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;
```

`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