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imbalanced-data
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Managing problems of class imbalance in machine learning models using spatial data in R

I am trying to simultaneously perform feature selection and hyperparameter tuning on stacked learners (glmnet and rpart). However, I am encountering the following error message with the classif.glmnet ...
Marine Régis's user avatar
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I faced an error when I used PCA with LSTM model

I have a time series dataset with 20 classes, but they are imbalanced; when I tried a method like "RandomOverSampler", I got an error because of the 3D of our data so could you suggest a ...
Zineb Adaika's user avatar
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Weighted F1-score

I'm training and validating models for a binary classification problem in a dataset that has great class imbalance. When searching for metrics for evaluating the performance of the models, I found ...
Juan Segundo Peña Loray's user avatar
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Class imbalance calculation for each class in a dataset

I am trying to compute class imbalance in each dataset and my approach was to check average and standard deviation of the counts. The average is the total number of samples in class 1 / total number ...
Aparna Bhat's user avatar
1 vote
2 answers
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Does XGBoost's scale_pos_weight correctly balance the positive samples if the training dataset has more positive than negative samples?

After researching, I realized that scale_pos_weight is typically calculated as the ratio of the number of negative samples to the number of positive samples in the training data. My dataset has 840 ...
viji's user avatar
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1 answer
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Which parts of the Imbalanced Learn Pipeline are applied to the test set?

I have created an imbalanced-learn Pipeline consisting of RobustScaler, SMOTE-NC, RandomUndersampling and a Random Forest Classifier. A RandomSearchCV is used to select the best hyperparameters. I ...
CodeSurgeon's user avatar
1 vote
1 answer
55 views

Class_weight parameter not impacting results in imbalanced dataset with RandomForestClassifier

I'm fairly new to ML and now I'm in the process of predicting employee attrition in a medium sized dataset. I have been able to run everything smoothly, but, as the dataset is imbalanced, I've been ...
Raughar's user avatar
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Working with classWeight in model parameters for highly imbalanced datasets in pyspark

I am working on a binary classification problem with a highly balanced dataset(majority class 0: 523152826, and minority class 1: 2711142) I tried the logistic regression model from pyspark.ml....
DS_nerd's user avatar
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using class_weight in model.fit() doesnt't work

I have an imbalanced dataset and I would like to use class_weight in model.fit(). When I use model.fit() without class_weight, it works correctly, but if I add class_weight, I've got an error. My ...
user24560346's user avatar
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How do I add a bias to the last layer in my model if my model outputs logits and not probabilities?

I'm working on a medical image binary segmentation problem using a U-Net in tensorflow, and my classes are extremely unbalanced (about 1 in 10,000). As a result, my model wastes a ton of time going ...
Thao Nguyen's user avatar
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Use an external system-installed Scala library in Python in Databricks notebook

In the context of fixing an imbalanced dataset in pyspark, I found the following external library in scala which is similar to SMOTE for imbalanced data: I installed it on my system with > $...
Malek BEN HMIDA's user avatar
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Highly imbalanced pyspark dataset

I have a highly imbalanced Pyspark dataset (523148956 for majority class vs 2722245 for minority class) and I would like to perform techniques to balance it without having to convert it to pandas. Can ...
Malek BEN HMIDA's user avatar
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35 views

Train and test split in such a way that each name and proportion of tartget class is present in both train and test

I am trying to solve a ML problem if a person will deliver an order or not. Highly Imbalance dataset. Here is the glimpse of my dataset [{'order_id': '1bjhtj', 'Delivery Guy': 'John', 'Target': 0}, {'...
Daman deep's user avatar
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Questions of handling imbalance dataset classification

I am trying to predict number of members who will discontinue their membership. The whole dataset is about 12 millions rows of data with about 40 columns. A member status can be “Continue”, “Voluntary ...
Anson's user avatar
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1 answer
73 views

Kernel dies on fit_resample of SMOTE-NC from imblearn

I have a dataset for fraud detection (i can't disclose dataset) which is extremely imbalanced, when i use SMOTE everything works, but as i have 9 categorical features i wanted to use SMOTE-NC but when ...
dsk4ch's user avatar
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AttributeError: 'EasyEnsembleClassifier' object has no attribute 'fit_resample'

I am trying to perform a balancing between two classes, one majority and one minority. The majority class is a number of no landslide points and the minority class is landslide. I am trying to apply ...
MM-'s user avatar
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ValueError: Expected n_neighbors <= n_samples, but n_samples = 2, n_neighbors = 6

I tried to use the SMOTE to solve my imbalance data problem which are white blood cell that contain 5 classes class1: 212 images class2: 744 images class3: 2,427 images class4: 561 images class5: 6,...
Punn not Poon's user avatar
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21 views

