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Apr
15
revised spectral clustering vs hierarchical clustering
deleted 9 characters in body; edited tags; edited title
Apr
15
comment EM Clustering with weka with log likelihood of 0 for some clusters? Confusing output
It's not absolute 0.0000000% but 5/43574. It's not a probability either. it's just a very small cluster with just 5 objects. Probably outliers or bad preprocessing.
Apr
15
comment R cluster Error "object cannot be coerced to type 'double'
Maybe words_neg is not numeric?
Apr
15
answered EM Clustering with weka with log likelihood of 0 for some clusters? Confusing output
Apr
15
comment K-Means Negative Centroids Interpretation
The "Full Data" column says your mean is 0. Your data set apparenty is different from what you think it is.
Apr
15
comment Time series Clustering Concept, so wage in my case
I do not understand your question title: "Time series Clustering Concept, so wage in my case"
Apr
15
comment Time series Clustering Concept, so wage in my case
"wage"? as in "minimum wage"?
Apr
14
comment how to create A matrix whose columns are feature vectors in python
This apparently is a very bad implementation (see issues). Random code from the internet often has bugs. Why don't you just use the one in sklearn, or the one in ELKI?
Apr
14
revised Designing scaling services with high available load-balancing
This not cluster analysis.
Apr
14
answered K-means Spark variance
Apr
14
comment When are uni-grams more suitable than bi-grams (or higher N-grams)?
The error of using n-grams can be in favor of the desired decision. The estimated probability of NB is usually unusable; but the binary decision spam-nonspam is very good. The position information maybe does not add that much value for spam mails that are largely random words and "viagra"; maybe also because the nonspam texts are so diverse the n-grams there are largely unique. Simply put: if "viagra" already is 99% indicative of spam, "buy viagra" probably only increases this to 99.9% - same outcome.
Apr
14
comment Determine intervals from kernel density estimation
There are only rules of thumb, such as the plug-in estimator. There is no such thing as a "correct way" IMHO if you are working with real data.
Apr
14
comment When are uni-grams more suitable than bi-grams (or higher N-grams)?
It really depends on what you want to do. Naive bayes in spam detection is the prime example where 1-grams preform well. But in other cases, you want to use at least bigrams.
Apr
14
comment When are uni-grams more suitable than bi-grams (or higher N-grams)?
Just a small additional remark: if tokens are independent then 1-grams work as good as n-grams. And e.g. naive bayes is an example that you can often neglect context/correlations. But as you answered, the main issue probably is that you need (exponentially?) more training data the longer your n-grams are.
Apr
13
comment Determine intervals from kernel density estimation
Try a smaller bandwidth!
Apr
13
revised RUSBoost implemented in Matlab gives different results
deleted 41 characters in body; edited tags
Apr
13
answered Extracting data from a wikipedia page
Apr
13
revised Extracting data from a wikipedia page
web scraping
Apr
13
revised WSO2 - Clustering AS on Custom Polling Applications
edited tags
Apr
13
answered Reading a 3-candidate hash tree structure