In machine learning and statistics, classification is the problem of identifying which of a set of categories a new observation belongs to, on the basis of a training set of data containing observations whose category membership is known.

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RapidMiner: Ability to classify based off user set support threshold?

I am have built a small text analysis model that is classifying small text files as either good, bad, or neutral. I was using a Support-Vector Machine as my classifier. However, I was wondering if ...
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33 views

Weka installing libsvm

I'm trying to use libsvm in weka from java. I've added the libsvm jar to classpath, including the weka jar. Weka version: 3-6 Image here: http://tinypic.com/r/14xhycz/8 Libsvm works in the weka ...
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38 views

Different classification results in Weka: GUI vs Java library

I've some problems when comparing Weka GUI classification results with my Java program, performing a tree (J48) with the iris dataset. I'd be very grateful if you could help me. I'm working with iris ...
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39 views

Weka Classifier Accuracy

I've got 73,841 instances of data, from 17 classes, that I am using to train a classifier with WEKA. The data has been filtered using FFT, and each instance has three points. I.e. 85724.5409, ...
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30 views

What is the best color space for scene classification?

I have four classes city,roads,sea and forests and some train photos and test photos I would like to classify any coming test photo based on their color histograms so I was wondering which color space ...
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19 views

Data Mining and Unbalanced Classes

I have unbalanced classes of records and the data is like the following: X Y Z Class 1 4 Good A 3 5 Very Good A 7 6 Good A 8 7 Excellent ...
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2answers
84 views

In python, what is a good way to match expected values to real values?

Given a Dictionary with ideal x,y locations, I have a list of unordered real x,y locations that are close to the ideal locations and I need to classify them to the corresponding ideal location ...
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17 views

Is this adaboost classification normal or have I implemented it wrong?

The following data set contains 10,000 artificial data points which depend on the x and y axis variables. The weak classifiers are decision stumps from the x axis and y axis both split 200 times (less ...
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26 views

Improve Prediction Sensivity using SVM with OpenCV

I am trying to classify my images whether characters are printed on surface or not. For doing it. First I take surf features of images with real images and manually defect real images to try create ...
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18 views

Classification results Weka

I use weka to classify sentences in to 7 categories. I tried an expiements in which I used StingToWordVector filter . Then used some filters for attribute selection. Then I classified the training ...
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39 views

Usage of fitcknn etc. to k-NN Classification

I have basic example to solve with k-NN classification method. I tried to solve this with distance formulas. Here is 3-NN classification with Euclidean distance: clc clear class1={[1 ; 0 ; 1.1],[1 ; ...
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19 views

How to classify color of similar object using SimpleCV with Python

I am currently working on color classification(Orange, Blue and Yellow) of similar image using IDLE(Python GUI). Anybody can give me an idea on how can I classify those colors? Basically, this is how ...
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36 views

convert mahout random forest classification output to readable

I am learning the mahout random forest with tutorial in mahout site: http://mahout.apache.org/users/classification/partial-implementation.html but when all jobs finishes successfully my output file ...
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32 views

Nodes in Decision Tree in R - more nodes needed

I created a decision tree in R. When I plotted it I had only 3 nodes (1 root and 2 terminal). The formula that I used to create the decision tree is >FertilityTree <- rpart(Output~ Age + ...
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31 views

How to implement Eucliden Distance or Mahalanobis Distance as a classifier in matlab?

I have derived 8-connected chain code as a feature extraction from set of images. Now for classifier, how does Euclidean distance or Mahalanobis distance works ? It has been widely used but I fail to ...
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14 views

run classifier with different feature in orange

I’m using SVM as a classifier for a data set that contains 500 dimension and 5000 of tuples I want to have feature selection before running SVM. For example I ranked all features and want to start ...
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8 views

How can I classify 1000 keyworks on the basis of there trend for 30 days?

its like keywords showing similar patterns on graphs(for 30 days) will be classified as group. I want to make 6 7 such groups.
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23 views

SVM Params : On what basis the different parameters should be set in opencv (3D data)?

I have been working on Classifications of 3D Objects using SVM Classifier, I'm stuck up at classification step. I have taken a 3D data : Point Cloud Data, For training model to be build, i have ...
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28 views

Weka: Training with balanced data and testing with imbalanced data by k-fold CV

So I am using Weka to perform a binary class prediction experiment. My data is imbalanced so I would like to use sampling to increase instances of the minority class. What I wanna do is to use the ...
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40 views

libSVM - second best classification

I am facing a classification problem, so I thought I could use libSVM and in fact everything works just fine. Now I would like to introduce some 'tolerance' and see if my system can guess the correct ...
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42 views

How to Set up A Decision Tree

I am not sure of what I am doing wrong? I am trying to grow a decision tree from my data. CasinoTree <- rpart(Default ~ Competition + FreeLiquor + RateofReturn + ...
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20 views

Weka combining Clustering and Classification

I have just started using Weka and I was just wondering if it is possible to combine clustering and classification using the Weka tool. I would like to cluster the data first and then apply ...
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19 views

Matlab fitcdiscr visualize 3d QDA classifer

Online, matlab provides a 2d example of visualizing the QDA classifier for the FischerIris data: http://www.mathworks.com/help/stats/discriminant-analysis.html#brah8i8-1 However, I am working with a ...
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14 views

stanford maxent classification prediction

I am trying to use stanford maxent classification to classify data using 4 features and the 5th one is class. When I am supplying test data then the accuracy is 99% which seems next to impossible. ...
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21 views

Wrong accuracy from KNN function, not sure what is wrong

I have made a KNN function that is needed for a dataset containing 21 features and the corresponding label in the last column. When I run the function, the accuracy comes out as 1. I am new to python ...
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52 views

Interpret the output of neural network in matlab

I have build a neural network model, with 3 classes. I understand that the best output for a classification process is the boolean 1 for a class and boolean zeros for the other classes , for example ...
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24 views

Quick way to distinguish similar objects from each by distinct features on one object

I've made a classifier (based on HoG features) that can recognize big vehicles (buses and trucks). But I want to be able to distinguish between buses and trucks, too. This causes problems since both ...
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62 views

How Do I Normalize CSV Input Data in Encog?

