Time Series of Non-Additive Metrics: Identification and Interpretation of Contributing Factors of Variance by Linear Decomposition
Alex Glushkovsky

TL;DR
This paper presents a five-step linear decomposition method for analyzing non-additive time series metrics, enabling the identification of contributing factors and their interpretation, validated through synthetic and real-world examples.
Contribution
It introduces a novel approach combining segmentation, modeling, and aggregation to decompose non-additive metrics into interpretable linear effects.
Findings
Effective decomposition of non-additive metrics into contributing factors
Validation with synthetic and real-world data confirms interpretability
Residual analysis ensures no significant latent factors remain
Abstract
The research paper addresses linear decomposition of time series of non-additive metrics that allows for the identification and interpretation of contributing factors (input features) of variance. Non-additive metrics, such as ratios, are widely used in a variety of domains. It commonly requires preceding aggregations of underlying variables that are used to calculate the metric of interest. The latest poses a dimensionality challenge when the input features and underlying variables are formed as two-dimensional arrays along elements, such as account or customer identifications, and time points. It rules out direct modeling of the time series of a non-additive metric as a function of input features. The article discusses a five-step approach: (1) segmentations of input features and the underlying variables of the metric that are supported by unsupervised autoencoders, (2) univariate or…
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Taxonomy
TopicsEconomic and Technological Systems Analysis
