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Multi-objective closed-form algebraic expressions discovery approach application to the synthetic time-series generation

机译:多目标封闭代数表达式发现方法应用于合成时间系列

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摘要

Time-series modeling is a well-studied topic of classical analysis and machine learning. However, large datasets are required to obtain the model with a better prediction quality with the increasing model complexity. Therefore, some applications demand synthetic datasets that are preserving modeling-sensitive properties. Another application of synthetic data is data anonymization. The synthetic data generation algorithm may be split into two parts: the time-series modeling and the synthetic data generation parts. The model must be interpretable to obtain the synthetic data with good quality. The model parameter interpretation allows controlling generation by adding noise to different groups of parameters. In the paper, the evolutionary multi-objective closed-form algebraic expressions discovery approach that allows obtaining the model in the form that may be analyzed using the mathematics is proposed. The analysis allows the interpretation of the model parameters for the controllable generation of the synthetic data. The notion of synthetic data quality is discussed. The examples of the synthetic time-series generation based on two datasets with different properties are shown.
机译:时间序列建模是古典分析和机器学习的良好研究。然而,随着模型复杂性的增加,需要具有更好的预测质量的模型来获得模型。因此,某些应用程序需要保留建模敏感性的合成数据集。综合数据的另一个应用是数据匿名化。合成数据生成算法可以分为两部分:时间序列建模和合成数据生成部件。该模型必须是可解释的,以获得具有良好质量的合成数据。模型参数解释允许通过向不同的参数组添加噪声来控制生成。在本文中,提出了允许以使用数学分析的形式获得模型的进化多目标闭合形式代数表达式发现方法。该分析允许解释用于合成数据的可控生成的模型参数。讨论了合成数据质量的概念。示出了基于两个具有不同属性的数据集的合成时间序列生成的示例。

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