-1
votes
0answers
38 views

Scipy: segmentation or clustering of 1d array

In a 1D array I have timestamps of events occurring randomly. These events tend to cluster in time interval of about 10ms. I would like to identify all the groups of events occurring in 10ms or less. ...
0
votes
2answers
29 views

Clustering a list of dates

I have a list of dates I'd like to cluster into 3 clusters. Now, I can see hints that I should be looking at k-means, but all the examples I've found so far are related to coordinates, in other ...
3
votes
1answer
81 views

Distance matrix creation using nparray with pdist and squareform

I'm trying to cluster using DBSCAN (scikit learn implementation) and location data. My data is in np array format, but to use DBSCAN with Haversine formula I need to create a distance matrix. I'm ...
0
votes
2answers
33 views

Refiguring K-Means clustering criterias

Let's say I have some data, an array of array, or a DataFrame, like: In [4]: df Out[4]: a b c d 0 1 0 1 2 1 0 1 0 3 2 0 0 0 4 After Making some k-means clustering on it, like ...
0
votes
0answers
35 views

Cluster samples below a threshold distance in a custom distance matrix using SciPy

I would like to do clustering in SciPy using a custom distance matrix that clusters my data using a threshold value. To illustrate what I want to get, I used vmin in matplotlib's pcolor... This is ...
1
vote
1answer
253 views

Hierarchical clustering from confusion matrix with python

Using on the following answer, I tried to code hierarchical class clustering based on confusion matrix. Confusion matrix is used to evaluate results of classification problem and isn't symmetric. Each ...
4
votes
1answer
171 views

Clustering in python(scipy) with space and time variables

The format of my dataset: [x-coordinate, y-coordinate, hour] with hour an integer value from 0 to 23. My question now is how can I cluster this data when I need an euclidean distance metric for the ...
3
votes
2answers
178 views

kmeans clustering with limited memory

I am developing an app on App Engine and am using kmeans2 from SciPy. When the cluster runs, I get this error: Exceeded soft private memory limit with 159.852 MB after servicing 1 requests total ...
0
votes
0answers
62 views

Why when i compute the orthogonals of vectors i do not get the same hierarchical clustering results wth hcluster-scipy

I am using this code to perform an hierarchical clustering into an nx5 matrix using cosine similarity as a distance function: Y = pdist(data,'cosine') D = squareform(Y) Z = ...
0
votes
1answer
99 views

Optimizing clustering in Python

I wrote my own clustering algorithm (bad, I know) for my problem. It works well, but could work faster. Algorithm takes list of values (1D) as in input, and works like this: For each cluster, ...
1
vote
1answer
265 views

Creating matrix for scipy.cluster.hierarchy.fclusterdata

I am trying to run a cluster analysis on a list of coordinates. I'd like to use scipy.cluster.hierarchy.fclusterdata. How do I create an appropriate n by m data matrix from my coordinates? My list ...
9
votes
1answer
1k views

How to compute cluster assignments from linkage/distance matrices in scipy in Python?

if you have this hierarchical clustering call in scipy in Python: from scipy.cluster.hierarchy import linkage # dist_matrix is long form distance matrix linkage_matrix = ...
0
votes
1answer
250 views

How do I correlate my original data with clustered data

I have a distance matrix presents the distance matrix for pairwise elements such as A B C D ..... A n1 n2 n3 B n1 C n2 n4 D n3 n5 ....... E......... i input the array like for ...
2
votes
1answer
1k views

k-means in python: Determine which data are associated with each centroid

I've been using scipy.cluster.vq.kmeans for doing some k-means clustering, but was wondering if there's a way to determine which centroid each of your data points is (putativly) associated with. ...
0
votes
1answer
885 views

Scipy, tf-idf and cosine similarity

I'm trying to cluster some documents according to a tf-idf matrix using python. First I follow the wikipedia definition of the formula, using normalised tf. http://en.wikipedia.org/wiki/Tf-idf ...
0
votes
1answer
553 views

Getting AttributeError: sqrt in vq.whiten

I'm having trouble using vq.whiten from scipy.cluster to normalise my data. I'm passing in a numpy array which has had missing feature values filled in with the average for each feature. The line it ...
0
votes
2answers
463 views

Can anyone provide me with some clustering examples?

