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Interpreting Atypical Conditions in Systems with Deep Conditional Autoencoders: The Case of Electrical Consumption

机译:用深度条件自动编码器解释系统中的非典型条件:用电情况

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In this paper, we propose a new method to iteratively and interactively characterize new feature conditions for signals of daily French electrical consumption from our historical database, relying on Conditional Variational Autoencoders. An autoencoder first learn a compressed similarity-based representation of the signals in a latent space, in which one can select and extract well-represented expert features. Then, we successfully condition the model over the set of extracted features, as opposed to simple target label previously, to learn conditionally independent new residual latent representations. Unknown, or previously unse-lected factors such as atypical conditions now appear well-represented to be detected and further interpreted by experts. By applying it, we recover the appropriate known expert features and eventually discover, through adapted representations, atypical known and unknown conditions such as holidays, fuzzy non working days and weather events, which were actually related to important events that influenced consumption.
机译:在本文中,我们提出了一种新的方法,该方法依靠条件变分自动编码器从我们的历史数据库中迭代和交互地表征法国日常用电信号的新特征条件。自动编码器首先学习潜在空间中信号的基于压缩相似度的表示形式,在其中可以选择和提取表现良好的专家特征。然后,与先前的简单目标标签相反,我们成功地根据提取的特征集对模型进行了条件化,以学习有条件地独立于新的残余潜像表示。现在,可以很好地表示出未知的或先前未曾选择的因素(例如非典型条件),可以由专家进行检测和进一步解释。通过应用它,我们恢复了适当的已知专家特征,并最终通过适应表示形式发现了非典型的已知和未知条件,例如假期,模糊的非工作日和天气事件,这些实际上与影响消费的重要事件有关。

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