I'm using the module hcluster to calculate a dendrogram from a distance matrix. My distance matrix is an array of arrays generated like this:

```
import hcluster
import numpy as np
mols = (..a list of molecules)
distMatrix = np.zeros((10, 10))
for i in range(0,10):
for j in range(0,10):
sim = OETanimoto(mols[i],mols[j]) # a function to calculate similarity between molecules
distMatrix[i][j] = 1 - sim
```

I then use the command `distVec = hcluster.squareform(distMatrix)`

to convert the matrix into a condensed vector and calculate the linkage matrix with `vecLink = hcluster.linkage(distVec)`

.

All this works fine but if I calculate the linkage matrix using the distance matrix and not the condensed vector `matLink = hcluster.linkage(distMatrix)`

I get a different linkage matrix (the distances between the nodes are a lot larger and topology is slightly different)

Now I'm not sure whether this is because hcluster only works with condensed vectors or whether I'm making mistakes on the way there.

Thanks for your help!