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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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The support vector machine fit isn't able to detect and predict the 1 on the training set [closed]

I'm trying to implement SVM in R with the e1071 library. svm_train <- svm(factor_new ~ RFS +LI+SDI+LDI+DR+DBT+FCT+FII+DITP+ADCG+ADDG+ROA+ROI+ROS+ROE,data = train01_new, kernel = "linear", ...
Alfredo's user avatar
-2 votes
0 answers
22 views

The SVR Model Features not Correlate with Each Other

I Have a future forecasting using SVR, The future forecasting doesn't have any errors, but the visualization seems a little off, it so different with the actual dataset for training here's my full ...
lil Biggas's user avatar
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0 answers
13 views

SGDClassifier with modifiedhuber how to get confidence score and set threshold

I am doing incremental learning face recognition with SVM. I use SGDClassifier with loss=modifiedhuber. After I trained the model, I open camera to run real time system. I use predict function to get ...
JS Neko's user avatar
-1 votes
0 answers
16 views

How to acces alpha values in SVR?

In sklearn SVR the dual parameters can be accessed through the attributes dual_coef_ which gives the quantity alfa-alfa*. However I need to access the quantity alfa+alfa*, how can I do that? I did not ...
ZFC's user avatar
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26 views

TypeError: Singleton array array(1) cannot be considered a valid collection

I have a dataset where my target variable is a number between 1 and 8. Now I am going to implement Cubic SVM. import numpy as np import pandas as pd from sklearn.model_selection import ...
Farshadih7's user avatar
1 vote
0 answers
19 views

Regarding the problem when performing SVM from kernel matrix with R's kernlab

The results are different depending on whether performing SVM from the explanatory variables or from the kernel matrix. I don't understand why there would be such a difference. data(spam) index <- ...
Hiroshi Omori's user avatar
-1 votes
0 answers
28 views

How do I add SVM to a CNN model?

I need to add SVM to my CNN model to create a hybrid model. Here is my model: input_shape = (BATCH_SIZE, IMAGE_SIZE, IMAGE_SIZE, CHANNELS) n_classes = len(class_names) model = models.Sequential([ ...
Mehjeeb Hasan's user avatar
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0 answers
31 views

how to label a multicolumn, multi category dataset and save it to a CSV or Parquet and train it using SVM

I am working with audio classification using OPENSMILE library. After preprocessing the audio data i am getting a 800x25 shaped data which is just for one file (each files is around 15 seconds long) ...
Nugget's user avatar
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0 votes
1 answer
32 views

SVM model always predicts the same value no matter the features

I am using SVM to predict if a change in error is good or bad i.e. (good = negative value and good = positive value converted to a boolean). Now, I split my data per category. Every category has at ...
Gerald's user avatar
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11 views

Question related to Tuning Support Vector Regression

I am new to machine learning and i am trying to build a Support Vector Regression model. In order to get the best model, we have to find the hyperparameters to minimize loss function. I am confused ...
Henry Bui's user avatar
-2 votes
1 answer
39 views

SVM training taking too long

I have a dataset with 41 features, out of which 4 are text features. I've been given "Bag of Words" numpy arrays (npz) for these four features, which I combined with the other numerical ...
revmatcher's user avatar
0 votes
0 answers
15 views

Applying a gray wolf optimiser to my support vector regression model

This is my SVR model that I'm using. I just need to improve the accuracy of my model by a little and want to try a GWO. What code do I need to include? import numpy as np import pandas as pd from ...
Ibrahim AW's user avatar
2 votes
1 answer
38 views

How to get the model parameter for one vs rest SVC() using python?

I've tried to make a onvsrest classiffication model using decision_function_shape= ovr, but when i changed it to decision_function_shape= ovo, it gave me the same result as ovr. Turn out i read that ...
Egidia Tiwi Krama's user avatar
1 vote
1 answer
40 views

ValueError: X has 16 features, but SVC is expecting 17 features as input in disease prediction system

I am trying multiple disease prediction system and among them the error occur when trying malaria disease prediction system using svm algorithm. I have no idea how to fix the problem since other 4 ...
Gor Ge's user avatar
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0 votes
1 answer
69 views

Switching binary classification python scikit-learn model to multi-class classification model

I'm currently having trouble switching the following code to fit a multiclass variable (3 levels). # data import from ucimlrepo import fetch_ucirepo import numpy as np import pandas as pd import ...
Daniel Shiverman's user avatar
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0 answers
37 views

Solving Valueerror of Tooth segmentation model in machine learning for my graduation project please

Hi everyone, I'm having some issues with the code in classification.py from a model I got from here. The program should offer the user two options: Read and extract features from images: This option ...
aya mohamed's user avatar
0 votes
1 answer
34 views

How can I find accuracy in RBF kernal SVM?

