Unsupervised learning refers to machine learning contexts in which there is no prior 'training' period in which the learning agent is trained on objects of known type. As such, supervised learning includes such disciplines as mathematical clustering, whereby data is segmented into clusters based on ...

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Evaluation in Elki

I know ELKI currently only includes unsupervised outlier detection methods, therefore Elki doesn't divide input data in traing set and test set. But, i've seen evaluation is over minority class when ...
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24 views

how can i classify attributes themselves instead the values

I have a data set and i need to classify this data set according to the attributes themselves instead the values. Picture that describe the situation:
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1answer
30 views

How to train and fine-tune fully unsupervised deep neural networks?

In scenario 1, I had a multi-layer sparse autoencoder that tries to reproduce my input, so all my layers are trained together with random-initiated weights. Without a supervised layer, on my data this ...
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26 views

NLTK HMMTrainer unsupervised learning

I want to check how to do unsupervised learning for HMM with the nltk HMM-Trainer. As far as i know, a HMM with supervised and unsupervised training should perform better than only supervised trained. ...
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36 views

Clustering algorithm for widget orders

I have table that contains widget orders for multiple departments, with each department represented by its buyer. The table structure looks like this: ...
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34 views

Feature selection clustering customer segmentation [migrated]

based on customer data I want to perform a clustering using different clustering algorithms (K-Means, Expectation Maximization, etc.) in R. The most attributes were engineered pursuing the goal to be ...
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35 views

Unsupervised Neural Network with Independent hidden Activations: How to implement entropy or kurtosis penalty?

In brief: How do I implement ICA-like entropy or kurtosis penalty term for the cost and back-propagation of my unsupervised neural network (I'm using stacked sparse Autoencoders)? In details: I've ...
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30 views

Error sampling from GMM using sklearn.mixture.GMM

I'm using sklearn.mixture.GMM to fit some data and am having trouble sampling from the GMM for one item in the dataset. In over 1000 instances of the data it works fine, but in the case below ...
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21 views

OpenCV kmean: how to choose decent values for COUNT and EPS?

I am trying to use the kmean function in OpenCV to pre-classify 36000 sample images into 100+ classes (to reduce my work to prepare train data for supervised learning). In this function there are two ...
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35 views

Random forest algorithms able to switch data sets

I'm curious as to whether research been done into random forests that combine unsupervised with supervised learning in a way allowing a single algorithm to find patterns in, and work with, multiple ...
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1answer
52 views

ANN: Learning Vector Quantization not working

I hope someone here can help me: I'm trying to implement a neural network to find clusters of data, that is presented as a 2D cluster. I tried to follow the standard algorithm as discribed on ...
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27 views

Self organizing Maps and Linear vector quantization

Self organizing maps are more suited for clustering(dimension reduction) rather than classification. But SOM's are used in Linear vector quantization for fine tuning. But LVQ is a supervised leaning ...
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43 views

Visualizing PCA transformed data

I have a dataset on which I want to do clustering with k-means. As a prior task I run PCA on this data and identified two components that are representing almost 90% of the information of my dataset. ...
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26 views

Deep unsupervised online learning method to classify unknown objects from unknown categories

Is there any deep learning method/model which can learn to classify objects to different (unknown) categories using online/incremental learning? For example face detector that starts with empty ...
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73 views

R: Clustering - how to predict new cases?

I have 4000 (continuous) predictor variables in a set of 150 patients. First, variables with are associated with survival should be identified. I therefore use the multiple testing procedures ...
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3answers
74 views

Use K-means to learn features in Python

Question I implemented a K-Means algorithm in Python. First I apply PCA and whitening to the input data. Then I use k-means to successfully subtract k centroids out of the data. How can I use those ...
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1answer
44 views

AgglomerativeClustering scikit learn connectivity

I have a matrix x= [[0,1,1,1,0,0,0,0], [1,0,1,1,0,0,0,0], [1,1,0,1,0,0,0,0], [1,1,1,0,0,0,0,0], [0,0,0,0,0,1,1,1], [0,0,0,0,1,0,1,1], [0,0,0,0,1,1,0,1], [0,0,0,0,1,1,1,0],] After calling ...
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0answers
14 views

