From the definition of silhouette :
The silhouette value for each point is a measure of how similar that
point is to points in its own cluster compared to points in other
clusters, and ranges from -1 to +1.
The silhouette value for the ith point, Si, is defined as
Si = (bi-ai)/ max(ai,bi) where ai is the average distance from the ith
point to the other points in the same cluster as i, and bi is the
minimum average distance from the ith point to points in a different
cluster, minimized over clusters.
This method just compares the intra-group similarity to closest group similarity. If any data member average distance to other members of the same cluster is higher than average distance to some other cluster members, then this value is negative and clustering is not successful. On the other hand, silhuette values close to 1 indicates a successful clustering operation. 0.5 is not an exact measure for clustering.