MLLGJul 12, 2022

Wasserstein multivariate auto-regressive models for modeling distributional time series

arXiv:2207.05442v82 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the analysis of distributional time series for applications in fields like demography and urban planning, representing an incremental advancement in statistical modeling.

The authors tackled the problem of modeling multivariate time series of probability measures by proposing a new autoregressive model in the Wasserstein space, achieving consistent estimation with sparsity for learning temporal dependency graphs, as validated on simulated and real-world datasets like age distributions and bike sharing data.

This paper is focused on the statistical analysis of data consisting of a collection of multiple series of probability measures that are indexed by distinct time instants and supported over a bounded interval of the real line. By modeling these time-dependent probability measures as random objects in the Wasserstein space, we propose a new auto-regressive model for the statistical analysis of multivariate distributional time series. Using the theory of iterated random function systems, results on the second order stationarity of the solution of such a model are provided. We also propose a consistent estimator for the auto-regressive coefficients of this model. Due to the simplex constraints that we impose on the model coefficients, the proposed estimator that is learned under these constraints, naturally has a sparse structure. The sparsity allows the application of the proposed model in learning a graph of temporal dependency from multivariate distributional time series. We explore the numerical performances of our estimation procedure using simulated data. To shed some light on the benefits of our approach for real data analysis, we also apply this methodology to two data sets, respectively made of observations from age distribution in different countries and those from the bike sharing network in Paris.

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