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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21 views

Behavior of C in LinearSVC (scikit learn)

First I create some toy data: n_samples=20 X=np.concatenate((np.random.normal(loc=2, scale=1.0, size=n_samples),np.random.normal(loc=20.0, scale=1.0, size=n_samples),[10])).reshape(-1,1) y=np....
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2answers
14 views

How to Classify the imbalanced Dataset using SVM

I am using the SVM, and My dataset is imbalanced. I got the result in which it classified Class 0 as 99% and Class 1 as 1%. Is there any way to correctly classify the imbalances dataset using SVM.
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8 views

Reference to non-existent field 'predictFCN'

I get this error when I use the following to use the saved sim model for prediction. dd=readtable('features_5_25.csv') mySVM2=load('modelSVM.mat') CompactMdl = loadLearnerForCoder('modelSVM2'); ...
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5 views

Support vector machine estimator in Tensorflow

I am trying to see if there is a support vector machine implementation as a tensorflow estimator. On the one hand, obviously SVM is a special case of DNN (without the D), but adding things like ...
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0answers
9 views

How to interpret SVM for regression?

I made a regression model with SVM and applied the RBF kernel, my data exceeds 7 dimensions. the value of my MSE: 36,069 for the problem I'm solving is a low error, but my R-Square is very low R2: 0....
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6 views

Getting Linear SVR equation by hand

After using scikit's linearSVR, I'd like to see if I can figure out the equation by hand that makes the prediction. I assumed it was just a best-fit line so I could use something like y=mx + b where m ...
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1answer
20 views

R-Studio SVM classAgreement how-to?

I am an absolute newbie to R-Studio and want to use svm() of the e1071 package. I went through David Meyer's paper. I can't get classAgreement() to run. What do I need to do before I can use ...
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1answer
25 views

Combing different Support vector machine into one classifier using stacked ensemble method in python

I am developing a model that classifies if a patient has lung cancer or not. Currently it has been divided into right lower, right upper, left upper and left lower. I have used SVM for each segments ...
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10 views

Longitudinal data SuperLearner

I am trying to use the SuperLearner R package for prediction of longitudinal data (Plasma drug concentrations). As far as I understand, SuperLearner is suitable for continuous data. However, I do not ...
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1answer
28 views

feature importance in the Caret package for the regression SVM model [closed]

I have a question regarding feature importance in the Caret package for the SVM model. I am using the code below to fit my model. However, I could not find a way to get the feature importance for ...
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0answers
20 views

What classifiers are a good comparison for Linear SVC and how to compare them?

I have been assigned a task to build datasets and train a classifier to identify letters. I decided to go with the Linear SVC classifier for this because I need it to be multi-class. For my report I ...
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18 views

Machine Learning

I am trying to create a ML model that is trying to see what hashtags are most popular on an IG account my company runs. I tried to use SVM from the e1071 package. When I got to the tblsvm (all ...
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0answers
11 views

Difference between Support Vector Machine and Regular Regressionn

How is Support Vector Regression with Polynomial Kernel different than Polynomial Regression? At their core, both look the same.
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0answers
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How to train svr model on GPU using cuda in python

can anyone please tell me how can I train a scikit-learn SVR model (support vector machine regression model) on GPU using cuda in python?
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15 views

Multilabel classification in MATLAB [closed]

How to do multilabel classification in MATLAB without using neural networks and deep learning. specifically is there any way for this using SVM classifier
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1answer
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How to calculate the distance from the sample to the hyperplane using libsvm in python?

Now I want to use libsvm to calculate the distance from the sample to the hyperplane in pyhotn. How should I calculate it? Looking forward to your answer, thanks.
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1answer
24 views

How to calculate score while using SVM?

I am new to machine learning, I am a bit confused by the documentation of the sklearn on how to get the score while using sklearn.svm.SVC. This is my code x_train,x_test,y_train,y_test=...
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2answers
28 views

Can SVM method deal with 1 dimensional data in forecasting?