I have successfully made a neural network using Jeff Heaton's Encog library. I am currently using it to classify (Iris Plants). The problem I now have is as follows: I have a dataset CSV file which ...
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23 views

Predict probabilities in Python classification

I want to train a SVM based classifier with a RBF kernel for my data and after that, i want to keep only the predictions where the label probabilities are higher than a certain threshold. How can i do ...
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37 views

If a not good attribute is selected for decision tree, there is a consistent hypothesis here?

I take a sentence from a note to someone and I am now wondering how this statement can be valid: In constructing a decision tree for noise-free data, if a good feature has not been selected for ...
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10 views

What is support vectors? How to calculate number of support vector? what is generalization in SVM?

What is support vectors? is there any relationship between support vector and features? How to calculate number of support vector? what is generalization in SVM? just now i want learn something about ...
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1answer
35 views

How to get weights for a LibSVM classifier in Java?

I am using LibSVM in Java, as follows: LibSVM classifier = new LibSVM(); classifier.setCost(C); I am interested in getting the weights w and the parameter b from the classifier, so as to ...
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44 views

Noisy neural network training set

Recently I found an example where a Neural Network tried to classify characters. There were trained two neural networks. One with a noisy data set and second without it. I tried to find any ...
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27 views

Senti_classifier not showing any polarity

My sentiment analysis code is not giving any polarity. This is the code. from senti_classifier import senti_classifier sentences = ['The movie was the worst movie', 'It was the worst acting by the ...
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53 views

R Caret Package error imputing data with Pre-Process function

I have a dataset (training - testing) with missing data and I would like to impute data before the classification. I tried using the caret package and the function preProcess, I want to impute data ...
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How to find true positives, true negatives, false positives, false negatives in Python [closed]

I have trained a classifier in Python and i want to find the true positives, true negatives, false positives, false negatives when i am doing a new classification. The thing is that every time, my ...
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103 views

feature selection in wrapper method and information filtering?

I see one example in old-mid exam from well-known person Tom Mitchell, as follows: Consider learning a classifier in a situation with 1000 features total. 50 of them are truly informative about ...
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1answer
108 views

Training images using SVM on OpenCV

I am trying to do classification with images (next step I'll classify based on features but now just want to try whether I am doing it right or not) here is my code. #include ...
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53 views

k-NN and some questions about k values and decision boundary

I ran into some facts make me confusing. For k-NN classifier: I) why classification accuracy is not better with large values of k. II) the decision boundary is not smoother with smaller ...
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1answer
55 views

How to run naive Bayes from NLTK with Python Pandas?

I have a csv file with feature (people's names) and label (people's ethnicities). I am able to set up the data frame using Python Pandas, but when I try to link that with NLTK module to run a naive ...
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53 views

Why does the accuracy of classification drop with the increase of features used when using RFECV in scikit-learn?

Could anyone please explain me why the accuracy of classification drops with the increase of features used in recursive feature elimination with cross-validation in Scikit-learn? From the example ...
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45 views

Algorithm co-training machine learning, the best strategy?

I implemented the co-training to undergraduate and now need to implement an ensemble of ensemble after each iteration. For example: In the 1st iteration, we will have a classifier and the data will ...
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1answer
26 views

Approach towards Mining Accelerometer Sensor Data

I am a fresher to Data Mining and have some fundamental questions on one of the projects I am working for my College. Data: We have decided to mine accelerometer and gyroscope sensor readings from a ...
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1answer
39 views

MATLAB Naive Bayes object storing

After using: nb = NaiveBayes.fit(training, class) To create a Naive Bayes classifier object, I want to save N-by-D of these objects in a matrix. I have tried to do the following ...
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14 views

determine accuracy of actual vs predicted when doing knn

i have a two datasets. i ahev to run a knn classification analysis. i managed to run the knn but i am not sure how to find the accuracy in % of the actual and predicted. ...
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What is the actual meaning implied by information gain in data mining?

Information Gain= (Information before split)-(Information after split) Information gain can be found by above equation. But what I don't understand is what is exactly the meaning of this information ...
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153 views

Testing the NLTK classifier on specific file

The following code run Naive Bayes movie review classifier. The code generate a list of the most informative features. Note: **movie review** folder is in the nltk. from itertools import chain ...
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get consensus of multiple partitioning methods in R

My data: data=cbind(c(1,1,2,1,1,3),c(1,1,2,1,1,1),c(2,2,1,2,1,2)) colnames(data)=paste("item",1:3) rownames(data)=paste("method",1:6) I want as an output that according to a majority of the ...
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83 views

NLTK: Naive Bayes - where/how to add in ngrams?

I am doing a classification task on tweets (3 labels= pos, neg, neutral), for which I'm using Naive Bayes in NLTK. I'd like to add in ngrams (bigrams) as well. I have tried adding them to the code, ...
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141 views

Using my own corpus instead of movie_reviews corpus for Classification in NLTK

I use following code and I get it form Classification using movie review corpus in NLTK/Python import string from itertools import chain from nltk.corpus import movie_reviews as mr from nltk.corpus ...