Question is a bit old, but if anyone wants to do this without the special case handling, you can use a function like this:

```
final static public Random RANDOM = new Random(System.currentTimeMillis());
static public double nextSkewedBoundedDouble(double min, double max, double skew, double bias) {
double range = max - min;
double mid = min + range / 2.0;
double unitGaussian = RANDOM.nextGaussian();
double biasFactor = Math.exp(bias);
double retval = mid+(range*(biasFactor/(biasFactor+Math.exp(-unitGaussian/skew))-0.5));
return retval;
}
```

The parameters do the following:

- min - the minimum skewed value possible
- max - the maximum skewed value possible
- skew - the degree to which the values cluster around the mode of the distribution; higher values mean tighter clustering
- bias - the tendency of the mode to approach the min, max or midpoint value; positive values bias toward max, negative values toward min