Multiclass classfication on small imbalanced data

I have a tabular dataset (very small for ML modelling) that consists of 19 samples which are divided in three different classes (Class_1 = 4, Class_2 = 10, Class_3 = 5) with 1828 features with numeric ...
Aatmika's user avatar
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Sampling a Balanced batch for training but with Dtype=Object

I want a "balanced batch sampler" for my machine-learning training without explicitly creating and storing a balanced batch (to save memory). Initially, I had planned to use imb_learn....
infiNity9819's user avatar
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Content-Based Filtering for Tagged Posts

Context Goal Based on a user's previous Post Reactions (Documents & Classes) (FavLike, Fav, Like, Dislike, None) (FavLike to keep classes mutually exclusive; FavDislike is possible, but, for ...
Karuljonnai's user avatar
1 vote
3 answers
441 views

How to Handle Imbalance Dataset in NER?

I'm now doing information extraction using NER. My dataset domain (mostly) in computer science. It contains label/tag: "TUJUAN", "METODE", and "TEMUAN". The problem is ...
Alwan Rahmana Subian's user avatar
0 votes
1 answer
168 views

Tidymodels and Imbalanced datasets - Subsampling when resampling

When dealing with imbalanced datasets, my understanding is possible solutions are subsampling or oversampling the training set. However, the test set should reflect the imbalance of the original ...
GeorgeM's user avatar
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Python logistic regression in statsmodels using l1 penalty with class weights

I would like to run logistic regression in statsmodels using an l1 penalty (lasso) and class weights due to a class imbalance. There are several posts that explain how to either implement logistic ...
makemyDNA's user avatar
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56 views

Setting random seed for step_downsample in repeated 10 fold cv

I'm using tidymodels to tune binary classification randomForest models using a moderately imbalanced dataset, with an approximately 1:7 positive to negative ratio in the target variable, that will ...
njk's user avatar
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SMOTE for just the training for cross-validation of a Sequential Feature Selection Algorithm after a train/test split

`**Split a Train a Test Dataset** X_train, X_test, y_train, y_test = train_test_split(X_pre, y, random_state=0, stratify=y, ...
Andres Portocarrero's user avatar
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1 answer
116 views

Identify the Synthetic Samples generated by SMOTE

I have a labeled dataset with X shape being 7000 x 2400 and y shape being 7000. The data is heavily imbalanced, so I am trying to generate synthetic samples using SMOTE. However I want to identify the ...
Arindam's user avatar
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1 answer
57 views

I'm trying to use SMOGN to balance my data but it's giving TypeError or UFuncTypeError how to solve this problem?

I have data as images(arrays) with their labels uploaded from folders. the data is imbalanced and i'm trying to balance it using smgon after creating dataframe. here's the code: r_labels=[] ...
Рим's user avatar
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31 views

Does a oversampling technique like smote or adasyn convert all data to a single class label?

I am working on a deep learning model using image data. My oversampler is converting all the samples to single class. Initially I have 7909 images, 2480 images of class 0 and 5429 images of class 1. ...
Alia's user avatar
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69 views

Generate synthetic data for majority and minority classes

I am working on a classification problem where I try to generate synthetic data for both the Majority and Minority classes,as i want to train my model on synthetic data and test on actual data, i am ...
user286076's user avatar
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RuntimeError: The size of tensor a (2048) must match the size of tensor b (2) at non-singleton dimension 0

I'm working on a highly imbalanced dataset for a tabular binary classification task. I'm using pytorch and skorch to build my DNN with output_dim = 1. Assigning class weights is better than upsampling ...
JGM's user avatar
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1 vote
0 answers
43 views

How to assign weights to monthly data to XGboost performance?

We are having a month on month data received for training, end of every month snapshot is used. XGboost model (binary classification) is used to perform well with one month in train test and not in ...
Josh mar's user avatar
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0 answers
167 views

How to apply SMOTE algorithm (or an alternative) on a highly imbalanced PySpark dataset?