I am trying to implement human detection using SVM. I am using HOG feature extraction and then applying SVM on it. When I apply linear SVM I will get score of an image but in RBF kernal SVM I only get ...
Bhavin's user avatar
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0 answers
11 views

I cannot use Predict_proba for LinearSVC modek

I am new in building predictive models. I am trying to use predict_proba with CalibratedClassifierCV but it show this error. I have try to adjust the parameters but it does not work either base_svm = ...
Yaniga Swaengdee's user avatar
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0 answers
15 views

SVM Classification of test point between support vector and max margin hyperplane

I want to have a theoretical understanding of how do SVM classify a point that is in between Max margin hyperplane and one of the support vector? So the test point is beyond the support vector (of one ...
Arnab Biswas's user avatar
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51 views

Optuna parameter optimisation with MPI

I have some machine learning code which uses SVM (from scikit-learn) with a pre-computed kernel that I want to optimise using optuna, so the code simplistically looks a bit like this def objective(...
Georgia's user avatar
-1 votes
1 answer
28 views

Why the result of score() and accuracy_score() are different?

I was doing classification with Support Vector Machine (SVM) And df=pd.read_csv('mobile.csv') x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.3, random_state=42) model = SVC() ...
weakbro1004's user avatar
0 votes
0 answers
5 views

Different number of support vectors & decision values in R (using svm from "e1071") and matlab (fitcsvm) for one class classification

I am trying to run svm both on R and matlab. Both the codes are giving different results. Even the data used for both the code is same but they are giving very different results. Please help me the ...
nainsi gupta's user avatar
0 votes
1 answer
67 views

Why is not allowed to use n_jobs at SKLearn's Support Vector Regressor?

According to the documentation, using the parameter n_jobs on a SVR is not supported. On the other hand, and again from the docs, that parameter is supported at other types of regressor. Why is this? ...
Juan Flautista De Torrepacheco's user avatar
-1 votes
1 answer
66 views

Having an exception thrown when trying to train an svm + hog features in C++

I'm getting this exception exception description when I use this line of code svm->train(X, cv::ml::ROW_SAMPLE, labels); and this is the stacktrace: [Inline Frame] svm&ssd_car_detector.exe!...
Nadhir NACEF's user avatar
0 votes
0 answers
23 views

How to extract reflectance values from points within a many image tiles to build a SVM model that can classify each tile using a fields classes

I would like to run python code in google colab that loops through each tile and extracts the reflectance values from the points within each tile to build a SVM model. Once the model is trained using ...
Nicholas Coertze's user avatar
0 votes
0 answers
24 views

SVM algorithm training fitting doesnt work for text classification

I'm trying to fit the sentiment5 data which contains 2 varibales "tweet" that has vectorized text data (using TF-IDF) and "target" that has 1 and 0 for positive and negative. I ...
Arcane Persona's user avatar
0 votes
0 answers
27 views

GridSearchCV and SVC consuming way too much of my memory on a small dataset and simple model. Why?

I'm building a simple Cats vs Dogs classification model and I'm struggling. I was following a tutorial which did this so I don't know what I'm doing wrong. Read images (2000 images, 1000 cats, 1000 ...
Saif eldeen Adel's user avatar
0 votes
0 answers
20 views

R package E1071 unrelated column causes crash of SVM

In the R code below, I would have expected the junk column to have no effect on the SVM calculations, as the formula "true~aaaa+bbbb+cccc" clearly excludes it. However, deleting the ...
Pieter Hartel's user avatar
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0 answers
14 views

Regression And Classification

We need to create a python desktop app that makes our work to find the best regressor or best classifier for the data we get from our customers as simple and informative as possible. The project ...
Eco's user avatar
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0 votes
0 answers
63 views

std::bad_alloc: out_of_memory: CUDA error

I have this code: import cudf import cuml import cupy as cp from sklearn.datasets import make_classification from sklearn.model_selection import train_test_split from cuml.model_selection import ...
Veronica's user avatar
0 votes
0 answers
55 views

I cannot predict binary classification from svm() from 'e1071' package in R

I cannot predict the binary classification in target variable, because I can not output the probability of each record in test set, I got NULL when I tried to transfer into probability. The code and ...
XL888666's user avatar
0 votes
0 answers
17 views

Training feature matrix vs Real input

I am having problems trying to use my model in real scenarios. The original feature matrix used for training is larger than the input data. Correct me please, I understand that the input in real ...
Alec Holland's user avatar
0 votes
0 answers
60 views

How to configure SVM in the last layer of CNN in tensorflow?

I came across this paper on "Deep Learning using Support Vector Machines". After watching this youtube tutorial, I tried to implement it in my model which is being trained on FER2013 dataset ...
Wolgwang's user avatar
  • 133
2 votes
1 answer
75 views

SVM model highlights the wrong data points as support vectors

I'm working on an SVM model for a homework. no matter what I do, the model picks the wrong data points as support vectors: scatter svm this is my data: csv data this is my code: def ...
Inass Husien's user avatar
0 votes
0 answers
29 views

SVM Predictions on a Grid in R Mirror Imaged When Plotted, any ideas how to fix?

