Questions tagged [svm]

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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11 views

GridSearchCV - TypeError: an integer is required

I am trying to find the best hyperparameters for my SVM using Grid Search. When doing it the following way: from sklearn.model_selection import GridSearchCV param_grid = {'coef0': [10, 5, 0.5, 0.001]...
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1answer
9 views

Training a SVM on Facial keypoints - how do I cast the features to the correct shape?

I'm trying to train a SVM (in python, scikit-learn) to recognize facial expressions. I've gotten the facial keypoints from a bunch of images, and put them into a list of lists, but this data format ...
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24 views

“variables in the training data missing in newdata” when predicting caretStack with svmRadial in R

I am comparing a selection of ML methods to try and see which best fit my data. For reproducibility, I have used the Occupancy data from UCI ML repository - available here: http://archive.ics.uci....
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6 views

How to get weights for rbf kernel or any custom kernel in SVM?

i need to get the weights from a sklearn svm fitted with a custom kernel or rbf kernel. i saw that dual_coeff gives few values but not sure of what they are. thanks in advance.
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21 views

Plotting linear hyperplane using primal vector in Matlab

Using svmtrain and svmmodel, we're supposed to plot a hyperplane to separate two collections of data. Through the sample, I have the data: c = [1 1; 2 1.5; 2 1;3 1.5]; N = 10; X = []; sigma = 0.2; ...
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6 views

Changing sigma in Rattle for rbfdot Kernel

How can I change the sigma value in Rattle for the rbfdot kernel in SVM model? I can change the cost function using eg: 'C-svc', 10 I use the options box to change these, if I type: 'C-svc','...
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5 views

Difference between coefficient of Linear Regression and weights of SVR

Difference between coefficients of Linear Regression and weights in Linear SVM? Does they interpret same meaning. like impact of one variable on dependent variable keeping other variable constant.
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9 views

How exactly do I go about showing the feature map for a specific Kernel Function?

so I'm being asked to show the feature map of a kernel function in Python. the function is K(x,y) = (x.y)^3 + x.y where x = (x1,x2) and y = (y1,y2) and I'm kind of stuck on how to go about doing this?...
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19 views

How to tune SVM for Unbalanced Dataset?

I am a newcomer to Machine learning and classification. I am working for classification of two different types of image classes. I have calculated block-wise (overlapping, sliding (1px), size:3x3) ...
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42 views

Can't fit model for SVM

I am trying to fit a model using SVM but I get the following error: ValueError: setting an array element with a sequence. This error is in the fit function of this code: from sklearn import svm ...
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1answer
36 views

Why there is difference between prediction of SVM model for the same data when ran locally on my machine and on AWS sagemaker?

I am trying to deploy sklearn SVM model on AWS SageMaker. But while testing the model, I am getting different outputs even if I am using same hyperparameters for algorithm, same training and testing ...
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49 views

Training a SVM Classifier on pair of Embeddings, generating error

For each person in my dataset, I have a labelled collection of a pair of images from their different profiles .For person A, data looks like: PersonA FacebookImage InstagramImage 0 (0 is the label, ...
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16 views

SVM: How to find support vectors?

I am newbie to SVM. As I believe, our main goals in SVM are 1) to maximize the margin between the decision boundary and data points and 2) find the support vectors So what I understood is we use ...
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8 views

Formula vs Matrix interface in caret (svm) with YeoJohnson transformation

This is an example code that reproduces my problem. I actually have a much larger data set with many more variables. I am trying to use caret (train) to run some svm models. I have found that when ...
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10 views

SVM class probabilities in caret using non-formula (matrix) interface

I am pivoting off this example: support vector machine train caret error kernlab class probability calculations failed; returning NAs Sampled Code library(caret) trainset <- data.frame( ...
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31 views

How to get output of sklearn.metrics.classification_report as a dict?

