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bio website google.com
location North Pole
age 15
visits member for 2 years, 9 months
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Prefers to stay anonymous and eat mousse au chocolat.


Aug
14
comment Error in clusplot function in R: Missing values were displaced by median of corresponding variables
First make sure that the results of the similarity function are as desired. Don't just hope it works, it won't.
Aug
14
comment How to get KDE(Kernel Density Estimation) and its troughs in SQL
Using histograms is probably more efficient, and definitely worth a try. But as we don't know what you want to achieve, its hard to give suggestions. Consider using bins. Histograms work best when you don't make them overly fine. So does KDE, don't make the bandwidth parameter too small either.
Aug
13
comment Clustering unstructured text based on similarity and calculating optimum number of clusters
Are you sure you the algorithm will cluster by authors, and not by topics? or by languages? or by gender? Chances are that the algorithm discovers some very different structure than authors.
Aug
13
comment Error in clusplot function in R: Missing values were displaced by median of corresponding variables
euclidean distance doesn't seem appropriate for categorial data with missing values! first find a meaningful similarity measure. Once you have a working similarity, start clustering. The other way around does not work.
Aug
13
revised How to get KDE(Kernel Density Estimation) and its troughs in SQL
deleted 22 characters in body; edited tags
Aug
13
comment How to get KDE(Kernel Density Estimation) and its troughs in SQL
What have you tried to solve this problem? Show some effort, please.
Aug
12
comment kd-tree for clustered data
How would you define this formally? It's not the k nearest neighbors anymore then... much of the idea of the k nearest neighbors is to adapt to density differences; and not get such outside points when in a dense area...
Aug
11
revised Sportfire - display with external information
deleted 8 characters in body; edited tags
Aug
11
comment Please assist with assignment
The exact same question (same class?) has already been answered here: Recognize Shuffled dataset
Aug
11
comment Evaluation of Clustering in Scikit-learn According to Pairs
The Rand index (and ARI) are defined on the pairs. So what is it computing then, if not pairs?
Aug
11
comment scikit-learn: clustering text documents using DBSCAN
That is essentially what I'm trying to say. Except that technically DBSCAN does not need a dense matrix. It's the sklearn version that does, for a reason unknown to me.
Aug
11
comment Evaluation of Clustering in Scikit-learn According to Pairs
@EdChum how do you compute a confusion matrix when you don't have classes on one axis, but clusters? There is no 1:1 correspondence between cluster and classes. That is why you work on pairs in clustering evaluation. See Wikipedia!
Aug
11
answered Evaluation of Clustering in Scikit-learn According to Pairs
Aug
11
comment Evaluation of Clustering in Scikit-learn According to Pairs
@EdChum confusion matrix makes sense for classification, not for clustering. See Wikipedia, Cluster analysis, section evaluation.
Aug
11
comment clustering of rectangular boxes having similarity
Have you tried using k-means?
Aug
10
comment Rapidminer FPGrowth returning subsets as well. I only need the maximum frequent item sets
Why does it need to be in RM? And even if you convert it into the FrequentItemSet datatype; other analysis steps may expect the result to include the redundant itemsets. E.g. for comupting association rules, you do need these results, too.
Aug
10
comment R-Tree Implementation Java
I like R-trees a lot, but for games I would try quadtrees and gridfiles first. Because most of the time, I would need to scan less than 10 buckets, and these structures are just as cheap as it gets.
Aug
10
answered How to store Patterns in specific matrix index in java?
Aug
10
answered Rapidminer FPGrowth returning subsets as well. I only need the maximum frequent item sets
Aug
10
revised Searching for multiple terms in the streaming API using tweepy and knowing which one hits?
This it not data mining. This is just collecting and filtering data.