I am working on using SVM to predict the future values of one particular 1D data. The data contains 54 month sales values and with their month indexes from 1 to 54. The first problem is that I think ...
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1answer
17 views

SVM duality: set of hyperparameters not supported

I am trying to train a SVM model on the Iris dataset. The aim is to classify Iris virginica flowers from other types of flowers. Here is the code: import numpy as np from sklearn import datasets from ...
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0answers
11 views

Error with confusionMatrix function in R, predictSVM

The error is: confusionMatrix(predictSVM, testSparse$sentiment) Error: data and reference should be factors with the same levels. Type of data in testSparse = https://i.imgur.com/kGb0raL.png ...
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1answer
21 views

sklearn how to use saved model to predict new data

I use sklearn trained a SVM text classifier, used tf-idf(TfidfVectorizer) to extract the feature. now I need to save the model and load it to predict the text unseen. I will load the model in another ...
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0answers
17 views

SVM model prediction [closed]

I am trying the predict text by using SVM model. But not able to predict right text. I wanted to predict answer for the question input. Here is my code: library(SnowballC) library(shiny) library(...
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0answers
23 views

How python finds the support vectors in the kernelized SVM

When the classes are overlapped, the kernel SVM moves the data to a higher dimensionality to find an optimal separation between classes. If SVM finds the separate hyperplane in the transformed data, ...
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1answer
24 views

Mutli-Class Text Classifcation (using TFIDF and SVM). How to implement a scenario where one feedback may belong to more than one class?

I have a file of raw feedbacks that needs to be labeled(categorized) and then work as the training input for SVM Classifier(or any classifier for that matter). But the catch is, I'm not assigning ...
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1answer
21 views

How String data is converted for SVM machine learning algorithm

I have a dataset i.e. <table> <tr><td>TEXT</td><td>TYPE</td></tr> <tr><td>100% free cashback </td><td>spam</td></tr>...
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1answer
24 views

A column-vector y was passed when a 1d array was expected error while doing SVM?

I am creating a SVM model with one independent variable X and dependent variable y.I performed feature scaling as both the data variable was not on same scale. Now when i am training a model on ...
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11 views

GPU support for scikit-learn's one-class SVM (OCSVM)

I'm training a one-class SVM for anomaly detection purposes, but it is taking quite long to train due to a big training set size (about 4M samples). Is there a way to utilize GPU resources when ...
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1answer
36 views

Different kernels for different features - scikit-learn SVM

I am trying to build a classifier using sklearn.svm.SVC but I would like to train the kernel separately on different subsets of features to better represent the feature space (as described here). I ...
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0answers
34 views

F1 score problem in binary classification [closed]

I have a binary classification problem. Dataset is really poor and really imbalanced. So after upsampling, I start to do my prediction. and this is what I get for the neural network: precision ...
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1answer
33 views

Using SVM with different kernels as a last layer in CNN network

I'm trying to replace the last fully connected layer of a CNN network with SVM using pytorch in a multi-classification problem. I've done some research and it says, that I should just replace the nn....
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1answer
28 views

How to improve performance for imbalanced dataset using SVM

I am trying to classify data at the token-level using scikit-learn. I already have a train and test split. The data is in the following \t seperated format: ----------------- token label ------...
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0answers
11 views

Build a grid for a parameter that considers two dimensions (weighted SVM)

For weighted SVMs (for SVC() from the sklearn library), there is an argument called 'class_weight'. Let's assume the binary classification case where we have outputs 0 and 1. We could define the ...
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0answers
6 views

SVC: Unknown label type: 'continuous' using sklearn in python

import pandas as pd import numpy as np import indicators as ind from sklearn.svm import SVC from sklearn.model_selection import train_test_split from sklearn.preprocessing import StandardScaler from ...
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5 views

What happens if the Hard margin is scalar ? How we can place it?

