Machine learning revolves around developing self learning computer algorithms that function by virtue of discovering patterns in data and making intelligent decisions based on such patterns.

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Boxplot including outliers in R, make the whole ranges being compared.

I am comparing several values using R, they are 8 variables stored in 1000 length vectors. That means, 1000*8 matrix, 8 columns represent 8 variables. Then I call boxplot(test), I got like: The ...
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2answers
1k views

Perceptron learning - most important feature

For one of my assignments in my AI class we were tasked with creating a perceptron learning implementation of the Widrow Hoff delta rule. I've coded this implementation in java: The following github ...
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1answer
303 views

What parameters can I play with using mcl?

I am clustering undirected graphs using mcl. To do so, I have choose a threshold under which nodes are connected, a similarity measure for each edge and the inflation parameter to tune the granularity ...
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2answers
2k views

How to access source code of a WEKA model file

I have been training WEKA model files and I want to see the contents of these. I tried changing their file extensions to .class and .java but the results are not readable. A Google search brought me ...
5
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4answers
673 views

Can stop-words be found automatically?

In NLP, stop-words removal is a typical pre-processing step. And it is typically done in an empirical way based on what we think stop-words should be. But in my opinion, we should generalize the ...
2
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1answer
150 views

Backpropogation neural network - error not converging

I am using backpropogation algorithm for my model. It works perfectly fine a simple xor case and when I tested it for a smaller subset of my actual data. There are 3 inputs in total and a single ...
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2answers
7k views

bayesian network vs bayes classifier

What is the difference between a Bayesian network and a Naive Bayes classifier? I noticed one is just implemented in matlab as classify the other has an entire net toolbox. If you could explain in ...
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2answers
428 views

How to determine Expected Value of Wait Time for a random periodic process?

It has been awhile since I have done any real statistics, but I am hoping the Stack Overflow Community can help. While I can't give the exact application as it is proprietary, here is an equivalent ...
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4answers
1k views

Can a Neural Network Find the i-th Permutation of a fixed size list?

Briefly Can a neural network emulate factorial decomposition (or some other method) to provide a list permutation given the permutations unique index? Application I have a list of 10 things, and ...
0
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1answer
190 views

WEKA 3.7.10 not compatible format, class index differ

I use weka for text classification, I have a train set and untagged test set, the goal is to classify test set. In WEKA 3.6.6 everything goes well, I can select Supplied test set and train the model ...
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2answers
439 views

How can KMeans be used to assert that a dataset has noise?

I have come across an extract from an old paper which casually mentions, If required, we could use KMeans as a method of asserting that this dataset is noisy, thus proving that our classifier ...
14
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8answers
4k views

Are there any open source Hierarchical Temporal Memory libraries? [closed]

I'm potentitally interested in the using Hierarchical temporal memory heuristic to solve a research problem I am working on. Some more details about it can be found here: http://en.wikipedia.org/wiki/...
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1answer
568 views

Cross-validation and Random forests

I'm using Random forests to predict labels in my dataset. My question is: Does it make sense to do a 10-fold cross-validation using random forest? Intuitively I can say that Random forests do cross-...
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1answer
258 views

How does AUC of decision tree being calculated?

Suppose I have a dataset which only has one continuous variable, and I try to use decision tree algorithm to build a model which classify the +ve and -ve label from the dataset. I run 10-fold cross-...
0
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1answer
95 views

SVM vector of weights

I have a classification task, and I use svm_perf application. The question is having trained the model I wonder whether it's possible to get the weight of the features. There is an -a parametes ...
4
votes
1answer
465 views

how to use svd to recommend item based on items

I have trained a SVD model to recommend items based on userId. However, is there any way to recommend items based on items list instead of userId? For example, given a list of items, [1,2,3,4,5], ...
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0answers
136 views

Adaboost M1 - Why the loss function is not strictly decreasing?

