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# Translate Logistic Regression from SAS to R

Here's my issue of the day:

At the moment I'm teaching myself Econometrics and making use of logistic regression. I have some SAS code and I want to be sure I understand it well first before trying to convert it to R. (I don't have and I don't know SAS). In this code, I want to model the probability for one person to be an 'unemployed employee'. By this I mean "age" between 15 and 64, and "tact" = "jobless". I want to try to predict this outcome with the following variables: sex, age and idnat (nationality number). (Other things being equal).

SAS code :

``````/* Unemployment rate : number of unemployment amongst the workforce */

proc logistic data=census;
class sex(ref="Man") age idnat(ref="spanish") / param=glm;
class tact (ref=first);
model tact = sex age idnat / link=logit;
where 15<=age<=64 and tact in ("Employee" "Jobless");
weight weight;
format age ageC. tact \$activity. idnat \$nat_dom. inat \$nationalty. sex \$M_W.;

lsmeans sex / obsmargins ilink;
lsmeans idnat / obsmargins ilink;
lsmeans age / obsmargins ilink;
run;
``````

This is a sample of what the database should looks like :

``````      idnat     sex     age  tact
[1,] "english" "Woman" "42" "Employee"
[2,] "french"  "Woman" "31" "Jobless"
[3,] "spanish" "Woman" "19" "Employee"
[4,] "english" "Man"   "45" "Jobless"
[5,] "english" "Man"   "34" "Employee"
[6,] "spanish" "Woman" "25" "Employee"
[7,] "spanish" "Man"   "39" "Jobless"
[8,] "spanish" "Woman" "44" "Jobless"
[9,] "spanish" "Man"   "29" "Employee"
[10,] "spanish" "Man"   "62" "Retired"
[11,] "spanish" "Man"   "64" "Retired"
[12,] "english" "Woman" "53" "Jobless"
[13,] "english" "Man"   "43" "Jobless"
[14,] "french"  "Man"   "61" "Retired"
[15,] "french"  "Man"   "50" "Employee"
``````

This is the kind of result I wish to get :

``````Variable    Modality    Value   ChiSq   Indicator
Sex         Women       56.6%   0.00001 -8.9%
Men         65.5%
Nationality
1:Spanish   62.6%
2:French    51.2%   0.00001 -11.4%
3:English   48.0%   0.00001 -14.6%
Age
<25yo       33.1%   0.00001 -44.9%
Ref:26<x<54yo   78.0%
55yo=<      48.7%   0.00001 -29.3%
``````

(I interpret the above as follows: other things being equal, women have -8.9% chance of being employed vs men and those aged less than 25 have a -44.9% chance of being employed than those aged between 26 and 54).

So if I understand well, the best approach would be to use a binary logistic regression (link=logit). This uses references "male vs female"(sex), "employee vs jobless"(from 'tact' variable)... I presume 'tact' is automatically converted to a binary (0-1) variable by SAS.

Here is my 1st attempt in R. I haven't check it yet (need my own PC) :

``````### before using multinom function
### change all predictors to factors and relevel
recens\$sex <- relevel(factor(recens\$sex), ref = "Man")
recens\$idnat <- relevel(factor(recens\$idnat), ref = "spanish")
recens\$TACT <- relevel(factor(recens\$TACT), ref = "employee")

### Calculations of the probabilities with function multinom,
### formatted variables, and conditions with subset
glm1 <- glm(TACT ~ sex + age + idnat, data=census,
+ weights = weight, subset=age[(15<=recens\$age|recens\$age<=64)] & TACT %in%
+ c("Employee","Jobless"), family=binomial())
``````

My questions :

For the moment, it seems there are many functions to carry out a logistic regression in R like `glm` which seems to fit.

However after visiting many forums it seems a lot of people recommend not trying to exactly reproduce SAS `PROC LOGISTIC`, particularly the function `LSMEANS` functions. Dr Franck Harrel, (author of `package:rms`) for one.

That said, I guess my big issue is `LSMEANS` and its options `Obsmargins` and `ILINK`. Even after reading over its description repeatedly I can hardly understand how it works.

So far, what I understand of `Obsmargin` is that it respects the structure of the total population of the database (i.e. calculations are done with proportions of the total population). `ILINK` appears to be used to obtain the predicted probability value (jobless rate, employment rate) for each of the predictors (e.g. female then male) rather than the value found by the (exponential) model?

In short, how could this be done through R, with `rms` functions like `lrm`?

I'm really lost in all of this. If someone could explain it to me better and tell me if I'm on the right track it would make my day.

Thank you for your help and sorry for all the mistakes my English is a bit rusty.

Binh

-

That is not a multinomial logistic regression problem, since the outcome is binary. Furthermore the output you desire appears to be a set of two-way tables. The author of `rms` is Frank Harrell (and he also happens to be the original author of Proc LOGISTIC.) Just using `lrm` in rms to produce a set of two way tables would seem to be a waste of energy. This is an example of its use in presenting a multivariate analysis:

`````` require(rms)
lrm(tact ~ idnat+sex+as.numeric(age), data=dat)
#----------
Logistic Regression Model

lrm(formula = tact ~ idnat + sex + as.numeric(age), data = dat)

Model Likelihood     Discrimination    Rank Discrim.
Ratio Test            Indexes          Indexes
Obs            15    LR chi2     15.19    R2       0.725    C       0.903
Employee       6    d.f.            4    g        3.583    Dxy     0.806
Jobless        6    Pr(> chi2) 0.0043    gr      35.981    gamma   0.806
Retired        3                         gp       0.420    tau-a   0.552
max |deriv| 1e-04                         Brier    0.147

Coef     S.E.   Wald Z Pr(>|Z|)
y>=Jobless     -9.2553 3.8673 -2.39  0.0167
y>=Retired    -13.5303 5.2031 -2.60  0.0093
idnat=french    1.3199 1.8969  0.70  0.4865
idnat=spanish   1.7379 1.5479  1.12  0.2616
sex=Woman      -0.0033 1.3792  0.00  0.9981
age             0.2213 0.0849  2.61  0.0091
``````

To get teh full power of regression functions in pkg:rms, you will need to create datadist objects and set the dd option. This question is rather outside the boundary of what is usually acceptable in SO, since you don't really know what you are doing. You may want to consider posting followup questions on CrossValidated to work out your conceptual gaps in understanding.

-
Yes I've renamed my post. It's just a binary regression in my example. I have to use multinomial for another one. Though my problem is with LSMEANS. Ok thank you for your comment. I'll try on Crossvalidated. – balour Sep 13 '13 at 8:13
Thank you!! Struggled one hour to find out the as.numeric(variable) to represent as continuous data. – Andre Silva Nov 5 '13 at 16:32
If `variable` was a factor, then it would be better to use `as.numeric(as.character(variable))` – 42- Nov 5 '13 at 16:46