I can calculate cluster membership with `KMeans`

pretty easily:

```
open System
open System.IO
open Utils
open Accord
open Accord.Math
open Accord.MachineLearning
let vals = [|
[|1.0; 2.0; 3.0; 2.0|]
[|1.1; 1.9; 3.1; 4.0|]
[|2.0; 3.0; 4.0; 4.0|]
[|3.0; 3.1; 2.0; 3.0|]
[|2.0; 4.0; 3.0; 6.0|]
[|1.0; 5.0; 5.0; 7.0|]
[|4.0; 3.0; 6.0; 8.0|]
[|5.0; 4.0; 3.0; 6.0|]
[|6.0; 4.0; 8.0; 7.0|]
[|5.0; 6.0; 5.0; 9.0|]
[|4.0; 2.0; 7.0; 8.0|]
[|8.0; 9.0; 3.1; 2.2|]
[|8.0; 9.0; 2.0; 2.0|]
[|10.0; 2.0; 3.0; 2.0|]
[|10.1; 1.9; 3.1; 4.0|]
[|20.0; 3.0; 4.0; 4.0|]
[|22.0; 7.0; 2.0; 3.0|]
[|21.0; 4.0; 3.0; 6.0|]
|]
let kmeans = new KMeans 5
let clusterModel = kmeans.Learn vals
let clusters = clusterModel.Decide vals
```

Can I calculate partial membership with the standard `KMeans`

algorithm? A coworker suggested using the mean and variances of the cluster members to determine proportional membership and today I've been looking into fuzzy sets and their implementations for `F#`

. For example, here is some documentation for the Accord.net implementation for fuzzy sets. I can translate/run the example for `F#`

but at first glance, I don't see an easy way to get the data from my `Kmeans`

run above to fit the format of assigning partial membership.

Questions:

How would I use the mean/variance of cluster members to calculate partial membership?

Is there an easy way to calculate partial membership with

`KMeans`

clustering with the Accord.net library?The KMeans algorithm in Accord.net is simple to implement; should I spend some time trying to learn this method of clustering/membership to suit my problem rather than try and force Kmeans clustering to suit my needs?