I am having a hard time understanding what scipy.cluster.vq really does!! On Wikipedia it says Clustering can be used to divide a digital image into distinct regions for border detection or object ...
1
vote
2answers
583 views

Validating Output From a Clustering Algorithm

Is there an objective way to validate the output of an clustering algorithm? Context: I'm leveraging sci-kit learn's affinity propagation clustering against a data-set composed of objects with ...
1
vote
2answers
930 views

How to determine regions of pixels with a shared value using PIL

I need to divide an image to regions of pixels whose RGB value pass a certain test. I'm OK with scanning the image and checking each pixel's value however the part of clustering them into regions and ...
3
votes
1answer
779 views

Scipy's sparse eigsh() for small eigenvalues

I'm trying to write a spectral clustering algorithm using NumPy/SciPy for larger (but still tractable) systems, making use of SciPy's sparse linear algebra library. Unfortunately, I'm running into ...
1
vote
3answers
1k views

Clustering of sparse matrix in python and scipy

I'm trying to cluster some data with python and scipy but the following code does not work for reason I do not understand: from scipy.sparse import * matrix = dok_matrix((en,en), int) for pub in ...
1
vote
1answer
309 views

Plotting dendrogram in Scipy error for large dataset

I am using Scipy for hierarchial clustering. I do manage to get flat clusters on a threshold using fcluster. But I need to visualize the dendrogram formed. When I use the dendrogram method, it works ...
0
votes
2answers
718 views

Memory Error when calculating pairwise distances in scipy

I am trying to apply hierarchial clustering to my dataset which consists of 14039 vectors of users. Each vector has 10 features, where each feature is basically frequency of tags tagged by that user. ...
2
votes
1answer
2k views

Can't get scipy hierarchical clustering to work

I wrote a simple script that is intended to do hierarchical clustering on a simple test dataset. I found the function fclusterdata to be a candidate to cluster my data into two clusters. It takes ...
0
votes
1answer
500 views

Scipy clustering: which method to use in fcluster for simple grouping?

There are myriad of optins in the scipy clustering module, and I'd like to be sure that I'm using them correctly. I have a symmetric distance matrix DR and I'd like to find all clusters such that any ...
2
votes
1answer
780 views

Some questions on dendrogram - python (Scipy)

I am new to scipy but I managed to get the expected dendrogram. I am some more questions; In the dendrogram, distance between some points are 0 but its not visible due to image border. How can I ...
3
votes
4answers
2k views

Multidimensional Eucledian Distance in Python

I want to calcuate the eucledian distance in multiple dimensions (24 dimensions) between 2 arrays. I'm using Numpy-Scipy. Here is my code: import numpy,scipy; A=numpy.array([116.629, 7192.6, ...
1
vote
1answer
707 views

Get point IDs after clustering, using python [duplicate]

Possible Duplicate: Python k-means algorithm I want to cluster 10000 indexed points based on their feature vectors and get their ids after clustering i.e. cluster1:[p1, p3, p100, ...], ...
5
votes
1answer
3k views

Clustering with scipy - clusters via distance matrix, how to get back the original objects

I can't seam to find any simple enough tutorials or descriptions on clustering in scipy, so I'll try to explain my problem: I try to cluster documents (hierarchical agglomerative clustering) , and ...
9
votes
1answer
3k views

How to get flat clustering corresponding to color clusters in the dendrogram created by scipy

Using the code posted here, I created a nice hierarchical clustering: Let's say the the dendrogram on the left was created by doing something like Y = sch.linkage(D, method='average') # D is a ...
12
votes
3answers
2k views

Equivalent of Matlab's cluster quality function?

MATLAB has a nice silhouette function to help evaluate the number of clusters for k-means. Is there an equivalent for Python's Numpy/Scipy as well?
5
votes
3answers
2k views

How do I create a radial cluster like the following code-example in Python?

I've found several examples on how to create these exact hierarchies (at least I believe they are) like the following here stackoverflow.com/questions/2982929/ which work great, and almost perform ...
1
vote
2answers
2k views

computing z-scores for 2D matrices in scipy/numpy in Python

How can I compute the z-score for matrices in Python? Suppose I have the array: a = array([[ 1, 2, 3], [ 30, 35, 36], [2000, 6000, 8000]]) and I want to compute ...
24
votes
2answers
6k views

plotting results of hierarchical clustering ontop of a matrix of data in python

How can I plot a dendrogram right on top of a matrix of values, reordered appropriately to reflect the clustering, in Python? An example is in the bottom of the following figure: ...
4
votes
1answer
2k views

hierarchical clustering on correlations in Python scipy/numpy?

How can I run hierarchical clustering on a correlation matrix in scipy/numpy? I have a matrix of 100 rows by 9 columns, and I'd like to hierarchically clustering by correlations of each entry across ...
5
votes
1answer
2k views

Scipy.cluster.hierarchy.fclusterdata + distance measure

1) I am using scipy's hcluster module. so the variable that I have control over is the threshold variable. How do I know my performance per threshold? i.e. In Kmeans, this performance will be the ...
16
votes
2answers
5k views

Reordering matrix elements to reflect column and row clustering in naiive python

I'm looking for a way to perform clustering separately on matrix rows and than on its columns, reorder the data in the matrix to reflect the clustering and putting it all together. The clustering ...