小型IT环境中服务器行为分类的迁移学习

Jasmina Bogojeska, Dorothea Wiesmann
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引用次数: 3

摘要

技术更新是数据中心管理中的一个重要组件,由于其高成本和相关的迁移风险,需要对其进行适当的论证。本文的目标是通过统计学习方法支持小型目标IT环境的技术更新决策过程,该方法可以根据事件票证和服务器属性数据自动识别和排列具有问题行为的服务器。由于IT环境是异构的,在实践中,为每个IT环境训练一个单独的模型。为了解决许多IT环境中可用的小样本量,我们开发了一个随机森林迁移学习解决方案,该解决方案以选择性的方式利用来自大型IT环境的信息。它为每个目标It环境训练一个模型,该模型使用适当派生的重采样权重,以便来自大帐户的所有示例池的分布与小目标It环境的目标分布相匹配。通过这种方式,使用来自许多大型IT环境的可用信息的定制预测模型可以为小型IT环境提供高质量的预测。我们在大量的实际数据上证明了我们的模型具有较好的预测质量。
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Transfer learning for server behavior classification in small IT environments
Technology refresh is an important component in data-center management that needs to be properly justified because of its high cost and associated migration risk. The goal of this paper is to support the technology refresh decision process for small target IT environments with a statistical learning method that automatically identifies and ranks their servers with problematic behavior based on incident ticket and server attribute data. Since the IT environments are heterogeneous, in practice, a separate model is trained for each of them. To address the small sample sizes available for many IT environments, we develop a random forest transfer learning solution that leverages information from large IT environments in a selective manner. It trains a model for each target IT environment that uses properly derived resampling weights such that the distribution of the pool of all examples from the large accounts is matched to the target distribution of the small target IT environment. In this way, a tailored predictive model that uses the information available from many large IT environments provides good quality predictions for small IT environments. We demonstrate the superior prediction quality of our model on a large set of real data.
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