Partitioning data into subsets of objects according to their mutual "similarity," without using preexisting knowledge such as class labels. Clustered-standard-errors and/or cluster-samples should be tagged as such; do not use the "clustering" tag for them.

learn more… | top users | synonyms (1)

1
vote
0answers
19 views

Curve based clustering of multivariate data (time series like data) [duplicate]

Possible Duplicate: Reducing no of variables subsetted based on depth for PCA I have a question, I am trying to apply a method to my research area, which has not been aplied yet, based on ...
1
vote
0answers
43 views

Sparse estimated data recommender system

Premise: For a product and a user, the system has to recommend him/her other non-users related with him/her that are most likely to be interested in that same product. Available data includes: ...
1
vote
1answer
55 views

Shape analysis of an object to create features for pattern recognition

I am currently with a medical imaging project. Just wondering how to measure the shape of a sphere. For example, how to give a measurement that an object is more like a sphere than the other? I know ...
1
vote
1answer
97 views

Reducing no of variables subsetted based on depth for PCA

First of all, sorry for the strange title, I had no idea how to describe my problem better. My issue is the following, I think it is pretty much limited to geosciences. I have several properties for ...
2
votes
2answers
58 views

Relevance of overall absolute values in covariance analysis of two variables

I am performing K means clustering on a gene expression dataset. I am aware of the fact that the Pearson correlation metric allows to group trends or patterns irrespective of their overall level of ...
0
votes
0answers
24 views

Analysis of Systematic differences in two multifactor pricing models

I am trying to compare two different pricing models for a product. The two models take the same inputs ( 10-12 different factors)and i know the definitions of both functions which calculate the price. ...
1
vote
1answer
94 views

Mahout Scability

Do you know any real world examples of how much Mahout can scale? I wonder how much it can scale in collaborative filtering, clustering, and classification ?
0
votes
1answer
33 views

Clustering with the same number of objects per group

How can I cluster while forcing the final clusters to have more or less the same number of objects? I have just tried kmeans in R, and it does not take this into ...
2
votes
2answers
55 views

Issues with tritomising and dichotomising variable

I see that the issue of splitting a variable into two categories has been discussed on this forum and I understand pros, cons as well as some ways of performing it. The issue that I am interested and ...
1
vote
2answers
114 views

In non-negative matrix factorization, does the first N eigenvector have N greatest variance?

I know for PCA, it's true that the first N eigenvectors have N greatest variance. But I'm not sure whether that's also true for NMF(Non-negative Matrix Factorization). For example, this ...
3
votes
1answer
155 views

How to explain the connection between SVD and clustering?

Is there an intuitive explanation for how SVD is related to co-clustering when performing SVD on a covariance matrix? (i.e. the SVD is performed on the matrix $E[X Y^{\top}]$ where $X \in ...
3
votes
2answers
151 views

How to define a posterior probability of y given x when the model is not probabilistic?

Suppose we have a very simple online k-means where each new data-point is assigned to its nearest center (the mean is updated incrementally). Each center (cluster) is labelled with the most common ...
1
vote
0answers
16 views

Comparing sample profiles

I have some samples that have been treated with various chemical agents. Users score the treatment effect using categorical values/bins (i.e < 1, 2.5, 8, ... > 100). Within a range of say 1-100 ...
3
votes
2answers
196 views

Classification on principal components

For my research I am doing classification on the dataset of three variables. I run unsupervised clustering (based on a histogram peak technique of cluster analysis)and the result I evaluated visually ...
2
votes
2answers
114 views

Choosing which data-point to label (active learning)

For an online unsupervised learning algorithm, data-points are learned sequentially. The performance may improve if in addition to the unlabelled data we have some labelled data-points (i.e. ...
5
votes
2answers
189 views

Calculating similarity and clustering question

I have a dataset of about a million companies containing their names, total employees and annual sales. I want to come up with a function that when given the company returns the 5 most similar ...
2
votes
0answers
189 views

How to cluster standard errors (by country) using SPSS?

