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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R: Caret Package - Regression with (strong) confidence? [migrated]

I am fairly new to using prebuilt machine learning packages in R. I am looking at the following problem. I have a long feature set, very small training set, and a large test set. The goal is to ...
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1answer
37 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
32 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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17 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
14 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 ...
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17 views

Add regression layer to MatConvNet

I have designed a smile detection system. this system is based on deep learning and has been implemented by MatConvnet. The last layer is the output of the system and has 10 output according to the ...
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31 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 ...
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0answers
11 views

Which unsupervised clustering algorithm other than Kmeans is best to apply on Integer multi dimensional array in C#?

I have a multi-dimensional array of integers and I am applying K-Means in order to cluster the data but it looks like clustering is not good enough to represent it as a cluster. Any Idea which ...
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1answer
30 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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21 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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1answer
55 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
33 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
56 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
47 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
79 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
42 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
54 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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25 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 ...
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0answers
27 views

Error selecting optimum bandwidth while performing mean shift clustering using LPCM library in R

Error in order(select.2diff) : argument 1 is not a vector I got the error above when I ran the following code: # Bandwidth selection via self-coverage foo <- ...
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2answers
54 views

Is supervised learning synonymous to classification and unsupervised learning synonymous to clustering?

I am a beginner in machine learning and recently read about supervised and unsupervised machine learning. It looks like supervised learning is synonymous to classification and unsupervised learning is ...
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1answer
86 views

Unsupervised deep artificial neural network classifier for rare occurrences of an event

I built and trained an unsupervised deep artificial neural network to detect high-order features from a large data set. The data consists of daily weather measurements, and the output of the last ...
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1answer
36 views

which is the right learning algorithm, k-means?

I am working on a basic decision making algorithm, i.e. based on the time of a parallel loop iteration, a decision is made to either increase or decrease the amount of threads assigned to a process. ...
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3answers
89 views

Is kmeans repeatable?

I wanted to know if we get roughly the same centroid points for the exact same data set given that the initial centroid points are chosen randomly. I'm writing a test kmeans program, and they don't ...
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1answer
51 views

Determine the attribute that influences the outcome most

I have a dataset in .csv format as shown: NRC_CLASS,L1_MARKS_FINAL,L2_MARKS_FINAL,L3_MARKS_FINAL,S1_MARKS_FINAL,S2_MARKS_FINAL,S3_MARKS_FINAL, FAIL,7,12,12,24,4,30, PASS,49,36,46,51,31,56, ...
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40 views

Apriori like algorithms

The Apriori algorithm predominantly works by pruning the possible itemsets by using a fixed threshold namely, support threshold(lowerbound). Are there any other metrics which can be used as an ...
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50 views

Compute the CH index and chose the number of clusters k that yields the highest CH index?

I have the following code provided from an assignment: from sklearn import metrics from sklearn import datasets from sklearn.cluster import KMeans from sklearn.decomposition import PCA iris_data = ...
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43 views

Can we learn 3d features using Autoencoder?

Typically, we use Autoencoder to learn 2d features on 2d images (e.g. pen-strokes of digit). For example, if I have 10000 3d 31x31x31 images (e.g. car images). I unroll each of the images, i.e. ...
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1answer
34 views

Ready package for semi-supervised learning

I need do NER with small train set. I think that the solution will realize with some semi-supervised learning algoritm. Is there any ready packages that will fulfill for this task?
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1answer
818 views

Can anyone give a real life example of supervised learning and unsupervised learning?

I recently studied about supervised learning and unsupervised learning. From theory, I know that supervised means getting the information from labeled datasets and unsupervised means clustering the ...
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1answer
342 views

Getting the learned representation of the data from the unsupervised learning in pylearn2

We can train an autoencoder in pylearn2 using below YAML file (along with pylearn2/scripts/train.py) !obj:pylearn2.train.Train { dataset: &train !obj:pylearn2.datasets.mnist.MNIST { ...
4
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3answers
267 views

Clustering of news articles

My scenario is pretty straightforwrd: I have a bunch of news articles (~1k at the moment) for which I know that some cover the same story/topic. I now would like to group these articles based on ...
3
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1answer
838 views

scikit-learn: clustering text documents using DBSCAN

I'm tryin to use scikit-learn to cluster text documents. On the whole, I find my way around, but I have my problems with specific issues. Most of the examples I found illustrate clustering using ...
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1answer
88 views

