$v1,f1$v2),sum)
>> >>>>>>>>>>>
>> >>>>>>>>>>> Now does it make sense?
>> >>>>>>>>>>>
>> >>>>>>>>>>> Please notice I have tried to build some syntax that tries to
>> >>>> modify
>> >>>>>>>>>>> values
>> >>>>>>>>>>> within each v1xv2 combination by computing sum of v4, row
>> >>>> percentage
>> >>>>>>>>>>> in
>> >>>>>>>>>>> terms of v4, and there is where my effort is blocked. Not
>> >> really
>> >>>>>>>>>>> sure
>> >>>>>>>>>>> how I
>> >>>>>>>>>>> should proceed. Any suggestion?
>> >>>>>>>>>>>
>> >>>>>>>>>>> Thanks,
>> >>>>>>>>>>>
>> >>>>>>>>>>> Luca
>> >>>>>>>>>>>
>> >>>>>>>>>>>
>> >>>>>>>>>>> 2015-03-19 2:38 GMT+01:00 Jeff Newmiller <
>> >>>> jdnewmil a dcn.davis.ca.us>:
>> >>>>>>>>>>>
>> >>>>>>>>>>>> I don't understand your description. The standard practice on
>> >>>> this
>> >>>>>>>>>>>> list
>> >>>>>>>>>>>> is
>> >>>>>>>>>>>> to provide a reproducible R example [1] of the kind of data
>> >> you
>> >>>> are
>> >>>>>>>>>>>> working
>> >>>>>>>>>>>> with (and any code you have tried) to go along with your
>> >>>>>>>>>>>> description.
>> >>>>>>>>>>>> In
>> >>>>>>>>>>>> this case, that would be two dputs of your input data frames
>> >>>> and a
>> >>>>>>>>>>>> dput
>> >>>>>>>>>>>> of
>> >>>>>>>>>>>> an output data frame (generated by hand from your input data
>> >>>>>>>>>>>> frame).
>> >>>>>>>>>>>> (Probably best to not use the full number of input values
>> >> just
>> >>>> to
>> >>>>>>>>>>>> keep
>> >>>>>>>>>>>> the
>> >>>>>>>>>>>> size down.) We could then make an attempt to generate code
>> >> that
>> >>>>>>>>>>>> goes
>> >>>>>>>>>>>> from
>> >>>>>>>>>>>> input to output.
>> >>>>>>>>>>>>
>> >>>>>>>>>>>> Of course, if you post that hard work using HTML then it will
>> >>>> get
>> >>>>>>>>>>>> corrupted (much like the text below from your earlier emails)
>> >>>> and
>> >>>>>>>>>>>> we
>> >>>>>>>>>>>> won't
>> >>>>>>>>>>>> be able to use it. Please learn to post from your email
>> >> software
>> >>>>>>>>>>>> using
>> >>>>>>>>>>>> plain text when corresponding with this mailing list.
>> >>>>>>>>>>>>
>> >>>>>>>>>>>> [1]
>> >>>>>>>>>>>>
>> >>>>>>>>>>>>
>> >>>>>>>>>>>>
>> >>>>
>> >>
>> http://stackoverflow.com/questions/5963269/how-to-make-a-great-r-reproducible-example
>> >>>>>>>>>>>>
>> >>>>>>>>>>>>
>> >>>>>>>>>>>>
>> >>>>
>> >>
>> ---------------------------------------------------------------------------
>> >>>>>>>>>>>> Jeff Newmiller                        The     .....
>> >>>> .....  Go
>> >>>>>>>>>>>> Live...
>> >>>>>>>>>>>> DCN:<jdnewmil a dcn.davis.ca.us>        Basics: ##.#.
>> >> ##.#.
>> >>>>>>>>>>>> Live
>> >>>>>>>>>>>> Go...
>> >>>>>>>>>>>>                                      Live:   OO#.. Dead:
>> >> OO#..
>> >>>>>>>>>>>> Playing
>> >>>>>>>>>>>> Research Engineer (Solar/Batteries            O.O#.
>> >> #.O#.
>> >>>>>>>>>>>> with
>> >>>>>>>>>>>> /Software/Embedded Controllers)               .OO#.
>> >> .OO#.
>> >>>>>>>>>>>> rocks...1k
>> >>>>>>>>>>>>
>> >>>>>>>>>>>>
>> >>>>>>>>>>>>
>> >>>>
>> >>
>> ---------------------------------------------------------------------------
>> >>>>>>>>>>>> Sent from my phone. Please excuse my brevity.
>> >>>>>>>>>>>>
>> >>>>>>>>>>>> On March 18, 2015 9:05:37 AM PDT, Luca Meyer <
>> >>>> lucam1968 a gmail.com>
>> >>>>>>>>>>>> wrote:
>> >>>>>>>>>>>>> Thanks for you input Michael,
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> The continuous variable I have measures quantities (down to
>> >> the
>> >>>>>>>>>>>>> 3rd
>> >>>>>>>>>>>>> decimal level) so unfortunately are not frequencies.
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> Any more specific suggestions on how that could be tackled?
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> Thanks & kind regards,
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> Luca
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> ===
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> Michael Friendly wrote:
>> >>>>>>>>>>>>> I'm not sure I understand completely what you want to do,
>> >> but
>> >>>>>>>>>>>>> if the data were frequencies, it sounds like task for
>> >> fitting a
>> >>>>>>>>>>>>> loglinear model with the model formula
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> ~ V1*V2 + V3
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>> On 3/18/2015 2:17 AM, Luca Meyer wrote:
>> >>>>>>>>>>>>>> * Hello,
>> >>>>>>>>>>>>> *>>* I am facing a quite challenging task (at least to me)
>> >> and
>> >>>> I
>> >>>>>>>>>>>>> was
>> >>>>>>>>>>>>> wondering
>> >>>>>>>>>>>>> *>* if someone could advise how R could assist me to speed
>> >> the
>> >>>>>>>>>>>>> task
>> >>>>>>>>>>>>> up.
