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We want to analyze how long will a newly acquired customer still be a customer in R. The dataset is right-censored at 730 days and we have ten independent variables.

The model looks as follows: ln(Duration)=X'B+S*e, where X is the matrix of 10 independent variables, B a vector of coefficients, S is the scale parameter and e the error term

The data set we use is the following: http://www.drvkumar.com/books/25/Statistical-Methods-in-Customer-Relationship-Management

We use the survival package and its survreg function and entered the following code:

Dur <- survreg(Surv(Duration, Censor) ~ Acq_Expense + Acq_Expense_SQ + Ret_Expense + Ret_Expense_SQ + Crossbuy + Frequency + Frequency_SQ + Industry + Revenue + Employees, dist='weibull', data = daten [daten$Acquisition==1, ])
summary(Dur)

But the results are not correct, because with the SAS code another output is generated (which is confirmed to be correct).

We tried to generate a log variable of Duration and implemented the new variable logDur in the previously described model:

> logDur <- log(daten$Duration)
> Dur <- survreg(Surv(logDur, Censor) ~ Acq_Expense + Acq_Expense_SQ + Ret_Expense + Ret_Expense_SQ + Crossbuy + Frequency + Frequency_SQ + Industry + Revenue + Employees, dist='weibull', data = daten [daten$Acquisition==1, ])
> summary(Dur)

But the following error message popped up: Fehler in Surv(logDur, Censor) : Time and status are different lengths

If it helps, here is the SAS code:

proc lifereg data = statcrm.customer_acquisition;
model duration*censor(1) =  acq_expense acq_expense_sq ret_expense ret_expense_sq crossbuy frequency frequency_sq industry revenue employees;
where acquisition = 1; 
output out = statcrm.duration xbeta = xb p = pred sres = resid;
run; quit;

data statcrm.duration1;
set statcrm.duration;
pred_duration = exp(xb+0.138*(log(-log(1-0.5))));
ad = abs(duration - pred_duration); 
ad1 = abs(duration - 333.3165);
run; quit;

proc sql; select mean(duration) from statcrm.duration1 where acquisition = 1 and censor = 0; quit;

proc sql; select mean(ad) as mad, (mean(ad/duration)) as mape, 
mean(ad1) as random_mad, (mean(ad1/duration)) as mape1 
from statcrm.duration1 where acquisition = 1 and censor = 0; quit;
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2  
Is your question actually about R, or something else? If so, you should probably tag it that, since it looks like you're not actually interested in help in SAS but rather in matching the SAS results. –  Joe Apr 6 '13 at 16:04
1  
Your log variable of duration didn't work because it should have been daten$logDur<-log(daten$Duration). If you want help with this, you should really post some sample data, and the results from both SAS and R. –  nograpes May 19 '13 at 14:12

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