Selecting an appropriate similarity metric of a k-means clustering model

I 'm using k-means algorithm for clustering my data. I have 5 thousand samples. .(Each of my sample is about a customer. to analyse customer value I 'm going to clustering them base on 4 behavior ...
5
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1answer
2k views

Unsupervised pre-training for convolutional neural network in theano

I would like to design a deep net with one (or more) convolutional layers (CNN) and one or more fully connected hidden layers on top. For deep network with fully connected layers there are methods in ...
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2answers
592 views

How do you decide the parameters of a Convolutional Neural Network for image classification?

I am using Convolutional Neural Networks (Unsupervised Feature learning to detect features + Softmax Regression Classifier) for image classification. I have gone through all the tutorials by Andrew NG ...
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1answer
49 views

what is convergence in k Means?

I have a very small question related to unsupervised learning because my teacher have not use this word in any lectures. I got this word while reading tutorials. Does this mean if values are same to ...
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3answers
63 views

Why only hyperplanes in support-vector machines?

I only recently learnt about support vector machines. From what I understood, hyperplanes are used to separate the data (raised to the higher dimension) into two mutually exclusive parts (partitions). ...
3
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1answer
285 views

unsupervised semantic clustering of phrases

I have about a thousand potential survey items as a vector of strings that I want to reduce to a few hundred. Normally when we talk about data reduction, we have actual data. I administer the items to ...
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1answer
32 views

Does StandardScaler() maintain order?

I'm using StandardScaler to transform data before providing training dataset to clustering model. X = StandardScaler().fit_transform(X_train) Assume, clf is the unsupervised cluster model, I'm ...
1
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1answer
290 views

Using Weka for unsupervised clustering

I have data in the following format: X,Y,sim(X,Y) That is, a list of triples, with: X, the name of an object; Y, the name of another object; sim(X,Y), a real number expressing the distance ...
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2answers
43 views

Segment multilanguage parallel text

I have multi-language text that contains a message translated to several languages. For example: English message Russian message Ukrainian message The order is not exact. I would like to devise ...
0
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1answer
24 views

Multiple features clustering

I want to know how I could perfom a cluster analysis with multiple features. Let's consider, for example, that I have a set of features for each object (I have a lot of objects). And each of these ...
1
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0answers
193 views

classifier / recommender for images - unsupervised machine learning / neural networks / logistic

So, given a set of tens to hundreds of images, whom I don't have control over, but I know they are classified as 1/0, which technique, is best suited for recommending / classifying images? it needs ...
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1answer
105 views

Cutting dendrogram at highest level of purity

I am trying to create program that cluster documents using hierarchical agglomerative clustering, and the output of the program depends on cutting the dendrogram at such a level that I get maximum ...
1
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1answer
305 views

Unsupervised learning in artificial neural networks

If I were to train an artificial neural network's weights using a genetic algorithm what type of learning would this be classed as? I believe it's unsupervised but does it have a name? It seems like ...
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2answers
684 views

Is a genetic algorithm a form of unsupervised learning? [closed]

I have a pretty simple question. However I have searched extensively and am unable to find the answer. Is a genetic algorithm considered to be a form of unsupervised learning? I know that the ...
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1answer
1k views

Deep autoencoder using RBM

I m implementing Deep autoencoder using RBM. I understand that, for unfolding the network, we need to use the transposed weights of the encoder for the decoder. But I'm not sure which biases should we ...
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1answer
144 views

Kohonen network - how to choose the map parameters

http://xmipp.cnb.csic.es/NewXmipp/Web_Site/public_html/NewXmipp/Applications/Src/SOM/Help/som.html Example 1: Maps a set of data stored in "test.dat" file into a 10x7 hexagonal map. in this case , ...
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2answers
188 views

Distance dependent Chinese Restaurant Process maybe

I'm new to machine learning and want to implement the distance dependent Chinese Restaurant process in MATLAB for the clustering of audio tracks. I'm looking to use the dd-CRP on 26 features. I'm ...
5
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1answer
260 views

scipy.optimize + kmeans clustering

I have the following setup for kmeans clustering algorithm that I am implementing for a project: import numpy as np import scipy import sys import random import matplotlib.pyplot as plt import ...