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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30 views

Is it possible to train a sklearn model (eg SVM) incrementally?

I'm trying to perform sentiment analysis over the twitter dataset "Sentiment140" which consists of 1.6 million labelled tweets . I'm constructing my feature vector using Bag Of Words ( Unigram ) model ...
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24 views

why im getting high MAE(mean absolute error) and MSE(mean square erro) compared to MAPE (mean absolute persentage error)?

everyone I'm a newbie in data science. I'm working on a regression problem using support vector regression. After tunning SVM parameters using grid search I got 2.6% MAPE but my MAE and MSE are still ...
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23 views

Question about feature selection for support vector regression

I am new to machine learning, and am having a problem with one stage in my planned analysis. I am trying to approach some of my EEG data with ML in order to determine which networks of functional ...
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15 views

Graphing TPR and FPR with ROC, Error in Prediction

I am trying to graph the TPR and FPR of data with a ROC. I have taken a prediction and created a confusion matrix, however, I am having trouble getting the prediction. predictSVM <- predict(...
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17 views

Why SVC, NuSVC and LinearSVC are producing very different results?

I am working on a classification task — geolocation of Twitter users based on their tweets. I did many experiments by using sklearn's SVC, NuSVC and LinearSVC and bag-of-words model. The accuracies ...
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12 views

Estimation of probabilities Random Forest & SVM (RTextTools, e1071) in R?

I'm currently working a lot with RTextTools. However, I have a question regarding the probabilities. Among other things, you get the probabilities for each observation. Since I myself use Support ...
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19 views

how to label a binary classification in svm

suppose I have an array of 10000 values which are binary. How do I label those in SVM so that I can create a model fit predict and make a confusion matrix out of it
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35 views

Could not convert string to float -Using Pandas and Numpy for a SVM Classifier

I'm trying to use pandas to create a SVM classifier. I already generated my feature and save it using to_csv from pandas lib. This feature(Color) consists in a whole histogram. So, I have a list of 0 ...
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14 views

Having problem plotting ROC curve for SVM model

I am currently working on a practice to learn SVM. I am trying to plot ROC curve for the model using data from kernlab. However, there is always an error which told me format of predictions is ...
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26 views

Is it possible to export and import weights without exporting or importing the entire model?

I'm trying toimplement this ressearch paper http://openaccess.thecvf.com/content_iccv_2017/html/Yonetani_Privacy-Preserving_Visual_Learning_ICCV_2017_paper.html In which the weights are exported ...
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32 views

Predict multi class in svm

I have user review dataset like review-1, 0,1,1,0,0 review-1 is user review and 0,1,1,0,0 is review categories. one review can have multiple categories. I want to predict categories to reviews. so I ...
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28 views

Save and Load SVM in OpenCV in Python

I am training a model using a SVM and save it using: svm.save("my_svm.xml") When I try to load the model using svm = cv2.ml.SVM_load('my_svm.xml') I get the error: cv2.error: OpenCV(4.0.0) /Users/...
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13 views

What are the differences between MATLAB LIBSVM and fitcsvm in MATLAB Statistics and Machine Learning Toolbox”

I get confused with SVM on MATLAB. There are Statistics and Machine Learning Toolbox as well as other libraries like LibSVM. I wonder what makes them different and which one should I use, I wanted to ...
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32 views

score error while creating model in python

I was using classification report to check the accuracy and also the confusion matrix
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50 views

K-means minibatch Memory error on large data

I am using sklearn Kmeans Minibatch for clustering large data and I get a memory error. Here is my laptop configuration on this configuration its working fine: Core i5 64 bit Python 3.6.2 8 GB RAM ...
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11 views

How do you find the coefficients of a Polynomail SVM in scikit-learn and what is the gamma?

coef_ : array, shape = [n_class * (n_class-1) / 2, n_features] Weights assigned to the features (coefficients in the primal problem). This is only available in the case of a linear kernel. ...
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2answers
41 views

How to use .fit when the X value is in time format

Xtrain,Xtest,Ytrain,Ytest = train_test_split(X,Y,test_size=0.2, random_state = 10)
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Possibility of using an existing SVM classifier (created with python) in chrome extension?

