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https://issues.apache.org/jira/browse/SPARK-14174?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=15212772#comment-15212772
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Apache Spark commented on SPARK-14174:
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User 'zhengruifeng' has created a pull request for this issue:
https://github.com/apache/spark/pull/11974

> Accelerate KMeans via Mini-Batch EM
> -----------------------------------
>
>                 Key: SPARK-14174
>                 URL: https://issues.apache.org/jira/browse/SPARK-14174
>             Project: Spark
>          Issue Type: Improvement
>          Components: MLlib
>            Reporter: zhengruifeng
>            Priority: Minor
>
> The MiniBatchKMeans is a variant of the KMeans algorithm which uses 
> mini-batches to reduce the computation time, while still attempting to 
> optimise the same objective function. Mini-batches are subsets of the input 
> data, randomly sampled in each training iteration. These mini-batches 
> drastically reduce the amount of computation required to converge to a local 
> solution. In contrast to other algorithms that reduce the convergence time of 
> k-means, mini-batch k-means produces results that are generally only slightly 
> worse than the standard algorithm.
> I have implemented mini-batch kmeans in Mllib, and the acceleration is realy 
> significant.
> The MiniBatch KMeans is named XMeans in following lines.
> val path = "/tmp/mnist8m.scale"
> val data = MLUtils.loadLibSVMFile(sc, path)
> val vecs = data.map(_.features).persist()
> val km = KMeans.train(data=vecs, k=10, maxIterations=10, runs=1, 
> initializationMode="k-means||", seed=123l)
> km.computeCost(vecs)
> res0: Double = 3.317029898599564E8
> val xm = XMeans.train(data=vecs, k=10, maxIterations=10, runs=1, 
> initializationMode="k-means||", miniBatchFraction=0.1, seed=123l)
> xm.computeCost(vecs)
> res1: Double = 3.3169865959604424E8
> val xm2 = XMeans.train(data=vecs, k=10, maxIterations=10, runs=1, 
> initializationMode="k-means||", miniBatchFraction=0.01, seed=123l)
> xm2.computeCost(vecs)
> res2: Double = 3.317195831216454E8
> The above three training all reached the max number of iterations 10.
> We can see that the WSSSEs are almost the same. While their speed perfermence 
> have significant difference:
> KMeans                                                    2876sec
> MiniBatch KMeans (fraction=0.1)             263sec
> MiniBatch KMeans (fraction=0.01)           90sec
> With appropriate fraction, the bigger the dataset is, the higher speedup is.
> The data used above have 8,100,000 samples, 784 features. It can be 
> downloaded here 
> (https://www.csie.ntu.edu.tw/~cjlin/libsvmtools/datasets/multiclass/mnist8m.scale.bz2)



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