Method to select optimal result in sequence of unsupervised learning tasks

The task involves several different small tasks, all of them are unsupervised. The basic work flow is like: TF-IDF Phrase selection based on TF-IDF Calculate similarity between words, and select ...
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1answer
62 views

Affinity Propagation preferences initialization

I need to perform clustering without knowing in advance the number of clusters. The number of cluster may be from 1 to 5, since I may find cases where all the samples belong to the same instance, or ...
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2answers
90 views

How can I interpret the results of R kmeans function?

I have a large set of data containing the description for 81432 images. These descriptions are generated by an image descriptor which generates a vector (for each image) with 127 positions. So, I have ...
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160 views

why unsupervised model needs to implement nn.diag?

I am trying to learn deep learning. In torch tutorial, https://github.com/torch/tutorials/blob/master/2_supervised/2_model.lua ...
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1answer
27 views

Choosing the minimum and maximum number of clusters in Xmeans with WEKA

I see that the WEKA interface requires a minimum and maximum number of clusters to be specified before running the X-means clustering algorithm. What is a good way to determine these numbers? Isn't ...
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159 views

DL4J is super slow on GoogleNews-vectors file

I tried to execute the following example on DL4J (loading pre-trained vectors file): File gModel = new File("./GoogleNews-vectors-negative300.bin.gz"); Word2Vec vec = ...
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2answers
62 views

Choosing the number of clusters in heirarchical agglomerative clustering with scikit

The wikipedia article on determining the number of clusters in a dataset indicated that I do not need to worry about such a problem when using hierarchical clustering. However when I tried to use ...
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61 views

Hopfield's rule and Hebb's rule are same for this set of pattern?

I am trying to create synaptic memory matrix (a square matrix which remembers patterns into its entries) for a set of two patterns using two different rules. The pattern's are P_1 = {-1, 1, 1, -1, ...
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52 views

New Python Install; Scripts Running very Slow

Current Python Version 2.7.10 - I have tried a straight download from python.org and the Anaconda distribution. Previous Python Version was 2.7.x (don't remember) - I know it was an Enthought Canopy ...
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1answer
40 views

Markov chain - Likelihood of sample with “unseen” observations (probability 0)

I have a large Markov chain and a sample, for which I want to calculate the likelihood. The problem is that some obervations or transitions in the sample don't occur in the Markov chain, which makes ...
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40 views

Is train/test-Split in unsupervised learning necessary/useful?

In supervised learning I have the typical train/test split to learn the algorithm, e.g. Regression or Classification. Regarding unsupervised learning, my question is: Is train/test split necessary and ...
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2answers
60 views

How to do Hierarchical Clustering for large similarity matrix

I have around 50K data sets whose value may range between 0 and 10. I want to apply the HAC to cluster these data. But to apply HAC I need to prepare a N*N similarity matrix. For N = 50 K , this ...
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1answer
160 views

Hidden Markov Model: Is it possible that the accuracy decreases as the number of states increases?

I constructed a couple of Hidden Markov Models using the Baum-Welch algorithm for an increasing number of states. I noticed that after 8 states, the validation score goes down for more than 8 states. ...
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1answer
145 views

Implementation of convolutional sparse coding in deep networks frameworks

I wanted to implement some convolutional sparse coding procedure similar to one described in this paper : http://cs.nyu.edu/~ylan/files/publi/koray-nips-10.pdf I tried with different frameworks ...
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1answer
160 views

Self organising map visualisation result interpretation

Using the R Kohonen package, I have obtained a "codes" plot which shows the codebook vectors. I would like to ask, shouldn't the codebook vectors of neighbouring nodes be similar? Why are the top 2 ...
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9 views

Cross-Validation of Unlabelled Images

I have a large dataset of unlabelled images on which I want to run an unsupervised image search. Is there any way of cross-validating one's results with the exception of actually seeing the search ...
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1answer
51 views

calculating similarity between two profiles for number of common features

I am working on a clustering problem of social network profiles and each profile document is represented by number of times the 'term of interest occurs' in the profile description. To do clustering ...
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1answer
58 views

Unbiased prediction of cluster labels

I am interested in evaluating the predictability of cluster labels found through unsupervised clustering. Suppose I have a dataset consisting of patients, and I use an unsupervised clustering ...
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1answer
582 views

what is distant supervision?