My understanding is, for Adaboost M1, the loss function mean(-y*F) is always strictly decreasing, but this is not the case for the following code. Can anyone help? I m following the example of ...
0
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1answer
105 views

Proper Mahout CVB max iteration count

When using the mahout cvb from the command line. what is the best way to determine to determine the iteration count number? -x is the argument to set it. The default appears to be 4 (from other ...
5
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1answer
2k views

How to preprocess data for machine learning?

I just wanted some general tips on how data should be pre-processed prior to feeding it into a machine learning algorithm. I'm trying to further my understanding of why we make different decisions at ...
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3answers
2k views

Single Perceptron - Non-linear Evaluating function

In the case of a single perceptron - literature states that it cannot be used for seperating non-linear discriminant cases like the XOR function. This is understandable since the VC-dimension of a ...
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1answer
467 views

Using LibShortText with files in LibSVM format

I'm trying to use LibShortText but I don't entirely understand how it works. From the README, it looks like it's functions are for text-files. However, I need to classify files that are already in ...
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1answer
606 views

Using a single weight matrix for Back-Propagation in Neural Networks

In my Neural Network I have combined all of the weight matrices into one large matrix: e.g A 3 layer matrix usually has 3 weight matrices W1, W2, W3, one for each layer. I have created one large ...
2
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1answer
1k views

bag of words for classification - features vs pixels

I am classifying medical images using bag-of-words model. I did the following to extract the feature vector: extract features from small image patches and then apply BOW on those features extract ...
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1answer
168 views

How to distinguish low entropy and high entropy with the information produced using shannon entropy

I calculated an entropy level of user's behaviour for its possible states of occurence (H:=Home, w:=Work or E:=Elsewhere) for a day. Say a user A has its possible states for each hour of a day as {H,H,...
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1answer
512 views

ClassCastException: org.apache.hadoop.io.Text cannot be cast to org.apache.hadoop.io.IntWritable in K-Means Clustering Mahout

I am using Mahout commands for K-Mean Clustering, the input file is "KMeansData.csv" and the data is in this format, John,M,30,Pepsi,US Jack,M,25,Coke,US David,M,34,Pepsi,UK Ted,M,37,Limca,CAN ...
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1answer
126 views

How to adjust parameters when training a svm model

If I using rbf as the kernel function, then two parameters(c and g) has to be adjusted. I can search every parameter pair(ci,gi),and select the best pair. Is there any better approach to find the ...
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0answers
59 views

How to stochastically pick a binary state vector

I'm trying to reproduce results of paper Using Very Deep Auto encoders for Content-Based Image Retrieval I have some working code thanks to Theano framework, but I don't really know what is meant by ...
0
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1answer
119 views

How to print out an accuracy score for each combination within Gridsearch?

I have set up a GridSearchCV and have a set of parameters, with I will find the best combination of parameters. My GridSearch consists of 12 candidate models total. However, I am also interested in ...
0
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1answer
202 views

Selecting the best node having numerical values for attributes in ID3 decision tree

I have the following code. It works correctly when I don't have any numerical values in my attributes for selecting the best attribute. However I am not sure how should I modify my code to work when I ...
1
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1answer
156 views

how to set custom hiddenclass function in pybrain?

I want to train a neural network with (1,Nh,1,1) (one input, Nh neurons in the first hidden layer , 1 neuron in the second hidden layer and 1 output). In the second hidden layer I would like to use ...
2
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2answers
2k views

Recommendation Algorithms for tweets in C#

I'm looking for an algorithm/ recommendation engine to "recommend" tweets based on rating of the content of the tweet: From a data set of 1000 rated(1 to 5) tweets recommend tweets based on the rated ...
2
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1answer
3k views

Tested implementation of APriori and FP-growth in python [closed]

I am searching for (hopefully) a library that provides tested implementations of APriori and FP-growth algorithms, in python, to compute itemsets mining. I searched through SciPy and Scikit-learn but ...
0
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1answer
458 views

differentiable maximum and minimum

I need an approximation to maximum and minimum. Since the max and min are not differentiable I am looking for an differentiable approximation to it. Does anybody know about it? for example I need to ...
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3answers
54 views

How can i proof my results after mine some dataset?

