# 1D Number Array Clustering [duplicate]

Possible Duplicate:
Cluster one-dimensional data optimally?

So let's say I have an array like this:

``````[1,1,2,3,10,11,13,67,71]
``````

Is there a convenient way to partition the array into something like this?

``````[[1,1,2,3],[10,11,13],[67,71]]
``````

I looked through similar questions yet most people suggested using k-means to cluster points, like scipy, which is quite confusing to use for a beginner like me. Also I think that k-means is more suitable for two or more dimensional clustering right? Are there any ways to partition an array of N numbers to many partitions/clustering depending on the numbers?

Some people also suggest rigid range partitioning, but it doesn't always render the results as expected

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## marked as duplicate by Anony-Mousse, bensiu, Aleks G, Chathuranga Chandrasekara, Jonathan LefflerOct 17 '12 at 13:35

Don't use multidimensional clustering algorithms for a one-dimensional problem. A single dimension is much more special than you naively think, because you can actually sort it, which makes things a lot easier.

In fact, it is usually not even called clustering, but e.g. segmentation or natural breaks optimization.

You might want to look at

https://en.wikipedia.org/wiki/Jenks_natural_breaks_optimization

and similar statistical methods.

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Implementation here: macwright.org/2013/02/18/literate-jenks.html –  Tirno Jan 17 at 23:10

You may look for discretize algorithms. 1D discretization problem is a lot similar to what you are asking. They decide cut-off points, according to frequency, binning strategy etc.

weka uses following algorithms in its , discretization process.

weka.filters.supervised.attribute.Discretize

uses either Fayyad & Irani's MDL method or Kononeko's MDL criterion

weka.filters.unsupervised.attribute.Discretize

uses simple binning

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