I'm working block level census data to calculate social vulnerability index (SoVI), following a methodology by Cutter, 2003. I generated 4 principal components scores via PCA and I would like to use Pareto ranking to organize the block groups into a series of ranks ( as per Rygel et al. 2006: A method for constructing a social vulnerability Index).

I apologize that the question was unclear. Below is a sample dataset that I use, the rows representing block groups, and columns representing vulnerability dimensions(PCA components scores). I'd like to calculate the rank based on the 4 vulnerability dimensions, using Pareto method, in a new column.

```
sovi<-structure(list(deprivation = c(4.28, 4.91, 7.63,
1.33,6.03,6.40,-0.21,6.72,-1.45,5.76),
oldage = c(1.04,0.87,1.14,0.18,0.75,0.93,1.29,0.81,5.57,1.28),
housing = c(1.57, 1.41, 2.27, 0.21,0.97,2.65,-0.33,1.68,-1.72,1.78),
education = c(-3.65,-1.73,-3.57,-3.37,-3.20,-2.06,-0.59,-2.93,-0.40,-3.09)),
.Names = c("deprivation", "oldage", "housing", "education"),
row.names=c(NA,10L), class = "data.frame")
```

From Rygel, "The rationale behind the Pareto ranking method is as follows. Each case i is considered on the basis of a set of n component scores, {ci1, ci2, . . . , cin}. (...) it is assumed that a higher score on any individual component indicates greater vulnerability. When two (...) block groups A and B are compared, case A is more vulnerable than case B only if the scores for A are at least equal to those for B for all components and if there is at least one component on which A scores higher than B".

I searched the R website but wasn't able to find a package that does Pareto ranking.

Many thanks!