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Using Learned Application Flow to Predict Outcomes and Identify Trouble Spots in Network Business Transactions

机译:使用学习的应用程序流程预测结果并确定网络业务交易中的故障点

摘要

An approach is provided that receives, over a computer network, transaction data from a number of clients that are running an app. The approach generates association rules by inputting the transaction data to an association rule learning algorithm, such as an Apriori algorithm. Each association rule is based on a user transaction pattern and a desired result, and each association rule includes a generated confidence value that pertains to an expected performance of one of the steps included in the respective association rule. The app is then modified based on an analysis of the generated confidence values, with the app modification being directed towards improving one or more of the confidence values.
机译:提供了一种方法,该方法通过计算机网络从多个运行应用程序的客户端接收交易数据。该方法通过将交易数据输入到关联规则学习算法(例如Apriori算法)来生成关联规则。每个关联规则基于用户交易模式和期望结果,并且每个关联规则包括与各个关联规则中包括的步骤之一的预期性能有关的生成的置信度值。然后基于对所生成的置信度值的分析来修改该应用程序,其中该应用程序修改旨在改善一个或多个置信度值。

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