I have been trying to get the classification report in the form of a dictionary. So according to the scikit-learn 0.20 documentation, I do: from sklearn import metrics rep = metrics....
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17 views

How to apply Dimensionality Reduction to HOG features? [closed]

How can I reduce HOG features that can be used for Support Vector Machine (SVM) training? I receive 20,000 HOG features for one image and I have 1451 images. The number of features are more than ...
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12 views

How to plot support vectors for SVR model's prediction

I've got a code for SVR on simple dataset with single parameter in X (position level) and salary as y output. I obtained a plot of prediction: Is it possible to plot the support vectors as well? I ...
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22 views

TypeError: Issue with GridSearchCV

I am trying to use GridSearchCV and Pipeline to check parameters of SVM. The code is as follows. parameter={'svm_C':(0.1, 1, 10, 100), 'svm_gamma':(0.001, 0.01, 0.1, 10)} pipe=Pipeline([("scaler", ...
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23 views

Need guidance on gene signature selection using machine learning [on hold]

I have a data frame (1+30 columns, i.e., Genes & 30 samples) where columns=Samples & rows=Genes. The data comes from proteomics experiments and contains measured protein intensity values. As ...
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20 views

Handwritten Character Classification using SVM .

I am using SVM for handwritten Classification of Characters . I prepared my own dataset (images) for characters . As for now from a to f . Each folders (a to f) has about 20 to 22 images . so totally ...
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1answer
34 views

How do i set different threshold to get multiple values for ROC plot

Below is the code I have written to build a SVM model. I am using ROCR package for plotting the ROC plot. library(e1071) library(caret) library(gplots) library(ROCR) inTraining <- ...
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29 views

Different results in parallel vs sequentially in R

I paralleled Msvm-RFE algorithm with Rmpi http://www.colbyimaging.com/wiki/statistics/msvm-rfe that is used for feature selection. in result, I will have 6 features but one of this features in ...
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1answer
54 views

GridSearchCV freezes on windows with any n_jobs

I'm currently having trouble with GridSearchCV method from the scikit learn library. I've been struggling with it for a week now, and can't seem to work it out yet. It keeps freezing when calling it ...
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3answers
26 views

Why do I get error when using class_weight in sklearn GridsearchCV SVM?

Below is my code: tuned_parameters = [ {'kernel': ['linear], 'C':[1, 10], 'class_weight': ['auto']}, {'kernel': ['rbf'], 'C':[1,10], 'class_weight':['auto']}] clf = GridSearchCV(svm.SVC(), ...
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14 views

implement svm on hadoop with hadoop streaming

I've implemented SVM in R. I want to implement it on hadoop with hadoop streaming.Does anyone have an idea to help? code: cat("\014") rm(list = ls()) #R CARET library library(caret) #Data import ...
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1answer
31 views

Support Vector Machine using previous predictions

My svm gets as input a list of values and predicts a label for each entry. The list is processed from front to back. Now my question is whether there is the possibility to consider previous ...
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1answer
19 views

How to find optimal number of n_features for N distinct categorical values in a field featureHasher

I want to find out is there a mathematical formula to find the number of features A set of distinct categorical values must be converted for optimal performance of Model
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0answers
19 views

Strange predict_proba values after good results in training

Recently I've tried a few classic Machine Learning algorithms doing the classic X_train / y_train / X_test split For this I used entries between Aug-2016 and Aug-2018 to classify "Sausages" and "Not ...
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1answer
45 views

How to classify text documents in legal domain

I've been working on a project which is about classifying text documents in the legal domain (Legal Judgment Prediction class of problems). The given data set consists of 700 legal documents (well ...
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1answer
46 views

Machine learning parameter tuning using partitioned benchmark dataset

I know this will be very basic, however I'm really confused and I would like to understand parameter tuning better. I'm working on a benchmark dataset that is already partitioned to three splits ...
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23 views

Can feature φ = [x, x^2] construct a valid kernel trick?

