Data augmentation is an important procedure in deep learning. GAN-based data augmentation can be utilized in many domains. For instance, in the credit card fraud domain, the imbalanced dataset problem is a major one as the number of credit card fraud cases is in the minority compared to legal payments. On the other hand, generative techniques are considered effective ways to rebalance the imbalanced class issue, as these techniques balance both minority and majority classes before the training. In a more recent period, Generative Adversarial Networks (GANs) are considered one of the most popular data generative techniques as they are used in big data settings. This research aims to present a survey on data augmentation using various GAN var...
Class-imbalanced datasets are common across different domains such as health, banking, security and ...
Credit card fraud is becoming a serious and growing problem as a result of the emergence of innovati...
Abstract— We focused on the study of using math modeling and machine learning to do big data analysi...
In more recent years, credit card fraudulent transactions became a major problem. These fraudulent t...
Credit card use poses a significant security issue on a global scale, with rule-based algorithms and...
In the last years, the number of frauds in credit card-based online payments has grown dramatically,...
Transactional fraud datasets exhibit extreme class imbalance. Learners cannot make accurate generali...
While current machine learning methods can detect financial fraud more effectively, they suffer from...
Generative adversarial networks (GANs) are able to capture distribution of its inputs. They are thus...
The recent increase in credit card fraud is rapidly has caused huge monetary losses for individuals ...
In many industrialized and developing nations, credit cards are one of the most widely used methods...
Credit card fraud is a difficult issue in budgetary services. Billions of dollars are lost because o...
Nowadays, data is king and if treated and used properly it promises to give organizations a competit...
Any computer vision application development starts off by acquiring images and data, then preprocess...
Fraudulent activities in financial fields are continuously rising. The fraud patterns tend to vary w...
Class-imbalanced datasets are common across different domains such as health, banking, security and ...
Credit card fraud is becoming a serious and growing problem as a result of the emergence of innovati...
Abstract— We focused on the study of using math modeling and machine learning to do big data analysi...
In more recent years, credit card fraudulent transactions became a major problem. These fraudulent t...
Credit card use poses a significant security issue on a global scale, with rule-based algorithms and...
In the last years, the number of frauds in credit card-based online payments has grown dramatically,...
Transactional fraud datasets exhibit extreme class imbalance. Learners cannot make accurate generali...
While current machine learning methods can detect financial fraud more effectively, they suffer from...
Generative adversarial networks (GANs) are able to capture distribution of its inputs. They are thus...
The recent increase in credit card fraud is rapidly has caused huge monetary losses for individuals ...
In many industrialized and developing nations, credit cards are one of the most widely used methods...
Credit card fraud is a difficult issue in budgetary services. Billions of dollars are lost because o...
Nowadays, data is king and if treated and used properly it promises to give organizations a competit...
Any computer vision application development starts off by acquiring images and data, then preprocess...
Fraudulent activities in financial fields are continuously rising. The fraud patterns tend to vary w...
Class-imbalanced datasets are common across different domains such as health, banking, security and ...
Credit card fraud is becoming a serious and growing problem as a result of the emergence of innovati...
Abstract— We focused on the study of using math modeling and machine learning to do big data analysi...