I'm trying to obtain robust standard errors as my regression residuals seem to be correlated... My sample data has 8 countries and I would like to cluster the standard errors by these 8 countries ...
3
votes
3answers
216 views

How to decide whether to reuse old code or reinvent the wheel?

For a long time now, I have been thinking about working with neural networks and genetic algorithms. I have never been able to decide whether it makes sense to start writing my own code, or to reuse ...
0
votes
1answer
92 views

bag of words in an online configuration, for classification / clustering

I have a set of image documents. I extract text keywords from this images using OCR to represent each image as a bag of words (a vector where each value is the number of occurrence of a word in the ...
2
votes
1answer
51 views

Which metric use for problem of clustering spatial data of wind direction and speed?

I have two dimensional spatial (x,y - coordinates of meteo stations) data for small region (so I could neglect the shape of earth globe), for each (x,y) I have one observation of wind direction and ...
1
vote
2answers
42 views

Good Analytical Approach for a problem

I'm trying to figure out what kind of analysis will give me the results I'm looking for. I have 4 shops and I'm trying to understand what is the typical (most likely) customer characteristics of ...
1
vote
0answers
32 views

Clustering with constraint size

I want a clustering method which can let me apply constraints on the maximum and the minimum cluster sizes which I can implement. Otherwise suggestions for a combination of existing techniques which I ...
4
votes
2answers
178 views

Can sub-optimality of various hierarchical clustering methods be assessed or ranked?

Classic agglomerative hierarchical clustering methods are based on a greedy algorithm. This means that they (many of them) are prone to give sub-optimal solutions instead of the global optimum result, ...
2
votes
1answer
98 views

Spatial Clustering with the constraint that All Clusters have Equal Count

I wish to perform a spatial clustering of scattered data that represents geographic locations of individuals in an urban area. Hierarchical clustering seems to work well, and I have successfully done ...
1
vote
1answer
172 views

Density calculation in K Means clustering

With the K Clusters generated using K Means Clustering, how do we calculate the density of each cluster? Is there any formula for it?
1
vote
2answers
232 views

Does the sign of the adjusted residuals matter in a crosstable?

In a cross table, if the adjusted residual value for a cell is less than -1.96 or greater than 1.96 then we could say that this cell is determinant in the dependency (suppose pearson is 0.03). ...
0
votes
3answers
202 views

Clustering with 3 attributes

Please bear with me because I am very new to data mining. I have a database of 3 attributes: latitude, longitude and temperature. I want to find clusters for the temperature data and I also want to ...
2
votes
2answers
364 views

Why don't dummy variables have the continuous adjacent category problem in cluster analysis?

I know that if we use categorical variables in cluster analysis we would assume that the scale is continuous and we don't have this concept of distance between two adjacent categories. But what is the ...
0
votes
2answers
41 views

Compute probability of a grouping being correct

I have an exemplar grouping of objects (each with their own feature vector) into categories. I am then given a new grouping of compeltely different objects, and Iw would like to compute the ...
5
votes
2answers
252 views

Determine different clusters of 1d data from database

I have a database table of data transfers between different nodes. This is a huge database (with nearly 40 million transfers). One of the attributes is the number of bytes (nbytes) transfers which ...
1
vote
3answers
100 views

How can I separate each of 100 observations into groups as determined by the data?

I have 3 covariates for 100 observations. How can I separate each of my 100 observations into groups as determined by the data. I was thinking clustering. However, apparently, I need more than 3 ...
7
votes
5answers
238 views

Does preclustering help to build a better predictive model?

For the task of churn modelling I was considering: Compute k clusters for the data Build k models for each cluster individually. The rationale for that is,that there is nothing to prove, that the ...
0
votes
0answers
292 views

Mahout k-means generates too many clusters [closed]

I am a beginner in Mahout, I use Mahout 0.8 and followed the tutorial in https://cwiki.apache.org/MAHOUT/clustering-of-synthetic-control-data.html When I use : ...
2
votes
2answers
88 views

Is concept of similarity objective?

