Thanks a lot for your answers.
Peter: sorry, here is the missing information:

  *   I use the function gam() of the package �mgcv�
  *   Yes, the output changes when I use offset(log_trap_eff) instead of 
offset=log_trap_eff. By using offset(log_trap_eff), the output is more coherent 
with the observed values. Here are the new predictions:
> summary(mod$fit)
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
10.01   68.14   85.71   83.16  101.00  130.20


  *   I have tried to create a reproductive example to show the difference 
between offset(log_trap_eff) and offset=log_trap_eff.
nb_unique <- rnegbin(58, mu=82, theta=13.446)
x <- runif(58,min=-465300,max=435200)
prop_forest <- runif(58,min=0,max=1)
log_trap_eff <- runif(58,min=4,max=6)

With offset=log_trap_eff:

mod1 <- gam(nb_unique ~ s(x,prop_forest), offset=log_trap_eff, 
family=nb(theta=NULL, link="log"), method = "REML", select = TRUE)

> mod1Pred <- predict.gam(mod1, se.fit=TRUE, type="response")

> summary(mod1Pred$fit)

   Min. 1st Qu.  Median    Mean 3rd Qu.    Max.

 0.5852  0.5852  0.5852  0.5852  0.5852  0.5852


With offset(log_trap_eff):
mod2 <- gam(nb_unique ~ s(x,prop_forest) + offset(log_trap_eff), 
family=nb(theta=NULL, link="log"), method = "REML", select = TRUE)

> mod2Pred <- predict.gam(mod2, se.fit=TRUE, type="response")

> summary(mod2Pred$fit)

   Min. 1st Qu.  Median    Mean 3rd Qu.    Max.

  32.03   61.18   97.20  112.20  165.00  226.00



Value range of observed data:

> summary(nb_unique)

   Min. 1st Qu.  Median    Mean 3rd Qu.    Max.

  43.00   67.00   81.00   84.16   92.75  153.00


  *   By using fitted(mod), I obtain NULL.
I am a novice in GAMs. So, I don�t know why the results are different between 
models with offset=argument and offset().
Thanks a lot for your help.
Have a nice day
Marine



________________________________
De : peter dalgaard <pda...@gmail.com>
Envoy� : mardi 22 novembre 2016 23:52
� : Bert Gunter
Cc : Marine Regis; r-help@r-project.org
Objet : Re: [R] GAM with the negative binomial distribution: why do predictions 
no match with original values?


> On 22 Nov 2016, at 23:07 , Bert Gunter <bgunter.4...@gmail.com> wrote:
>
> Define "very different."  Sounds like a subjective opinion to me, for
> which I have no response. Apparently others are similarly flummoxed.
> Of course they would not in general be identical.

Er? I don't see much reason to disagree that a range 0.10-0.18 is different 
from 17-147.

However, other bits of information are missing: We don't know which gam() 
function is being used (to my knowledge there is one in package gam but also 
one in mgcv). We don't have the data, so we cannot reproduce and try to find 
the root of the problem.

Offhand, it looks like the predict.gam() function is misbehaving, which could 
have something to do with the offset term and/or the nb dispersion parameter. 
On a hunch, does anything change if you use

nb_unique ~ s(x,prop_forest) + offset(log_trap_eff)

instead of the offset= argument? And, by the way, does fitted(mod,...) change 
anything?

-pd

>
> Cheers,
> Bert
>
>
> Bert Gunter
>
> "The trouble with having an open mind is that people keep coming along
> and sticking things into it."
> -- Opus (aka Berkeley Breathed in his "Bloom County" comic strip )
>
>
> On Tue, Nov 22, 2016 at 1:29 PM, Marine Regis <marine.re...@hotmail.fr> wrote:
>> Hello,
>>
>>> From capture data, I would like to assess the effect of longitudinal 
>>> changes in proportion of forests on abundance of skunks. To test this, I 
>>> built this GAM where the dependent variable is the number of unique skunks 
>>> and the independent variables are the X coordinates of the centroids of 
>>> trapping sites (called "X" in the GAM) and the proportion of forests within 
>>> the trapping sites (called "prop_forest" in the GAM):
>>
>>    mod <- gam(nb_unique ~ s(x,prop_forest), offset=log_trap_eff, 
>> family=nb(theta=NULL, link="log"), data=succ_capt_skunk, method = "REML", 
>> select = TRUE)
>>    summary(mod)
>>
>>    Family: Negative Binomial(13.446)
>>    Link function: log
>>
>>    Formula:
>>    nb_unique ~ s(x, prop_forest)
>>
>>    Parametric coefficients:
>>                Estimate Std. Error z value Pr(>|z|)
>>    (Intercept) -2.02095    0.03896  -51.87   <2e-16 ***
>>    ---
>>    Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
>>
>>    Approximate significance of smooth terms:
>>                       edf Ref.df Chi.sq  p-value
>>    s(x,prop_forest) 3.182     29  17.76 0.000102 ***
>>    ---
>>    Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
>>
>>    R-sq.(adj) =   0.37   Deviance explained =   49%
>>    -REML = 268.61  Scale est. = 1         n = 58
>>
>>
>> I built a GAM  for the negative binomial family. When I use the function 
>> `predict.gam`, the predictions of capture success from the GAM and the 
>> values of capture success from original data are very different. What is the 
>> reason for differences occur?
>>
>> **With GAM:**
>>
>>    modPred <- predict.gam(mod, se.fit=TRUE,type="response")
>>    summary(modPred$fit)
>>       Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
>>     0.1026  0.1187  0.1333  0.1338  0.1419  0.1795
>>
>> **With original data:**
>>
>>    summary(succ_capt_skunk$nb_unique)
>>       Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
>>      17.00   59.00   82.00   81.83  106.80  147.00
>>
>> The question has already been posted on Cross validated 
>> (http://stats.stackexchange.com/questions/247347/gam-with-the-negative-binomial-distribution-why-do-predictions-no-match-with-or)
>>  without success.
[http://cdn.sstatic.net/Sites/stats/img/apple-touch-i...@2.png?v=344f57aa10cc&a]<http://stats.stackexchange.com/questions/247347/gam-with-the-negative-binomial-distribution-why-do-predictions-no-match-with-or>

GAM with the negative binomial distribution: why do predictions no match with 
original 
values?<http://stats.stackexchange.com/questions/247347/gam-with-the-negative-binomial-distribution-why-do-predictions-no-match-with-or>
stats.stackexchange.com
>From capture data, I would like to assess the effect of longitudinal changes 
>in proportion of forests on abundance of skunks. To test this, I built this 
>GAM where the dependent variable is the numb...



>>
>> Thanks a lot for your time.
>> Have a nice day
>> Marine
>>
>>
>>        [[alternative HTML version deleted]]
>>
>> ______________________________________________
>> R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
>> https://stat.ethz.ch/mailman/listinfo/r-help

thz.ch/mailman/listinfo/r-help>
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>> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
>> and provide commented, minimal, self-contained, reproducible code.
>
> ______________________________________________
> R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see
> https://stat.ethz.ch/mailman/listinfo/r-help

thz.ch/mailman/listinfo/r-help>
stat.ethz.ch
The main R mailing list, for announcements about the development of R and the 
availability of new code, questions and answers about problems and solutions 
using R ...



> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
> and provide commented, minimal, self-contained, reproducible code.

--
Peter Dalgaard, Professor,
Center for Statistics, Copenhagen Business School
Solbjerg Plads 3, 2000 Frederiksberg, Denmark
Phone: (+45)38153501
Office: A 4.23
Email: pd....@cbs.dk  Priv: pda...@gmail.com










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