While current machine learning methods can detect financial fraud more effectively, they suffer from a common problem: dataset imbalance, i.e. there are substantially more non-fraud than fraud cases. In this paper, we propose the application of generative adversarial networks (GANs) to generate synthetic fraud cases on a dataset of public firms convicted by the United States Securities and Exchange Commission for accounting malpractice. This approach aims to increase the prediction accuracy of a downstream logit, support vector machine (SVM), and eXtreme Gradient Boosting (XGBoost) classifier by training on a more well-balanced dataset. While the results indicate that a state-of-the-art machine learning model like XGBoost can outperform pre...
It is crucial to actively detect the risks of transactions in a financial company to improve custome...
This chapter provides insights on the underlying reasons to replace the conventional methods with co...
The method of performing transactions by means of payment cards is extremely efficient and the paym...
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...
In more recent years, credit card fraudulent transactions became a major problem. These fraudulent t...
In recent years financial fraud has seen substantial growth due to the advent of electronic financia...
The number of financial transactions has the potential to cause many violations of the law (fraud). ...
Generative adversarial networks (GANs) are able to capture distribution of its inputs. They are thus...
This paper aims to develop a machine learning model that enables to predict signs of financial state...
Machine learning methods are explored in an attempt to achieve better predictive performance than th...
The purpose of this dissertation was to study why corporate fraud detection models are often met wit...
Data augmentation is an important procedure in deep learning. GAN-based data augmentation can be uti...
Nowadays, data is king and if treated and used properly it promises to give organizations a competit...
Credit card use poses a significant security issue on a global scale, with rule-based algorithms and...
It is crucial to actively detect the risks of transactions in a financial company to improve custome...
This chapter provides insights on the underlying reasons to replace the conventional methods with co...
The method of performing transactions by means of payment cards is extremely efficient and the paym...
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...
In more recent years, credit card fraudulent transactions became a major problem. These fraudulent t...
In recent years financial fraud has seen substantial growth due to the advent of electronic financia...
The number of financial transactions has the potential to cause many violations of the law (fraud). ...
Generative adversarial networks (GANs) are able to capture distribution of its inputs. They are thus...
This paper aims to develop a machine learning model that enables to predict signs of financial state...
Machine learning methods are explored in an attempt to achieve better predictive performance than th...
The purpose of this dissertation was to study why corporate fraud detection models are often met wit...
Data augmentation is an important procedure in deep learning. GAN-based data augmentation can be uti...
Nowadays, data is king and if treated and used properly it promises to give organizations a competit...
Credit card use poses a significant security issue on a global scale, with rule-based algorithms and...
It is crucial to actively detect the risks of transactions in a financial company to improve custome...
This chapter provides insights on the underlying reasons to replace the conventional methods with co...
The method of performing transactions by means of payment cards is extremely efficient and the paym...