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23169
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seen 10 hours ago

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10h
comment python sklearn - clustering visited web pages
I don't think clustering is the right approach to use. Topic modeling is probably much more helpful, or frequent itemset mining.
10h
answered Mini-batch k-means returns less than k clusters
11h
comment Benchmarking EM Soft Clustering vs K-Means?
In my opinion, there is no objective quality criterion. For every criterion, there actually exists a way to construct an optimal algorithm (exhaustive search). It's just very slow. So to some extend, the criterion is an algorithm, too. This is actually well-known for k-means: finding the optimal k-means (=minimizing MSE) is an NP-hard problem. Lloyds algorithm is an O(n*k*i) approximation to this. It will not always find the best solution, but it's acceptably fast.
11h
comment Benchmarking EM Soft Clustering vs K-Means?
It will still be unfair. k-means sole purpose is to find a MSE minimum. Any method will look bad compared to k-means, if you compare it by MSE. It's like evaluating orange trees by their ability to produce apples. They'll never produce as good apples as apple trees.
21h
revised rule checking in character transliteration
edited tags
21h
comment Benchmarking EM Soft Clustering vs K-Means?
I don't think there is a fair comparison possible based just on mathematics. Only on practical use on real data. Stopping conditions of EM are not even consistent across implementations; nor is the computation of the SD value.
1d
comment How to visualize feature space partitioning in Random Forest
Duplicate of: programmers.stackexchange.com/questions/250744/…
1d
answered MySQL Create a distribution or frequency list of similar items across user shopping carts
1d
comment Machine-Learning - Concept / Recommendations
Questions asking us to recommend or find a tool, library or favorite off-site resource are off-topic for Stack Overflow as they tend to attract opinionated answers and spam. Instead, describe the problem and what has been done so far to solve it.
1d
revised Machine-Learning - Concept / Recommendations
deleted 23 characters in body; edited tags
1d
comment Benchmarking EM Soft Clustering vs K-Means?
That data set is probably still feasible enough for k-means; but it may depend on your starting conditions. Don't compare these SD to the MSE values; it is not a fair comparison.
1d
comment Weka and Amazon AWS EC2
Weka likely uses only one core... The instance has a "Intel Xeon E5-2670 v2" CPU according to Amazon, which runs at 2.5 - 3.3 GHz. Your i7 can overclock to 2.93. So I'd expect it to be at most 10% faster than your laptop (well, it has more cache, so it could be 25% faster).
1d
comment R Cluster Package Error Daisy() function long vectors (argument 11) are not supported in .C
CLARA should not require a full distance matrix data matrix or data frame, each row corresponds to an observation; this is not a n^2 distance matrix, but just the data.frame you already have.
1d
comment Benchmarking EM Soft Clustering vs K-Means?
You need to carefully engineer the distribution of the data points and seeds to deliberately misdirect k-means in 2D synthetic data. Just randomly generating data won't do the trick.
2d
answered Benchmarking EM Soft Clustering vs K-Means?
2d
revised LAMP Managing PHP persitent sessions
This is NOT cluster analysis (aka: clustering, a data mining technique)
2d
revised how do I collect data from certain websites?
This is not data mining, but web scraping!
2d
comment Weka and Amazon AWS EC2
Try other implementations. Such as sciPy/sklearn. Weka has a reputation of not scaling very well. It's great for learning about the methods, though. Going to a EC2 instance won't get you much further - a i7 CPU is pretty good already; and no EC2 instance will run Weka 400x faster than your laptop, obviously.
2d
revised Android :: retrieving data from sqlite database
There is no data mining in this question.
2d
comment Sending message to concerned numbers, when call is not received (missed call)
Please don't tag spam. There was no Linux or data mining in this question, for example; but everything is android programming.