Support vector machines (SVMs) are a set of related supervised learning methods that analyze data and recognize patterns, used for classification and regression analysis.

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How to use L2 normalization on features before using them in SVM

I'm training SVM with features extracted from Convolutional Neural Network. As written in this paper (http://arxiv.org/pdf/1405.3531v4.pdf) it is good to L2-normalize your features before applying SVM ...
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Car detection using HOG features and cvsvm

I am doing a project for which I need to detect the rear of a car using HOG features. Once I calculated the HOG features I trained the cvsvm using positive and negative samples. cvsvm is correctly ...
2
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1answer
32 views

Looking into the predict function in R

I am trying to understand how the SVM predict function works when using command ksvm from R package kernlab. I tried the look into the predict function using the following commands: ...
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7 views

FRR and FAR using python

I have implemented SVM classifier and it gave me the predicted label. In here, I want to ask how to calculate FAR (False Acceptance Rate) and FRR (False Rejection Rate) from the results that is given ...
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13 views

Classification of large datasets [on hold]

What will be a good option to be used for classification of large dataset? I tried Decision trees, clustering, neural networks, association mining. Will support vector machine work better than these ...
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21 views

How can I train an SVM classifier with leveldb datatype, generated from caffe framework?

I've fed a bunch of images to the caffe framework (AlexNet) and the last feature descriptors have been extracted and stored in LEVELDB. Now, I want to train a linear SVM classifier on these ...
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23 views

vector extraction for HOGDescriptor::setsvmdetector using cvsvm

I have trained SVM classifier using cvsvm and it is correctly classifying the testing object. Here is my code. #include <opencv2/core/core.hpp> #include <opencv2/highgui/highgui.hpp> ...
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1answer
19 views

how to plot error vs training sample number in matlab using svmtrain

I have a data set of 1960 sample with 12 features and trying solve a binary classification problem using 980 sample for training and 980 sample for testing. For training i am using "svmtrain" and to ...
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22 views

Issues with cvsvm predict

I am trying to train SVM classifier using OpenCV cvsvm. I have 68 rows and 2772 columns with first 34 rows corresponding to positive samples and the remaining 34 rows correspond to negative samples. ...
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34 views

How to handle conditional features with SVM?

My dataset contains features that, if present, can have other features associated. To make an example: Feature A: 0/1 Feature B: doesn't exist if A = 0, else: 1/-1 Feature C: doesn't exist if A = 0, ...
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37 views

Classifying text into different classes depending on similarity

I am working on very large documents {NEWS + Articles} using modeling Natural Sentences into classes, please look at the following example: 1- The System enables a user to shut down the server ...
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1answer
21 views

Caret - Scaling SVM tuning parametert (Sigma) when using plot.train

I am using the Caret package to tune a SVM model. Is there a way to scale the Sigma values similar to the Cost values when plotting the results (as shown in the attached Fig.). Here is my tuning ...
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1answer
32 views

Can I use logistic regression algorithm to predict an ETA for a given task based on historical data?

Can I use logistic regression algorithm to predict an ETA for a given task based on historical data? I have some tasks which takes variable amount of time based on few factors like task type, weather, ...
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24 views

SVM regression ruined by adding polynomial features

I'm trying to get the feel for SVM regression with a toy example. I generated random numbers between 1 and 100 as the predictors, then took their log and added gaussian noise to create the target ...
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1answer
23 views

Two category document classification using sklearn

I am messing around with sklearn and support vector machines to classify documents. The categories that I am looking to place the documents in are {course, non-course} where course represents web page ...
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19 views

Training libsvm with many features

i'm developing an android app that can detect sleep stage(deep, rem, awake) by analysing linear-accelerometer. I extract 48 features from accerometer and use libsvm-android ...
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31 views

Reading SVM model generated by MATLAB in OpenCV

I have generated SVM model using matlab. Now I want to load SVM model in OpenCV. Here is my matlab code to get the SVM model. pos_mat = matfile('positve200.mat'); % positve samples ...
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2answers
31 views

How to do PCA and SVM for classification in python

I am doing classification, and I have a list with two sizes like this; Data=[list1,list2] list1 is 1000*784 size. It means that 1000 images the have been reshaped from 28*28 size into 784. list2 ...
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36 views

plotting linear SVM

I tried following the example here but i am having trouble applying it when i have 16 features. lin_svc is trained with those 16 features (i deleted the line to re-train it again from the example). it ...
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1answer
22 views

Pythom SVM setting an array element with a sequence error

I'm trying to use the SVM from the sklearn library to perform some image recognition, but when I call the fit method, I get a "ValueError: setting an array element with a sequence." type of error. My ...
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30 views

Python improve SVM or better with PCA

I want to do classification for 3D point cloud by SVM. I used python sklearn SVM directly. But the result seems very unreasonable. So I wonder if I should do segmentation firstly? May do the PCA ...
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42 views

Can I train two dimensional x,y together or is each coordinate is considered as one output of SVR and trained independently?

In my project indoor location I use SVR Regression. I need to train SVR offline using x,y location and received signal strength WiFi (to build fingerprint database) for training in my location, and ...
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55 views

How to form data for SVM training OpenCV3

I am trying to write utility for training svm classifier for image classification in OpenCV3. But I have Floating point exception (core dumped) error during training process. My main problem is that ...
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27 views

mail server using support vector machine for spam filtering

i'm working on my project using svm in matlab for spam email filtering. But i want to improve my result and i just wanna know any mail server use svm for spam detection or any spam email detection use ...
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17 views

One class SVM distance to hyperplane

I'm using One class SVM in opencv. Also have implemented parameter(sigma) selection algorithm (based on measure the distances from the samples to the OCSVM enclosing surfaces; author Yingchao Xiao). ...
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Why is there a difference between OpenCV's scale change implementation of detectMultiScale between the cascade classifier and HOGDescriptor?