So I'm creating and SVM model and then trying to create a prettier version of the plot with a log scale in the x axis. When I map my predictions to a grid, for some reason it seems to be mirror imaged ...
tomatofrommars's user avatar
0 votes
0 answers
60 views

"WARNING: reaching max number of iterations" during tuning of parameters for linear SVM

I have this dataset: https://www.kaggle.com/datasets/mirbektoktogaraev/should-this-loan-be-approved-or-denied from which I have removed all instances where NewExist = 1 and all instances containing NA ...
Eliza's user avatar
  • 1
0 votes
0 answers
16 views

Error in .local(x, ...) : plot function only supports binary classification

I would like to draw an SVM plot for three targets. However, as in the title, an error occurs, stating that only binary classification is possible. Which part of the code below should I modify? ...
홍원기's user avatar
1 vote
0 answers
60 views

Why is `sklearn.svm.LinearSVC` taking longer to execute than `sklearn.svm.SVC`? [duplicate]

I'm performing an hyperparameter tuning using both LinearSVC and SVC classes from scikit-learn and even though I'm performing 10 times more searches with the SVC class than with LinearSVC, the ...
ghost wizard's user avatar
2 votes
2 answers
118 views

Why am I getting an error with varImp() for Support Vector Machine?

I am trying to output variable importance for a Support Vector Machine binary classification model in R, but it keeps producing an error. I tried the same code with the Iris dataset, and it worked as ...
Grace's user avatar
  • 21
0 votes
0 answers
41 views

SVM - Error in model.frame.default(object, data, xlev = xlev) : object is not a matrix

can't figure out what I'm doing wrong. I am trying to run an SVM prediction model, as below: library(terra) library(e1071) library(caret) library(MultiscaleDTM) APA170 <- rast("bs.tif") ...
smokarran's user avatar
0 votes
0 answers
20 views

SVM Classifier ValueError: Found input variables with inconsistent shapes

I'm currently working on a project where I have a CSV file with two columns, "features" and "labels." The "features" column contains arrays (vectors) with varying lengths,...
hyper's user avatar
  • 19
0 votes
1 answer
39 views

Issue with SVC Classifier on CSV file with Array Values in "features" Column

Hello Stack Overflow community, I am facing an issue while trying to apply the Support Vector Classifier (SVC) on a CSV file. Here is the link to CSV File. Download this file for proper view. This ...
hyper's user avatar
  • 19
0 votes
0 answers
65 views

How to show an example of text classification using SVM with and without SMO in it?

I'm trying to make a comparison of text classification between using Support Vector Machine (SVM) with and without Sequential Minimal Optimization (SMO) but I don't know what's the best way to do it. ...
GravityW's user avatar
-4 votes
1 answer
84 views

How to Derive Weights and Offsets from Linear SVM in Matlab [closed]

The linear SVM model trained by Matlab is as follows: Alpha Beta Bias Mu Sigma SupportVectors SupportVectorLabels May I ask how to use above parameters to calculate the weights and offsets of the ...
MicroGrit's user avatar
0 votes
0 answers
26 views

Type of test dataset from the SVC classifier from sklearn

I am trying to run an SVM script on the Kaggle dataset of Titanic. This is the result of the .info() method of my dataset: info method result Here is the code: import pandas as pd from sklearn.svm ...
Michele Assirelli's user avatar
0 votes
0 answers
45 views

Is there a way to integrate yolov5 and svm?

I am currently working on an object detection project. I have already done it with yolov5 and svm separately can i integrate both the algorithm together like YOLO for object localization and detection ...
MITHILESHAN M 's user avatar
-1 votes
1 answer
257 views

In the context of hard-margin SVMs, what happens when a point violates the margin? [closed]

I'm currently self-studying machine learning theory and am reading through information about hard-margin and soft-margin support vector machines. I know that soft-margin SVMs can be useful when we ...
mllearner2023's user avatar
0 votes
0 answers
24 views

ConvergenceWarning: Liblinear failed to converge, increase the number of iterations. warnings.warn() when performing svm

I got this warning when performing svm. I honestly don't know what this means, so my question is what do I have to change to get rid of it. Also if there is anything that I did wrong in my code please ...
user avatar
0 votes
1 answer
56 views

What error it is when I put gridsearchCV to multiclass svm model it work time almost day now from 1 minute?

When I run my multiclass svm model without gridsearchCV it use 1 minute I only have 3 class and 24 data per class. When I use put gridsearchCV to get more accuracy it work until now for day. I think ...
Grey's user avatar
  • 1
0 votes
0 answers
121 views

SVM implementation problem with CVXPY: Persistent errors with RBF kernel and linear kernel

I'm working on an SVM (Support Vector Machine) implementation using CVXPY in Python. Unfortunately, I'm having persistent problems with both the RBF kernel and the linear kernel. I define the ...
fallou0202's user avatar

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