Wasserstein multivariate auto-regressive models for modeling distributional time series
- URL: http://arxiv.org/abs/2207.05442v3
- Date: Fri, 30 Aug 2024 14:11:08 GMT
- Title: Wasserstein multivariate auto-regressive models for modeling distributional time series
- Authors: Yiye Jiang, Jérémie Bigot,
- Abstract summary: We propose a new auto-regressive model for the statistical analysis of multivariate distributional time series.
Results on the existence, uniqueness and stationarity of the solution of such a model are provided.
To shed some light on the benefits of our approach for real data analysis, we also apply this methodology to a data set made of observations from age distribution in different countries.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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 existence, uniqueness and 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 a data set made of observations from age distribution in different countries.
Related papers
- Convergence of Score-Based Discrete Diffusion Models: A Discrete-Time Analysis [56.442307356162864]
We study the theoretical aspects of score-based discrete diffusion models under the Continuous Time Markov Chain (CTMC) framework.
We introduce a discrete-time sampling algorithm in the general state space $[S]d$ that utilizes score estimators at predefined time points.
Our convergence analysis employs a Girsanov-based method and establishes key properties of the discrete score function.
arXiv Detail & Related papers (2024-10-03T09:07:13Z) - Score-based Continuous-time Discrete Diffusion Models [102.65769839899315]
We extend diffusion models to discrete variables by introducing a Markov jump process where the reverse process denoises via a continuous-time Markov chain.
We show that an unbiased estimator can be obtained via simple matching the conditional marginal distributions.
We demonstrate the effectiveness of the proposed method on a set of synthetic and real-world music and image benchmarks.
arXiv Detail & Related papers (2022-11-30T05:33:29Z) - Benign Overfitting in Time Series Linear Model with
Over-Parameterization [5.68558935178946]
We develop a theory for excess risk of the estimator under multiple dependence types.
We show that the convergence rate of risks with short-memory processes is identical to that of cases with independent data.
arXiv Detail & Related papers (2022-04-18T15:26:58Z) - TACTiS: Transformer-Attentional Copulas for Time Series [76.71406465526454]
estimation of time-varying quantities is a fundamental component of decision making in fields such as healthcare and finance.
We propose a versatile method that estimates joint distributions using an attention-based decoder.
We show that our model produces state-of-the-art predictions on several real-world datasets.
arXiv Detail & Related papers (2022-02-07T21:37:29Z) - Bayesian Regression Approach for Building and Stacking Predictive Models
in Time Series Analytics [0.0]
The paper describes the use of Bayesian regression for building time series models and stacking different predictive models for time series.
It makes it possible to estimate an uncertainty of time series prediction and calculate value at risk characteristics.
arXiv Detail & Related papers (2022-01-06T12:58:23Z) - Sampling from Arbitrary Functions via PSD Models [55.41644538483948]
We take a two-step approach by first modeling the probability distribution and then sampling from that model.
We show that these models can approximate a large class of densities concisely using few evaluations, and present a simple algorithm to effectively sample from these models.
arXiv Detail & Related papers (2021-10-20T12:25:22Z) - Anomaly Detection of Time Series with Smoothness-Inducing Sequential
Variational Auto-Encoder [59.69303945834122]
We present a Smoothness-Inducing Sequential Variational Auto-Encoder (SISVAE) model for robust estimation and anomaly detection of time series.
Our model parameterizes mean and variance for each time-stamp with flexible neural networks.
We show the effectiveness of our model on both synthetic datasets and public real-world benchmarks.
arXiv Detail & Related papers (2021-02-02T06:15:15Z) - Time Adaptive Gaussian Model [0.913755431537592]
Our model is a generalization of state-of-the-art methods for the inference of temporal graphical models.
It performs pattern recognition by clustering data points in time; and, it finds probabilistic (and possibly causal) relationships among the observed variables.
arXiv Detail & Related papers (2021-02-02T00:28:14Z) - Autoregressive Denoising Diffusion Models for Multivariate Probabilistic
Time Series Forecasting [4.1573460459258245]
We use diffusion probabilistic models, a class of latent variable models closely connected to score matching and energy-based methods.
Our model learns gradients by optimizing a variational bound on the data likelihood and at inference time converts white noise into a sample of the distribution of interest.
arXiv Detail & Related papers (2021-01-28T15:46:10Z) - Instability, Computational Efficiency and Statistical Accuracy [101.32305022521024]
We develop a framework that yields statistical accuracy based on interplay between the deterministic convergence rate of the algorithm at the population level, and its degree of (instability) when applied to an empirical object based on $n$ samples.
We provide applications of our general results to several concrete classes of models, including Gaussian mixture estimation, non-linear regression models, and informative non-response models.
arXiv Detail & Related papers (2020-05-22T22:30:52Z) - Multivariate Probabilistic Time Series Forecasting via Conditioned
Normalizing Flows [8.859284959951204]
Time series forecasting is fundamental to scientific and engineering problems.
Deep learning methods are well suited for this problem.
We show that it improves over the state-of-the-art for standard metrics on many real-world data sets.
arXiv Detail & Related papers (2020-02-14T16:16:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.