Javascript must be enabled to continue!
METHODS FOR CLASSIFICATION OF IMBALANCED DATA: A REVIEW
View through CrossRef
Imbalance in dataset enforces numerous challenges to implementing data analytics in all existing real-world applications using machine learning. Data imbalance occurs when the sample size from a class is very small or large than another class. The performance of predicted models is greatly affected when the dataset is highly imbalanced and the sample size increases. Overall, Imbalanced training data have a major negative impact on performance. Leading machine learning techniques combat the imbalanced dataset by focusing on avoiding the minority class and reducing the inaccuracy for the majority class. This article presents a review of different approaches to classifying imbalanced dataset and their application areas.
Title: METHODS FOR CLASSIFICATION OF IMBALANCED DATA: A REVIEW
Description:
Imbalance in dataset enforces numerous challenges to implementing data analytics in all existing real-world applications using machine learning.
Data imbalance occurs when the sample size from a class is very small or large than another class.
The performance of predicted models is greatly affected when the dataset is highly imbalanced and the sample size increases.
Overall, Imbalanced training data have a major negative impact on performance.
Leading machine learning techniques combat the imbalanced dataset by focusing on avoiding the minority class and reducing the inaccuracy for the majority class.
This article presents a review of different approaches to classifying imbalanced dataset and their application areas.
Related Results
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Advanced Re-Sampling Techniques for Multi-Class Imbalanced Classification
Advanced Re-Sampling Techniques for Multi-Class Imbalanced Classification
Imbalanced classification is a common problem in machine learning, where one class significantly outnumbers the others. This imbalance leads to biased model performance, where the ...
Improving Medical Document Classification via Feature Engineering
Improving Medical Document Classification via Feature Engineering
<p dir="ltr">Document classification (DC) is the task of assigning the predefined labels to unseen documents by utilizing the model trained on the available labeled documents...
Handling the Imbalanced Problem in Agri-Food Data Analysis
Handling the Imbalanced Problem in Agri-Food Data Analysis
Imbalanced data situations exist in most fields of endeavor. The problem has been identified as a major bottleneck in machine learning/data mining and is becoming a serious issue o...
Weak tagging and imbalanced networks for online review sentiment classification
Weak tagging and imbalanced networks for online review sentiment classification
Sentiment classification aims to complete the automatic judgment task of text sentiment tendency. In the sentiment classification task of online reviews, traditional deep learning ...
Application of Machine Learning Techniques for Customer Churn Prediction in the Banking Sector
Application of Machine Learning Techniques for Customer Churn Prediction in the Banking Sector
Aim/Purpose: Previous studies have primarily focused on comparing predictive models without considering the impact of data preprocessing on model performance. Therefore, this study...
Imbalanced image classification algorithm based on fine-grained analysis
Imbalanced image classification algorithm based on fine-grained analysis
Fine-grained attribute analysis and data imbalance have always been research hotspots in the field of computer vision. Due to the complexity and diversity of fine-grained attribute...
Enhancing Alzheimer’s disease classification through split federated learning and GANs for imbalanced datasets
Enhancing Alzheimer’s disease classification through split federated learning and GANs for imbalanced datasets
In the rapidly evolving healthcare sector, using advanced technologies to improve medical classification systems has become crucial for enhancing patient care, diagnosis, and treat...