I created using python an SVM classifier, trained it and exported it : X_train, Y_train, X_test, Y_test = train_test_split(...) clf = svm.SVC(gamma='scale',kernel='rbf',C=1) clf.fit(X_train, ...
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27 views

Formula for matching SVR predict in R [closed]

I am using the svm algorithm in R for a regression problem. Once I train my model, I use the predict function to make predictions. Is there a formula that I can use to match those predicted values? ...
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1answer
15 views

Negative sign of the bias of a SVM model

I have a doubt regarding the relationship between bias and the parameter C in a SVM (C=inverse of regularization parameter λ). I am training a model in MATLAB and I need to set C. I know this rule: ...
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16 views

Difference between SVR and other simple regression models

Can someone help me to understand that what's the main difference between Support vector regression technique and other simple regression models. Thanks
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31 views

Lables are a simple function of features, why support vector machine can not learn this function?

There are 15 features and two kinds of labels (1,-1) for each set of features. Analytically there is a function of degree four that with 15 features given, it can determine the label of the sample. ...
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17 views

Interpretation SVM plot R

I am fitting a SVM model using m <- svm(training_S$Class~., data = training_S) Where training_S looks like this: > str(training_S) 'data.frame': 21173 obs. of 31 variables: $ ...
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13 views

how to get SVM coefficients out when using custom kernel

For a binary classification problem, I am using SVC (in sklearn) with a custom kernel (anova kernel). I implemented the kernel as a function and passed that function to SVC. After model fitting, I ...
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31 views

Encog SVM error after one iteration is 0.0% and stops

I'm trying to compare multiple ML methods comparing the classification of spam emails. Thus far I've successfully got a simple Feedforward and an Elman network working. I'm now trying to test an SVM ...
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1answer
20 views

Modeling dataset using SVM

I have job to modeling dataset KDD 99 using Support Vector Machine (SVM). Here is the code that i try: from sklearn.model_selection import train_test_split train,test=train_test_split(model,test_size=...
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2answers
29 views

SVM caret error: “Std. deviations could not be computed for… missing value where TRUE/FALSE needed”

I am trying to run this code for SVM in caret with a stratified cross-validation but I get this error:"Std. deviations could not be computed for: diff1, diff2, diff3, diff4, diff5, diff6,...model fit ...
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40 views

SVM stuck in optimization

I am running a random search in a SVC in sklearn. My data set has been normalized, resampled and I applied PCA to it, resulting in 20k rows with 80 columns. If I run a single SVM with cross validation,...
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25 views

samples.cols == var_count && samples.type() == 5 in function 'cv::ml::SVMImpl::predict' error on svm.predict method

I'm creating a object classifier in opencv python using svm. Training dataset is of 200 positive and 200 negative images. For positive images first took 200 images and cropped target object from ...
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1answer
19 views

Is there a way to rename the derived field name in Local Transformations when using SVM in R with scale=TRUE (default)

On using e1071 package, SVM Classification with Iris dataset. I see the model/pmml generated with scale=TRUE always normalizes the dataset attributes with names like algorithm_derived_nc_. Is there a ...
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1answer
35 views

Data pre-processing for sklearn's SVM without using the train_test_split method

I used Inception and generated 1000 features (probabilities of objects) for about ~11000 videos. These videos have already been categorized by genre and I want the SVM to predict which genre a video ...
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35 views

SVM is very slow when training classifier on big number of classes

I'm trying to train an SVM classifier on big number of items and classes, which becomes really, really slow. First of all, I've extracted a feature set from my data, to be specific 512 features ...
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29 views

SVM with w2v model/feature

I am trying to classify some texts with Support Vector Machine and gensim w2v. I have a csv file with 'Content' and 'Category' columns. I read the but I cannot create and parse the model to the ...
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1answer
47 views

Features for Support Vector Machine (SVM)

I have to classify some texts with support vector machine. In my train file I have 5 different categories. I have to do classify at first with "Bag of Words" feature, after with SVD feature by keeping ...
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14 views

Why I have different value of metrics(mean squared error and recall) in every run on adaboost svm poly?