I found that most materials are about R2 -> Rn. However, can I put up with a feature to map R1 points into R2 space, where its kernel is valid. Eg. φ = [x, x^2]. Can it make valid kernel? According ...
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115 views

What is the training complexity of Sklearn GridSearch?

gs_clf = GridSearchCV(SVC(probability=False, class_weight='balanced', max_iter=100, random_state=2018, tol=1e-10), param_grid={'C': [2, 5, 10] , 'kernel': 'linear'}, ...
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18 views

radial basis function (RBF) kernel

Suppose we use the following radial basis function (RBF) kernel: K(xi; xj) = exp(− 1 2 kxi − xjk2), which has some implicit unknown mapping φ(x). • Prove that the mapping φ(x) corresponding to RBF ...
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1answer
35 views

IndexError: index 6 is out of bounds for axis 0 with size 2

I'm SVM (RBF kernel) to learn my data and try to find optimal gamma and C, my code is this: from sklearn import svm C = np.array([1, 10, 100, 1000]) gamma = np.array([1e-3, 1e-4]) avg_rbf_f1 = [] ...
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1answer
40 views

Perform cross-validation on training or validation partition to tune parameters

I have a large dataset which is partitioned into three chuncks (train-validate-test). And I want to perform cross-validation (CV) , since I have a large dataset it will take too long to perform CV on ...
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1answer
29 views

Order of class in n_support_ (sklearn svm)

In the sklearn SVM SVC documentation I was trying to figure out in what order of classes does the n_support_ attribute give the number of Support Vectors. I couldn't find it mentioned anywhere. Please,...
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38 views

SVM training dataset the same as Alexnet features dataset

I am currently trying to train a SVM using the library sklearn. I am extracting the features from the pretrained penultimate layer in alexnet (fc7) of total size of (200, 4096). The code below is ...
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20 views

Scaling error in the train function of caret package

I'm trying to create a SVM with optimal parameter C using a linear kernel using the train function from the caret package. I used the following code: tunegridlin = expand.grid( .C = cbind(0.001, 0....
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1answer
36 views

The correct way to tune the C parameter of SVM

I have a dataset which has three splits (training-validation-testing). What is the best way to tune the C parameter? Do i train on the training and evaluate on the validation partition? Is it correct ...
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1answer
32 views

Matlab: make predictions with SVM for multiclass classification problems

I am trying to use a Support Vector Machine to classify my data in 3 classes. I used this Matlab function to train and cross-validate the SVM: Mdl = fitcecoc(XTrain, yTrain, 'Learners', 'svm', '...
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14 views

Anova Dimension reduction on whole data or just on traing set

my dataset has 871 sample and 19900 feature I want use SVM but I don't know I use Anova that make a score on a feature I must use whole data and get feature form ANOVA or I split before using ANOVA ...
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4 views

How to use alternatives to probability scaling methods like platt scaling in one-class sum?

Is there a probability scaling alternative like platt scaling to one-class classification problems? Since traditional platt scaling invokes classes, it does not function with one-class SVM.
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1answer
40 views

meaning of 'dispersion' in Tune function in R

I checked the internet and the R documentation to find the meaning of 'dispersion' in the output of the following function: tune( svm, Purchase ~ ., data = OJ.train, kernel = "...
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28 views

SVM error - Error in if (any(co)) { : missing value where TRUE/FALSE needed

library(caret) svmGrid <- expand.grid(degree = 1:2, scale = c(0.01, 0.005, 0.001),sigma = c(0.05,0.0456,0.0577), C = 2^(-2:5)) model_svmpoly <- ...
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0answers
15 views

Can we use Eigenvalues and SVMs for image recognition?

I am trying to create a model for recognizing cars. In SciKit I found an example of using eignevalues and SVM to recognize faces, http://scikit-learn.org/stable/auto_examples/applications/...
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1answer
20 views

Truth Value error in plotting SVM predicted values

The main error I am getting in the plot function call: ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() The traceback context: Traceback (...
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0answers
25 views

How to find the plane in 3D using SVM classification in MATLAB?

I have 2 sets of data with about 1000 samples. Set 1 (x1, y1, z1,...) and Set 2 (a1, b1, c1,...). The data is saved on the .csv file (I attached at here: https://drive.google.com/open?id=...
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2answers
29 views

Creating dataframe based on pixel values in raster stack in R

I am preparing a dataset to run a SVM classification. So far, I have a raster stack which includes a layer ([6]) for training > S1 class : RasterStack dimensions : 3865, 6899, 26664635, 6 ...
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24 views

samples.cols == var_count && samples.type() == CV_32F in function 'predict'

I am really struggling with reshaping datas. def training(): feature_mat = [] response = [] for j in [1,2]: for i in [1,2,3,4,5]: fea, farea, skinarea, fcont, ...