Abstract

In financial anti-fraud field, negative samples are small and sparse with serious sample imbalanced problem. Generating negative samples consistent with original data to naturally solve imbalanced problem is a serious problem. This article proposes a new method to solve this problem. We introduce a new generation model, combined Generative Adversarial Network with Long Short-Term Memory network for one-dimensional negative financial samples. The characteristic association between transaction sequences can be learned by long short-term memory layer, and the generator covers real data distribution by the adversarial discriminator with time-sequence. Mapping data distribution to feature space is a common evaluation method of synthetic data; however, relationships between data attributes have been ignored in online transactions. We define a comprehensive evaluation method to evaluate the validity of generated samples from data distribution and attribute characteristics. Experimental results on real bank B2B transaction data show that the proposed model has higher overall ratings, which is 10% higher than traditional generation models. Finally, well-trained model is used to generate negative samples and form new dataset. The classification results on new datasets show that precision and recall are all higher than baseline models. Our work has a certain practical value and provides a new idea to solve imbalanced problem in whatever fields.

Highlights

  • With the rapid development of financial science and technology, online transactions increase greatly

  • We explore the possibilities of applying generative adversarial network (GAN) to handle online transactions imbalance problem by generating negative samples

  • Experiments show that the model we proposed effectively improves the result of network transaction fraud detection

Read more

Summary

Introduction

With the rapid development of financial science and technology, online transactions increase greatly. CNN2 is introduced into online transaction fraud detection and has reached good results In this scenario, class imbalance occurs when normal transactions, called majority class, contain larger samples than abnormal transactions, called minority class. When an imbalanced problem occurs in the training data, learning algorithms will tend to the majority class and misclassify the minority class. This is because negative samples are given small weights when training. We explore the possibilities of applying GAN to handle online transactions imbalance problem by generating negative samples. A new generation model for online transactions samples has been proposed, combined GANs with LSTM networks.

Related work
X X xi x0i
9: Updatethe generator by ascending its stochastic gradient
11: End for Evaluation
Àxi Àxj ed
Findings
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call