生成时间序列数据的假设场景

Lars Kegel, M. Hahmann, Wolfgang Lehner
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引用次数: 10

摘要

时间序列数据已成为许多应用领域中普遍存在的重要数据源。大多数公司和组织都强烈依赖这些数据来完成决策、计划、预测和分析等关键任务。虽然所有这些任务通常关注代表组织和业务流程的实际数据,但也希望将它们应用于可选场景,以便为偏离预期的开发做好准备,或评估当前策略的健壮性。当涉及到这种假设场景的构建时,现有的工具要么专注于标量数据,要么处理高度特定的场景。在这项工作中,我们提出了一种普遍适用且易于使用的方法来生成时间序列数据的假设场景。我们的方法提取数据集的描述性特征,并允许通过过滤和修改这些特征来构建替代版本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating What-If Scenarios for Time Series Data
Time series data has become a ubiquitous and important data source in many application domains. Most companies and organizations strongly rely on this data for critical tasks like decision-making, planning, predictions, and analytics in general. While all these tasks generally focus on actual data representing organization and business processes, it is also desirable to apply them to alternative scenarios in order to prepare for developments that diverge from expectations or assess the robustness of current strategies. When it comes to the construction of such what-if scenarios, existing tools either focus on scalar data or they address highly specific scenarios. In this work, we propose a generally applicable and easy-to-use method for the generation of what-if scenarios on time series data. Our approach extracts descriptive features of a data set and allows the construction of an alternate version by means of filtering and modification of these features.
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