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Optimizing predictive precision in imbalanced datasets for actionable revenue change prediction

机译:优化可操作收入改变预测的不平衡数据集中的预测精度

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摘要

In business environments where an organization offers contract-based periodic services to its clients, one crucial task is to predict changes in revenues generated through different clients or specific service offerings from one time epoch to another. This is commonly known as the revenue change prediction problem. In practical real-world environments, the importance of having adequate revenue change prediction capability primarily stems from scarcity of resources (in particular, sales team personnel or technical consultants) that are needed to respond to different revenue change scenarios including predicted revenue growth or shrinkage. It becomes important to make actionable decisions; that is, decisions related to prioritizing clients or service offerings to which these scarce resources are to be allocated. The contribution of the current work is twofold. First, we propose a framework for conducting revenue change prediction through casting it as a classification problem. Second, since datasets associated with revenue change prediction are typically imbalanced, we develop a new methodology for solving the classification problem such that we achieve maximum prediction precision while minimizing sacrifice in prediction accuracy. We validate our proposed framework through real-world datasets acquired from a major global provider of cloud computing services, and benchmark its performance against standard classifiers from previous works in the literature. (C) 2020 Elsevier B.V. All rights reserved.
机译:在组织为其客户提供基于合同的定期服务的商业环境中,一个重要任务是预测通过不同客户或特定服务产品产生的收入的变化,或者从一个时间划次到另一个时代。这通常被称为收入改变预测问题。在实际的真实环境中,具有充分收入改变预测能力的重要性主要是源于所需的资源(特别是销售团队人员或技术顾问)的稀缺,这些资源需要应对不同的收入变更情景,包括预测收入增长或收缩。做出可行的决定变得重要;也就是说,与优先考虑要分配了这些稀缺资源的客户或服务产品的优先考虑。目前工作的贡献是双重的。首先,我们提出了一个框架,通过将其作为分类问题铸造来进行收入改变预测。其次,由于与收入改变预测相关的数据集通常是不平衡的,因此我们开发了一种用于解决分类问题的新方法,使得我们实现最大预测精度,同时以预测准确性最小化牺牲。我们通过从全球云计算服务提供的现实数据集进行验证我们的拟议框架,并将其对来自文学中以前作品的标准分类器的性能进行基准。 (c)2020 Elsevier B.v.保留所有权利。

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