Model Agnostic Time Series Analysis via Matrix Estimation
Anish Agarwal, Muhammad Jehangir Amjad, Devavrat Shah, Dennis Shen

TL;DR
This paper introduces a model-agnostic matrix estimation approach for time series imputation and forecasting, leveraging low-rank matrix representations to handle missing data and noise effectively, with rigorous theoretical guarantees and practical superiority.
Contribution
It generalizes SSA by using a Page matrix structure, providing finite sample analysis, and enabling noise-agnostic, model-free time series analysis with theoretical and empirical validation.
Findings
Outperforms standard software in missing data scenarios
Provides finite sample and asymptotic guarantees
Works effectively with noisy, partial observations
Abstract
We propose an algorithm to impute and forecast a time series by transforming the observed time series into a matrix, utilizing matrix estimation to recover missing values and de-noise observed entries, and performing linear regression to make predictions. At the core of our analysis is a representation result, which states that for a large model class, the transformed time series matrix is (approximately) low-rank. In effect, this generalizes the widely used Singular Spectrum Analysis (SSA) in time series literature, and allows us to establish a rigorous link between time series analysis and matrix estimation. The key to establishing this link is constructing a Page matrix with non-overlapping entries rather than a Hankel matrix as is commonly done in the literature (e.g., SSA). This particular matrix structure allows us to provide finite sample analysis for imputation and prediction,…
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Taxonomy
TopicsStatistical and numerical algorithms · Leaf Properties and Growth Measurement