The primary target of the Hard Margin SVM is to maximize the margin (rho) and place the boundary line between it. But what happens if the margin is scalar and how we can place it?
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1answer
21 views

ROC_CURVE- IndexError: too many indices for array

classification, when I input numpy arrays having test label and test probabilities, it throws the following error dataset = read_csv('C:/.../dataset/KDDREAL.csv') dataset = dataset.values X = dataset[...
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0answers
12 views

Cost function in SVM [migrated]

I've followed the Machine Learning course of Andrew Ng, and I really confuse in Support Vector Machine lecture. Regarding cost function in SVM, he said that when C is very large, the loss (error) ...
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1answer
20 views

Linear SVM is used for linearly separating the data which have two features

Can we use KNN and linear SVM classifier for training the model with data which contains 4 features and have 6 classification clusters? Because what i think that linear SVM and KNN are used for ...
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42 views

How to implement a SVM with different types of kernels on top of a pretrained model?

I am trying to implement a SVM on top of a MobilNet v2 model (https://github.com/keras-team/keras-applications/blob/master/keras_applications/mobilenet_v2.py) in tensorflow 2.0 with keras. The ...
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0answers
14 views

Linear Support Vector Machine regression function

Linear SVM Regression: Primal Formula: Suppose we have a set of training data where xn is a multivariate set of N observations with observed response values yn. To find the linear function f(x)=x′β+...
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Where do I find documentation for plot_classifier in Datacamp's Machine Learning Engineer in Python Career Track?

I am currently busy with Datacamp's Machine Learning Engineer in Python Career Track. They keep on using a function called "plot_classifier" but I can't find documentation on it online. It creates a ...
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1answer
27 views

Is sklearn LinearSVC an SVM or SVC?

I was watching a YouTube video to learn about Support Vector Machines (SVM). In the video, he mentions that an SVM finds Support Vector Classifiers (SVC) for dividing the data as one step in their ...
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0answers
16 views

One-Class SVM threshold parameter

I have to implement metrics FPR at 95%TPR. In order to do that I have to look for the different decisions of OCSVM dependent on the threshold. If I execute this simple code: # Generate train data X =...
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0answers
12 views

What is the difference between model and predicted files from SVM-light?

I am using SVM-light tool. I did my analysis in 2 steps for a trainingset file and a test file. I have both classses in these files (+1 and -1). cat trainingset1 | wc -l 8623 cat testset1 | wc -l ...
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1answer
22 views

TypeError: unsupported operand type(s) for -: 'module' and 'LinearSegmentedColormap'

import matplotlib.pyplot as plt import matplotlib as cmap from sklearn import datasets from sklearn import svm digits = datasets.load_digits() clf = svm.SVC(gamma=0.001, C=100) print(len(digits....
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1answer
30 views

Implementing SVM for multiple CSV files

I want to know if it is possible to have multiple CSV files for the training and one file for testing. For example I got four CSV files that contain 8 columns of data and one for the label which is ...
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0answers
16 views

Why feature scaling does not affect SVMs?

I'm working on a machine learning project. Machine learning problem is the classification of songs by their genre. It's a supervised and multi class classification problem. From my researches on this ...
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2answers
29 views

Data-preprocessing for a Machine Learning model

I am confused about how to preprocess range based category such as age, tumor-size & inv-nodes. Should I take an average of the limits, as in - 14.5, 24.5 and so on or do one hot encoding of the ...
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1answer
22 views

Comparing the two feature sets

I am working on a classification of two feature sets derived from a dataset. We first obtain two feature matrices derived from two feature extraction methods. Now, I need to compare them. However, the ...
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0answers
16 views

sklearn svm when each sample vector has a lot of zeros

I want to perform a text classification task with 4 categories and using svm.SVC from sklearn package. Suppose the corpus has M different words in it. I'm currently representing each doc as an M ...
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0answers
20 views

Implementation of Okapi BM25 in python

I am trying to implement Okapi BM25 in python. While I have seen some tutorials how to do it, it seems I am stuck in the process. So I have collection of documents (and has as columns 'id' and 'text'...

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