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Evaluation of Recurrent Neural Networks for Detecting Injections in API Requests

机译:复发性神经网络检测API请求中注射的评估

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摘要

Application programming interfaces (APIs) are a vital part of every online business. APIs are responsible for transferring data across systems within a company or to the users through the web or mobile applications. Security is a concern for any public-facing application. The objective of this study is to analyze incoming requests to a target API and flag any malicious activity. This paper proposes a solution using sequence models to identify whether or not an API request has SQL, XML, JSON, and other types of malicious injections. We also propose a novel heuristic procedure that minimizes the number of false positives. False positives are the valid API requests that are misclassified as malicious by the model.
机译:应用程序编程接口(API)是每个在线业务的重要组成部分。 API负责通过Web或移动应用程序或通过Web或移动应用程序在公司内的系统跨系统传输数据。安全是任何面向公开的申请的担忧。本研究的目的是将传入请求分析到目标API并标注任何恶意活动。本文提出了一种解决方案,使用序列模型来识别API请求是否具有SQL,XML,JSON和其他类型的恶意注入。我们还提出了一种新的启发式程序,可最大限度地减少误报的数量。假阳性是模型被错误分类的有效API请求。

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