I am new to pyspark and I am working with a pyspark dataset with severe imbalance (imbalance ratio: 0.75%). To fix this imbalance I thought to apply SMOTE on it without having to convert my dataset ...
DS_nerd's user avatar
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0 answers
29 views

SMOTE throws a cython error during fit_resample

I have a data frame that looks like below where column 'ETR' is my label having classes 0 to 4. Since the classes are imbalanced (with 0 being the majority class), I used SMOTE to oversample the data ...
Vishnukk's user avatar
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-2 votes
1 answer
81 views

Best way to deal with uneven data in text classification

I'm trying to run a text classification model on some text data (Tweets) using sklearn and Python. I have hand coded near 1.5k cases, however the data is imbalanced. Cases are coded for themes. One of ...
gdhp's user avatar
  • 27
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0 answers
118 views

Creating Balanced Training Sets with Sklearn's train_test_split and KBinsDiscretizer

I'm working on a machine learning task with an unbalanced dataset of three input features (3 x 189,000) and a single output (1 x 189,000). My goal is to balance the dataset using the "pass energy&...
Amanda.py's user avatar
  • 113
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0 answers
62 views

Use ADASYN for multi class-multilable models

I have a multiclass-multilabel model, how to use the ADASYN to do data augmentation so that data is balanced, An example to understand my question: Dataset has 10 features, Classes for dataset I have :...
Alicia's user avatar
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0 votes
0 answers
188 views

how to balance a dataset with multiple annotations of different classes per image?

I am trying to train an object detection model in Yolov8 using ultralytics. I have a dataset with 8975 images, a total of 28 classes and 26616 annotations. Note that each image can have different ...
Alberto Mack 's user avatar
0 votes
2 answers
284 views

Optimize metrics for Fraud Detection Imbalanced Data

I would need your help to improve my model performance. As mostly happens for fraud detection, I have an imbalanced dataset (0.1/0.9). I would like to optimize the recall for my target 1 and 0, ...
Sandro231's user avatar
0 votes
1 answer
287 views

Ordinal Target Variable Prediction in Python

I am trying to put together an ML pipeline in Python (using Sklearn, open to alternative package suggestions) where I have 5 categorical feature variables, 2 continuous feature variables, and an ...
MarkoAlberto's user avatar
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0 answers
64 views

Assigning class weights during XGBoost training phase

I am using the following code to train a XGBoost model: # Calculate class weights for cost-sensitive learning class_weights = compute_sample_weight(class_weight='balanced', y=y_train) # Define a ...
dd2's user avatar
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0 votes
0 answers
21 views

Class imbalance threshold number in classification problem

Is there a threshold to define class imbalance? I currently have 75:25 of target 0 and 1, but I have found conflicting sources that imbalance starts from 80 or 90 above. Since I need to justify my ...
julia1435's user avatar
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0 answers
46 views

SMOTE imbalanced data without changing mean and standard deviation of numerical variables

I have a dataframe with numerical variables, such as age and length of hospital stay, and categorical variables, such as gender and outcome (Positive, Negative). The data for the 'outcome' variable is ...
Baptista's user avatar
-1 votes
1 answer
66 views

Highly imbalanced Alzheimer's Disease MRI image dataset

I am currently doing my final year project and I need your humble opinion. My dataset consists of 4 classes which contain : Mild demented - 896 images Moderate demented - 64 images Non demented - 3200 ...
Firzana Eiwany Mashi's user avatar
-1 votes
1 answer
130 views

How to choose the best technique for handling imbalanced data for binary classification?

I am working on my thesis on imbalanced dataset for binary classification problem. I need to handle the imbalance on data before make the classification, but I am not sure what technique is better to ...
Shada Hamed's user avatar
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0 answers
57 views

Weighting Labels in LightGBM Classifier in R

Background: I am working with a LightGBM classifier in R. The data comprises four labels, which are imbalanced. Two of these labels seem to add noise to the data. Objective: I want to assign a weight ...
Programming Noob's user avatar
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0 answers
120 views

Clustering issue with imbalanced data (K-means error analysis)

I am facing a clustering issue and I really hope anyone can help me. After using t-SNE, which seems to be the most effective dim reduction technique for my data, I end up with a feature space of the ...
yung_spike's user avatar
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0 answers
20 views

Imbalanced data set for a regression problem

I am working on a regression problem in which my data set is imbalanced in different categories like this question: https://stats.stackexchange.com/questions/387499/which-is-the-right-way-to-handle-...
negin's user avatar
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0 answers
224 views

Imbalanced data for regression task

I have a question about regression task with imbalanced dataset. Here is a histogramme of my target. My target is a value between 0 and 1, but 54 % value is just 1. Almost 70 % value is around 1. So, ...
stat_man's user avatar
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0 votes
1 answer
1k views

How to Handle Imbalanced Data in a Classification Problem?

I am working on a binary classification problem using machine learning, where my target classes are imbalanced. I have approximately 80% of data points in Class A and only 20% in Class B. I have tried ...
Viper's user avatar
  • 11
1 vote
0 answers
48 views

Sample Size Inconsistency Error with imblearn's classification_report_imbalanced

I'm encountering an error when using classification_report_imbalanced from imblearn.metrics on a classification task. The code runs smoothly until I add the classification_report_imbalanced function, ...
yuyudss's user avatar
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