>> >>>>>>>>>>>>> *>>* I am dealing with a dataset with 3 discrete variables
>> >> and
>> >>>> one
>> >>>>>>>>>>>>> continuous
>> >>>>>>>>>>>>> *>* variable. The discrete variables are:
>> >>>>>>>>>>>>> *>>* V1: 8 modalities
>> >>>>>>>>>>>>> *>* V2: 13 modalities
>> >>>>>>>>>>>>> *>* V3: 13 modalities
>> >>>>>>>>>>>>> *>>* The continuous variable V4 is a decimal number always
>> >>>> greater
>> >>>>>>>>>>>>> than
>> >>>>>>>>>>>>> zero in
>> >>>>>>>>>>>>> *>* the marginals of each of the 3 variables but it is
>> >>>> sometimes
>> >>>>>>>>>>>>> equal
>> >>>>>>>>>>>>> to zero
>> >>>>>>>>>>>>> *>* (and sometimes negative) in the joint tables.
>> >>>>>>>>>>>>> *>>* I have got 2 files:
>> >>>>>>>>>>>>> *>>* => one with distribution of all possible combinations
>> >> of
>> >>>>>>>>>>>>> V1xV2
>> >>>>>>>>>>>>> (some of
>> >>>>>>>>>>>>> *>* which are zero or neagtive) and
>> >>>>>>>>>>>>> *>* => one with the marginal distribution of V3.
>> >>>>>>>>>>>>> *>>* I am trying to build the long and narrow dataset
>> >> V1xV2xV3
>> >>>> in
>> >>>>>>>>>>>>> such
>> >>>>>>>>>>>>> a way
>> >>>>>>>>>>>>> *>* that each V1xV2 cell does not get modified and V3 fits
>> >> as
>> >>>>>>>>>>>>> closely
>> >>>>>>>>>>>>> as
>> >>>>>>>>>>>>> *>* possible to its marginal distribution. Does it make
>> >> sense?
>> >>>>>>>>>>>>> *>>* To be even more specific, my 2 input files look like
>> >> the
>> >>>>>>>>>>>>> following.
>> >>>>>>>>>>>>> *>>* FILE 1
>> >>>>>>>>>>>>> *>* V1,V2,V4
>> >>>>>>>>>>>>> *>* A, A, 24.251
>> >>>>>>>>>>>>> *>* A, B, 1.065
>> >>>>>>>>>>>>> *>* (...)
>> >>>>>>>>>>>>> *>* B, C, 0.294
>> >>>>>>>>>>>>> *>* B, D, 2.731
>> >>>>>>>>>>>>> *>* (...)
>> >>>>>>>>>>>>> *>* H, L, 0.345
>> >>>>>>>>>>>>> *>* H, M, 0.000
>> >>>>>>>>>>>>> *>>* FILE 2
>> >>>>>>>>>>>>> *>* V3, V4
>> >>>>>>>>>>>>> *>* A, 1.575
>> >>>>>>>>>>>>> *>* B, 4.294
>> >>>>>>>>>>>>> *>* C, 10.044
>> >>>>>>>>>>>>> *>* (...)
>> >>>>>>>>>>>>> *>* L, 5.123
>> >>>>>>>>>>>>> *>* M, 3.334
>> >>>>>>>>>>>>> *>>* What I need to achieve is a file such as the following
>> >>>>>>>>>>>>> *>>* FILE 3
>> >>>>>>>>>>>>> *>* V1, V2, V3, V4
>> >>>>>>>>>>>>> *>* A, A, A, ???
>> >>>>>>>>>>>>> *>* A, A, B, ???
>> >>>>>>>>>>>>> *>* (...)
>> >>>>>>>>>>>>> *>* D, D, E, ???
>> >>>>>>>>>>>>> *>* D, D, F, ???
>> >>>>>>>>>>>>> *>* (...)
>> >>>>>>>>>>>>> *>* H, M, L, ???
>> >>>>>>>>>>>>> *>* H, M, M, ???
>> >>>>>>>>>>>>> *>>* Please notice that FILE 3 need to be such that if I
>> >>>> aggregate
>> >>>>>>>>>>>>> on
>> >>>>>>>>>>>>> V1+V2 I
>> >>>>>>>>>>>>> *>* recover exactly FILE 1 and that if I aggregate on V3 I
>> >> can
>> >>>>>>>>>>>>> recover
>> >>>>>>>>>>>>> a file
>> >>>>>>>>>>>>> *>* as close as possible to FILE 3 (ideally the same file).
>> >>>>>>>>>>>>> *>>* Can anyone suggest how I could do that with R?
>> >>>>>>>>>>>>> *>>* Thank you very much indeed for any assistance you are
>> >>>> able to
>> >>>>>>>>>>>>> provide.
>> >>>>>>>>>>>>> *>>* Kind regards,
>> >>>>>>>>>>>>> *>>* Luca*
>> >>>>>>>>>>>>>
>> >>>>>>>>>>>>>      [[alternative HTML version deleted]]
>>
>>
>> David Winsemius
>> Alameda, CA, USA
>>
>>
>

	[[alternative HTML version deleted]]



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