I know the gist of how detectMultiScale in OpenCV works i.e. you have an image and a detection window; the image is scanned by a detection window and particular feature calculations are done on the ...
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4answers
51 views

Find the best set of features to separate 2 known group of data

I need some point of view to know if what I am doing is good or wrong or if there is better way to do it. I have 10 000 elements. For each of them I have like 500 features. I am looking to measure ...
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20 views

Same training data in Liblinear generates different models

I'm using Liblinear in order to train models for a classification problem. I have noticed that changing the order of samples in the training data can result in different models. To test this i have ...
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1answer
43 views

Emgu CV SVM example not working on version 3.0.0

I am trying to implement the SVM example code found Here. It is the official example provided at the Emgu CV documentation, but it is for version 1.5 (at least). Unless I have been very mistaken, a ...
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33 views

Class Label not found sklearn error

Error: warning: class label 1 specified in weight is not found warning: class label 1 specified in weight is not found warning: class label 1 specified in weight is not found warning: class label 1 ...
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1answer
11 views

SKLearn: Getting distance of each point from decision boundary?

I am using SKLearn to run SVC on my data. from sklearn import svm svc = svm.SVC(kernel='linear', C=C).fit(X, y) I want to know how I can get the distance of each data point in X from the decision ...
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16 views

how to push 1D Vector to Mat?

I am calculating HOG featureVector of size 1764 from 531 images of size 32x32. how can I push this vector to a row in a Mat training image. feature Vector: 1 dimensional, size 1764 total vectors= ...
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19 views

Caret difference between svmLinear and svmLinear2?

I can't seem to find the difference between svmLinear and svmLinear2 on the following page. What is the difference?
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16 views

Training SVM with HOG filter - wrong predictions

I want to traing a SVM with HOG filter to classify between two scenes (with car and without). In my dataset i have 500 positive and 1000 negatives and after training a SVM with HOG filter of them i ...
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1answer
39 views

Error in svm predict

I have trained an svm model. I would like to test it but I'm facing an error in the predict() function. For simplicity's sake, here I've split up the test and train data here in non-random 70/30 ...
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22 views

How to initialize the SVM solver with dual coefficients in scikit/libsvm?

Is there a way to include a "guess" for the dual coefficients in the svm solver? Like some initialization for the dual coefficients? In libsvm/scikit learn's svc, I see there is an initialization ...
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Is there any documentation on scikit's svm solver and whether it faces numerical instability?

I am implementing an algorithm in python while involves using an SVM solver, so I'm using sci-kits. This algorithm has been implemented in matlab and I'm comparing against the matlab implementation to ...
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39 views

Scalable Python SVM for multi-class prediction

I want to predict the probability of multi-class classification SVM in python. I am really having a hard time finding something that is scalable and gives decent results. Two options I have are ...
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1answer
54 views

sklearn - model keeps overfitting

I'm looking for recommendations as to the best way forward for my current machine learning problem The outline of the problem and what I've done is as follows: I have 900+ trials of EEG data, where ...
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5 views

how to define feature/value pair for SVM classification

I got a circuit (build using MOSFETs) which generate 1-bit response either 0 or 1 when 32-bit input is applied. And right now I got 10000 collections of input and response pairs. Further, I would ...
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1answer
34 views

How does one interpret class weight when working with non linear SVMs?

I'm using Scikit-learn SVM classifier to make predictions and i'm using a rbf kernel. I have set the class_weight = 'auto'. Am I right in thinking that classes that appear more often will get lower ...
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26 views

How to input sparse matrix in SVM module in python

I am working with SVM.OneClassSVM() from sklearn module in python. I have a data of size 20K x 30K, of which 95% values are 0. So I am planing to use Sparse matrix. My problem is how to input sparse ...
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1answer
12 views

How to get SVM accuracy achieved by train_auto() in OpenCV

The SVM framework in OpenCV has a functrion called train_auto: The method trains the SVM model automatically by choosing the optimal parameters C, gamma, p, nu, coef0, degree from CvSVMParams. ...
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54 views

why support vector must correspond to a positive alpha?

In solving Lagrangian Dual problem of Support Vector Machine, if alpha>0, we can infer that yi(w.xi+b)-1=0 under KKT condition which says alpha.(yi(w.xi+b-1)=0. But on the reverse side, if ...
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85 views

svm based permutation test in r

I want to ask why I could not find significant important features with permutation test!! Problems in my code or something else? I did SVM based permutation test on iris data. The accuracies of ...
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1answer
45 views

How to use SIFT features/descriptors as input for SVM training?

I want to classify MRI images of a brain tumor into benign and malignant using C++. I am using SIFT features and the paper I am following clustered them using kmeans before training the SVM ...
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27 views

unable to classify using svmclassify matlab

I have been working on malarial cell recognition in wholeslide images in matlab. My reference paper is this: http://www.ncbi.nlm.nih.gov/pubmed/23218914. My overall process for adpating the method ...
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58 views

scikit OneClassSvm sparse matrix return (very) different result than dense

I'm using a OneClassSVM classifier with dense matrix, the results are pretty good. I'd like to include some texts in my features and use a sparse matrix, however I get really differents (and wrong) ...
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2answers
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caret function 'train' failing for bagged svm

I am using bioconductor package MLSeq on Ubuntu with R version 3.1.2 . I have tried running through the example provided by the package, and that work just fine. However, I want to use the bagsvm ...
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45 views

Large number of classes

I am working on a multiclass model with a huge number of classes (approx. 3500). Can a large number of classes influence the performance of my model?I would like to use SVM and Random Forest. Does ...