# How do I choose k when using k-means clustering with Silhouette function?

I've been studying about k-means clustering, and one big thing which is not clear is what Silhouette function really tell to me?

i know it shows that what appropriate k should be detemine but i cant understand what mean of silhouette function really say to me?

i read somewhere, if the mean of silhouette is less than 0.5 your clustering is not valid.

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From the definition of silhouette :

Silhouette Value

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.

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thanks for your answer.finally i know if there is a negative silhouette in data, the clustering is not valid any more. as i said before the mean of silhouette is 0.46 but there is a negative silhouette value with some data, what should i do now? it means that the kmean algorithm is not working for me or...? –  user2691280 Aug 17 '13 at 6:58
@user2691280, you can increase the parameter k for k-means clustering to decrease the possibility of negative silhoette values. –  Tom_Crusoe Aug 17 '13 at 7:00
i have reall data and this is related to the Composite failure. im studing Mechanics. we have 3 failure mod in composite. it should be 3 someway. when i normalize data between -2,+2 the mean of silhouette increase... is normalizing has effected to this in positive way? –  user2691280 Aug 17 '13 at 7:04
@user2691280, normalizing the data in a piecewise linear way may change the silhoutte values in positive or negative direction depending on the data. If cluster assignments did not change with respect to the original case, it does not necessarily indicates a clustering improvemeent. –  Tom_Crusoe Aug 17 '13 at 7:26
are you sure the negative value show that the clustering is not valid? i try with k=4, but there is negative value in there. please see my silhouette value MediaFire –  user2691280 Aug 17 '13 at 7:46