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Distribution Analyses |

Cumulative distribution analyses include the empirical and the parametric cumulative distribution function. The empirical distribution function is a nonparametric estimator of the cumulative distribution function. You can fit parametric distribution functions if the data are from a known family of distributions, such as the normal, lognormal, exponential, or Weibull.

You can use the Kolmogorov statistic to construct
a confidence band for the unknown distribution function.
The statistic also tests the hypotheses that the data
are from a completely specified distribution or from a
specified family of distributions with unknown parameters.
You can generate density estimates and cumulative
distribution analysis in the output options dialog,
as described previously in the section "Output,"
or by choosing from the **Curves** menu,
as shown in Figure 38.22.
You can also generate QQ reference
lines from the **Curves** menu.

If you select a **Weight** variable, curves of
parametric weighted normal density,
weighted kernel density, weighted empirical CDF,
parametric weighted normal CDF,
and weighted QQ reference line (based on weighted least squares)
can be generated.
CDF confidence band, test for a specific distribution,
and test for distribution are not computed.

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