Imagine following example: We have two pairs of points (i.e. 4 objects in some space) and two similarity measures. According to first similarity measure, objects from first pair are more similar then ...
1
vote
1answer
106 views

kMeans - acceptable value for WCSS

Which value for the within-cluster sum of squares points can be accepted regarding a data set of 1000 tuples, 21 attributes (but only 3 are used now)? I have used Euclidean distance is used, and a ...
1
vote
1answer
64 views

Distance independent approximation of Nearest Neighbor/k-NN.

Nearest neighbor/k-NN for use with Normalized Compression Distance. I wonder if there exist any approximation of NN/k-NN algorithm which work for all distance measures ? I would like to test ...
1
vote
1answer
256 views

Clustering of time series

I have a set of almost 1600 time series on 2 years which I want to group into clusters. Do you think this is possible using k-means? Which method do you advice me to use? Is this possible at all using ...
1
vote
2answers
284 views

Image Clustering with K-means - Postprocessing

I did some clustering on an image (each pixel is an observation that has 5 variables associated with it), I get pretty detailed results but they are a little bit noisey... I think. I used K-means. ...
5
votes
2answers
112 views

How to measure shape of cluster?

I know that this question is not well defined, but some clusters tend to be elliptical or lie in lower dimensional space whilst the other have nonlinear shapes (in 2D or 3D examples). Is there any ...
3
votes
3answers
356 views

How to reduce the number of variables in cluster analysis?

I've got 10 (yes, only 10) cases over 1000 variables (e.g. measurements of concentrations of 1000 different compounds at 10 different time points). I can group these cases into 3 clusters in ...
2
votes
1answer
295 views

What to use, k-means or hierarchical clustering for presence absence data?

I am currently working with a presence-absence database that is mostly zeros (~5% are ones) representing species in space (a species per site matrix). I would like to explore the spatial pattern of ...
2
votes
1answer
121 views

Which are the most effective clustering ensembles?

In supervised learning, there are some ensemble methods that overcome others significantly (adaboost or random forests to mention some). Few years later, also ensembles in unsupervised learning were ...
1
vote
2answers
96 views

Seeking for a fast non parametic clustering algorithm

I'm looking for a fast clustering method to cluster a large kind of datas to a unknown count of clusters. I know about the PAM-Algorithm. But it's only efficient for low datasets. Is there a ...
0
votes
1answer
150 views

Clustering time series with wavelets in R

Can discrete wavelet trasform be used for feature extraction from time series in order to cluster them? Any R code how to do this will be appreciated.
2
votes
2answers
129 views

What function of distance for the questionnaire data?

I have data from questionnaire from school. First question is study program (only 2 programs) and next 35 questions are various questions (influence of friends etc.) Possible answers for 35 questions ...
-1
votes
1answer
136 views

An incremental Gaussian mixture model

Question 1: Suppose that data is modelled by a mixture of K probability distributions which are actually Gaussians. $P(x_i|\theta_j)$ is the probability density of the j'th cluster, for which the ...
0
votes
0answers
43 views

Blind deconvolution of histogram

I am not sure that this is good forum to ask, but dunno where to ask. I have a file with histogram data collected from cytometer. The problem is that these data contain several signals and I want to ...
1
vote
0answers
54 views

How to sum cluster data?

I have a binary variable with probit model, i.e., $P(Y_{ij}=1|X_j)= \Phi(a_i+b_iX_j)$, where $X_j$ is $\mathcal N(0,1)$, and $a_i$ and $b_i$ are regression parameters. I am wondering what the ...
0
votes
2answers
209 views

Interpret Silhouette plot for large microarray dataset

For a microarray experiment with ~40,000 probes and ~30 samples I used the clara function from R to cluster my expression matrix. How do I interpret this silhouette plot? Firstly, I don't ...
4
votes
2answers
104 views

What are features that distinguish clustering, blind signal separation and dimensionality reduction?

In terms of input -> [process] -> output what are features that distinguish clustering, blind signal separation and dimensionality reduction? From this ...

1 2 3 4 5 12