According to my understanding, Distant Supervision is the process of specifying the concept which the individual words of a passage, usually a sentence, are trying to convey. For example, a database ...
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122 views

Semi - supervised LDA (Latent Dirichlet Allocation) using seed words

I wan to use semi-supervised LDA (Latent Dirichlet Allocation). I have several fixed topics, and have seed documents that relate to these topics. I can even prepare some seed words. I'd like to run ...
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2answers
20 views

How to identify moving points together in the time series data

I have a time series of points i.e getting x and y coordinates from some api at some regular intervals and I want to figure out which are the points which are actually moving together on looking their ...
4
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1answer
235 views

Add regression layer to caffe

I have implemented a smile detection system based on deep learning. The bottom layer is the output of the system and has 10 output according to the amount of the person's smile. I want to convert ...
0
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1answer
52 views

How can i apply SVM or deep neural network for image retrieval

After obtaining the image dataset, the feature database is constructed for all images which is a vector based on mean and sd of RGB color model and HSV color model for a portion of the image. How can ...
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37 views

Which machine learning method/algorthim would suite this scenario

This application has it's roots in public transport, users opening the application and looking at the departure times of buses for specific stops (page 1) or planning a journey from location A to B ...
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2answers
398 views

How to compute accuracy for cluster evaluation in Weka

How do we compute accuracy for clusters using Weka? I can use this formula: Accuracy (A) = (tp+tn)/Total # samples but how can I know what is the true positive, false positive, true negative and ...
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2answers
46 views

Is possible to distinguish strings encrypted with different cryptography algorithms that are in the same set?

Is possible to distinguish strings encrypted with different cryptography algorithms? If i have a set of N encrypted strings that comes from different cryptography algorithms (i.e. 100 from AES, 150 ...
2
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2answers
655 views

Document Clustering in python using SciKit

I recently started working on Document clustering using SciKit module in python. However I am having a hard time understanding the basics of document clustering. What I know ? Document clustering ...
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1answer
161 views

unsupervised random forest classification of raster stack in R

I want to compute an unsupervised random forest classification out of a raster stack in R. The raster stack represents the same extent in different spectral bands and as a result I want to obtain an ...
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0answers
252 views

ReLU in Deep Neural Net trained with Contrastive Divergence

I am trying to adopt the code for Deep Learning with Contrastive Divergence from http://deeplearning.net/tutorial/DBN.html#dbn to work with real valued input data instead of binary as described in the ...
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1answer
130 views

Using ELKI MiniGUI for anomaly detection with training set and test set

I have: A file training.arff which contains only samples with normal behavior. A file test.arff which contains samples both with normal and abnormal behavior. I would like to use ELKI MiniGUI for ...
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1answer
409 views

how to do clustering when the input is 3D matrix, MATLAB

i am having 3D matrix in which most of the values are zeros but there are some nonzeros values. when I am plotting this 3D matrix in matlab I am getting plot like as below here u can see there are ...
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42 views

Unsupervised learning outlier detection

I have a dataset that looks as follows userid⇥week1⇥week2 ⇥week3⇥week4⇥week5⇥week6⇥week7 1234⇥39724⇥34377⇥34377⇥38990⇥38298⇥39129⇥40500 2345⇥35960⇥39368⇥39368⇥39368⇥60732⇥37390⇥38836 ...
2
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2answers
152 views

How can I speed up a topic model in R?

Background I am trying to fit a topic model with the following data and specification documents=140 000, words = 3000, and topics = 15. I am using the package topicmodels in R (3.1.2) on a Windows 7 ...