I'm very new in machine learning and my question is why in below code when I run adaboost SVM poly I have different amounts of Mean-squared error and recall and why precision every time is 1? from ...
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1answer
46 views

Problem implementing sentiment analysis for imdb movies reviews data

I was implementing sentiment analysis for imdb movie reviews dataset and got the value error when making predicitons using LinearSVC(). # STOP IS FOR STOPWORDS trainset,testset=dataloader(r'C:\Users\...
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1answer
48 views

Convert sklearn.svm SVC classifier to Keras implementation

I'm trying to convert some old code from using sklearn to Keras implementation. Since it is crucial to maintain the same way of operation, I want to understand if I'm doing it correctly. I've ...
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27 views

Is it right to run a k-fold cross validation multiple times on different split of my dataset?

I have to find the best hyperparameter C and gamma of an SVM(rbf kernel). I use a for loop to find the best parameters c and gamma using different seed each time. Then i use as best parameters the ...
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enlarging feature space in machine learning

I'm trying to understand ways of altering feature space in regression models. If your model is M= intercept + βL* L + βD* D + ε what are some different ways you could enlarge or decrease the feature ...
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11 views

Test and Train by SMO-Weka in java

I have two different datasets and want to use them as my train and test for SMO classifier. I wrote this code, but the accuracy always is equal to 0.5. SMO svm = new SMO(); svm....
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29 views

Image classification using SVM after extracting features

I have to write a program that extracts features from a set of images, and then applies SVM to classify the images, taking into account the features. Basically, I want to feed the program images of ...
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30 views

scikit-learn - The execution of SVM.fit function never ends

When I call the fit function of SVM, its execution simply never ends and the related Python process consumes CPU too much. Here is what I have tried: from sklearn.svm import SVC x_train, x_test, ...
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2answers
23 views

picture formatting for kernel svm

I'm having some difficulty to get a series of images into the correct format to feed into sklearn.svm.SVC. This is my first image recognition project, and so Im suffering a bit. Ive got a loop which ...
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23 views

Training of SVM in OpenCV using SIFT BOW

Ive been trying to write a program that classifies images of faces and airplanes as follows: Im reading all images in greyscale and resizing them, then generating a vocabulary using kmeans clustering, ...
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1answer
36 views

How to get coefficients with cross validation model

How do I get coefficients with cross-validation model? When I do cross-validation I get scores for the CV model, how can I get coefficients? #Split into training and testing x_train, x_test, y_train, ...
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20 views

Calculating and Plotting Feature Importances for Linear Models

As we know in case of gradient boosting or bagging models we have model.feature_importances_ to plot the feature importances. Is there anyway I can calculate and plot the feature importances for ...
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1answer
14 views

What's the different of “classify” between softmax, logistic and svm?

I'm using caffe to do the object detection with SSD model, and recently work I adjust the loss type of "MultiBoxLoss". In the multibox_loss_layer.cpp file, its loss has SOFTMAX as default and LOGISTIC ...
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19 views

How to use PCA (Principal component analysis) with SVM for classification in Mathlab?

The input data that I have is a matrix X (490*11) , where the rows of X correspond to observations and the 11 columns to correspond (predictors or variables). I need to apply the PCA on this matrix ...
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10 views

SVM removing or keeping duplicate data

i build my own svm classifier to classify the different attributes of a product. Input is a list of products with attributes. The classifier classifies which attribute is the specific value. e.g. "...
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value error bad input shape :y(200,2) in SKLEARN.SVM

I am doing NMF decomposition ( training images X(BENIGN-100 AND MALIGNANT-100) into two non-negative matrices W and H) to extract fatures .I did the decomposition for each channel of images X(r),X(g),...