开源软件名称(OpenSource Name):awslabs/fraud-detection-using-machine-learning开源软件地址(OpenSource Url):https://github.com/awslabs/fraud-detection-using-machine-learning开源编程语言(OpenSource Language):Jupyter Notebook 77.0%开源软件介绍(OpenSource Introduction):Fraud Detection using Machine LearningWith businesses moving online, fraud and abuse in online systems is constantly increasing as well. Traditionally, rule-based fraud detection systems are used to combat online fraud, but these rely on a static set of rules created by human experts. This project uses machine learning to create models for fraud detection that are dynamic, self-improving and maintainable. Importantly, they can scale with the online business. Specifically, we show how to use Amazon SageMaker to train supervised and unsupervised machine learning models on historical transactions, so that they can predict the likelihood of incoming transactions being fraudulent or not. We also show how to deploy the models, once trained, to a REST API that can be integrated into an existing business software infrastructure. This project includes a demonstration of this process using a public, anonymized credit card transactions dataset provided by ULB, but can be easily modified to work with custom labelled or unlaballed data provided as a relational table in csv format. Getting StartedYou will need an AWS account to use this solution. Sign up for an account here. To run this JumpStart 1P Solution and have the infrastructure deploy to your AWS account you will need to create an active SageMaker Studio instance (see Onboard to Amazon SageMaker Studio). When your Studio instance is Ready, use the instructions in SageMaker JumpStart to 1-Click Launch the solution. The solution artifacts are included in this GitHub repository for reference. Note: Solutions are available in most regions including us-west-2, and us-east-1. Caution: Cloning this GitHub repository and running the code manually could lead to unexpected issues! Use the AWS CloudFormation template. You'll get an Amazon SageMaker Notebook instance that's been correctly setup and configured to access the other resources in the solution. ArchitectureThe project architecture deployed by the cloud formation template is shown here. Project DescriptionThe project uses Amazon SageMaker to train both a supervised and an unsupervised machine learning models, which are then deployed using Amazon Sagemaker-managed endpoints. If you have labels for your data, for example if some of the transactions have been annotated as fraudulent and some as legitimate, then you can train a supervised learning model to learn to discern the two classes. In this project, we provide a recipe to train a gradient boosted decision tree model using XGBoost on Amazon SageMaker. The supervised model training process also handles the common issue of working with highly imbalanced data in fraud detection problems. The project addresses this issue into two ways by 1) implementing data upsampling using the "imbalanced-learn" package, and 2) using scale position weight to control the balance of positive and negative weights. If you don't have labelled data or if you want to augment your supervised model predictions with an anomaly score from an unsupervised model, then the project also trains a RandomCutForest model using Amazon SageMaker. The RandomCutForest algorithm is trained on the entire dataset, without labels, and takes advantage of the highly imbalanced nature of fraud datasets, to predict higher anomaly scores for the fraudulent transactions in the dataset. Both of the trained models are deployed to Amazon SageMaker managed real-time endpoints that host the models and can be invoked to provide model predictions for new transactions. The model training and endpoint deployment is orchestrated by running a jupyter notebook on a SageMaker Notebook instance. The jupyter notebook runs a demonstration of the project using the aforementioned anonymized credit card dataset that is automatically downloaded to the Amazon S3 Bucket created when you launch the solution. However, the notebook can be modified to run the project on a custom dataset in S3. The notebook instance also contains some example code that shows how to invoke the REST API for inference. In order to encapsulate the project as a stand-alone microservice, Amazon API Gateway is used to provide a REST API, that is backed by an AWS Lambda function. The Lambda function runs the code necessary to preprocess incoming transactions, invoke sagemaker endpoints, merge results from both endpoints if necessary, store the model inputs and model predictions in S3 via Kinesis Firehose, and provide a response to the client. DataThe example dataset used in this solution was originally released as part of a research collaboration of Worldline and the Machine Learning Group (http://mlg.ulb.ac.be) of ULB (Université Libre de Bruxelles) on big data mining and fraud detection. The dataset contains credit card transactions from European cardholders in 2013. As is common in fraud detection, it is highly unbalanced, with 492 fraudulent transactions out of the 284,807 total transactions. The dataset contains only numerical features, because the original features have been transformed for confidentiality using PCA. As a result, the dataset contains 28 PCA components, and two features that haven't been transformed, Amount and Time. Amount refers to the transaction amount, and Time is the seconds elapsed between any transaction in the data and the first transaction. More details on current and past projects on related topics are available on https://www.researchgate.net/project/Fraud-detection-5 and the page of the DefeatFraud project We cite the following works:
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LicenseThis project is licensed under the Apache-2.0 License. |
2023-10-27
2022-08-15
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2022-09-23
2022-08-13
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