I wonder if there´s anyway to proof the correctness of my results after apply some data mining algorithms to a set of data. When i say data mining algorithms im talking about the basic algorithms
2
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1answer
2k views

How to normalize ranked data in scikit learn?

I am doing some machine learning and need help with one aspect of my coding. In my training data, I have a number of URLs of webpages and some features for these webpages. I am running TF-IDF on the ...
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2answers
592 views

Can you look at an RBM as being a kind of multiplicative NN? [closed]

Neural Nets sum up weights, but RBMs... multiply weights into a probability? So is an RBM kind of like a bidirectional neural net that multiplies it's weights instead of adding them?
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1answer
142 views

Real numbers (constants) in genetic programming

I can't figure out how a genetically programmed A.I. can determine when there should be a constant in the final equation. If I take the formula F(m) = ma; F(m) = m9.8, how can the A.I. know what the ...
0
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1answer
544 views

How to select top n features using Information Gain as criteria

I have a training.arff file, where each entry has 2000 features (attributes). I want to select the top n of those attributes using the Information Gain criteria. How can I do that using WEKA and the ...
2
votes
1answer
1k views

libsvm with precomputed kernel: How do I compute the classification scores?

I am working with libsvm in MATLAB and am training and testing a 1-vs-all SVM with a precomputed non-linear kernel. I'm a bit new to SVMs and I am trying to calculate the decision function. I know ...
1
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1answer
283 views

why using precomputed kernels with libsvm in matlab

I am new to MATLAB and to LIBSVM. I got the fact that to use precomputed kernel, you must include sample serial number as the first column of the training and testing data. But importantly what I don'...
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votes
1answer
105 views

Difference between regular clustering and k-means clustering

I have a set of N values and I perform the following two operations on them 1) Sort and iterate and partition the values into k buckets. 2) Run the Lloyd's algorithm (as given here) and get k means....
2
votes
1answer
331 views

Joining columns in pandas incorrectly

I am running TF-IDF on a single column. I want to use this TF-IDF and another scaled integer column to train my Logistic Regression classifier. Unfortunately I am running into problems doing this as I ...
2
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1answer
946 views

How to extract human voice from an audio clip, using machine learning?

How can we use machine learning to get human voice from an audio clip which can be having a lot many noise over whole frequency domain.
1
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3answers
202 views

More accurate approach than k-mean clustering

In Radial Basis Function Network (RBF Network), all the prototypes (center vectors of the RBF functions) in the hidden layer are chosen. This step can be performed in several ways: Centers can be ...
0
votes
1answer
193 views

What does numeric values mean for weka

I am using NaiveBayes classifier of Weka. There's something that I have heard and I'm not sure if it's true. Somebody told me that when I have numeric values in weka, the higher value has a higher ...
7
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2answers
347 views

Is there any best practice to prepare features for text-based classification?

We have many feedback and issue reports from customers. And they are plain texts. We are trying to build a auto classifier for these docs so future feedback/issues could be auto routed to the correct ...
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2answers
603 views

Recommendation systems - converting transaction counts to star ratings

I'm doing some exploratory work on recommendation systems and have been reading about collaborative filtering techniques involving user-based, item-based, and SVD algorithms. I am also trying out R's ...
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0answers
155 views

Viterbi Algorithm - Score

I am working on a project that uses the leap motion controller. I am using a Hidden Markov Model to model whether a hand is moving left, or, whether a hand is moving right. For this, I do the ...
0
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1answer
57 views

Number of trainings done with Pipeline and GridSearchCV

I'm reading this tutorial that combines PCA and then logistic regression in a pipeline and after then apply cross validation with a defined set of parameters for PCA and Logistic Regression. Here is ...
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2answers
459 views

Is silhouette coefficient subsampling stratified in sklearn ?

I'm again having trouble using the scikit-learn silhouette coefficient. (first question was here : silhouette coefficient in python with sklearn). I make a clustering that can be very unbalanced but ...