Error using pdist2mex Error in kmeans>distfun

3 vues (au cours des 30 derniers jours)
Tripoli Settou
Tripoli Settou le 18 Mar 2018
Hi, To represent our data (3233477*256) with Bag of visual word (BOW) which use KMeans clustering to extract visual words when we choose K=5000 this problem show:
Error using pdist2mex
Requested 3233477x5000 (120.5GB) array exceeds maximum array size preference. Creation of arrays greater than this limit may take a
long time and cause MATLAB to become unresponsive. See array size limit or preference panel for more information.
Error in kmeans>distfun (line 747)
D = pdist2mex(X,C,'sqe',[],[],[]);
Error in kmeans/loopBody (line 445)
D = distfun(X, C, distance, 0, rep, reps);
Error in internal.stats.parallel.smartForReduce (line 136)
reduce = loopbody(iter, S);
Error in kmeans (line 335)
ClusterBest = internal.stats.parallel.smartForReduce(...
Error in BOWHistogram (line 12)
[idx,c,sumd,D2] = kmeans(double(Tab_Feature_Data),NumClust);
What can I do to fix the error? Please advise me
  2 commentaires
Rik
Rik le 18 Mar 2018
Can you split the array into smaller parts? Unless you get a 120GB contiguous block of memory, you can't use this method. I'm not familiar enough with what you want to do to suggest a real solution.
Tripoli Settou
Tripoli Settou le 18 Mar 2018
How can i do that i must extract the visual word from all data...how can i split it and get the visual word of all data?

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Réponse acceptée

Bernhard Suhm
Bernhard Suhm le 25 Mar 2018
You could try converting your large input data into a tall array (maybe as simple as t = tall(double(Tab_Feature_Data)), and then pass that tall array to kmeans. Though watch there are limitations which options of kmeans are available with tall arrays, see https://www.mathworks.com/help/stats/tall-array-support-usage-notes-and-limitations.html
  4 commentaires
Bernhard Suhm
Bernhard Suhm le 26 Mar 2018
Your laptop will block unless you leverage multiple cores, but that also requires the Parallel Computing Toolbox. For large datasets like yours, you will need more powerful hardware or be patient with execution. The doc page I pointed you does point out that the 'tall' version of kmeans has only the first 3 output variables.
Tripoli Settou
Tripoli Settou le 26 Mar 2018
So u advise me to use the Parallel Computing Toolbox to leverage multiple cores? right? also, I need the 4th output variable (D2) in next work
[idx,c,sumd,D2] = kmeans(double(Tab_Features),NumClust);
and can I use the Parallel Computing Toolbox without tall version KMeans i mean KMeans with Parallel Computing Toolbox?? it's work??

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Plus de réponses (1)

carpcarp carpcarp
carpcarp carpcarp le 2 Avr 2021
我也遇到过这个问题,你可以看看你是不是命名了一个kmeans的m文件,如果有,并且是自己添加的,先把它删除(或者先发到qq等可以保存代码的应用后删除),然后你再去跑你的程序就可以成功了。
  2 commentaires
carpcarp carpcarp
carpcarp carpcarp le 2 Avr 2021
You can see whether you have named a .m file called kmeans, like this:
if so, please delete it. Then run your program again.
Or if you don't know where is kmeans.m, you can download an application called everything.
My English level is limited, so I can only describe it simply.(←from translator)
Walter Roberson
Walter Roberson le 2 Avr 2021
(User points out that there can be problems if you accidentally have your own kmeans.m instead of using MATLAB's)

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