2021
DOI: 10.48550/arxiv.2110.14011
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Cluster-and-Conquer: A Framework For Time-Series Forecasting

Abstract: We propose a three-stage framework for forecasting high-dimensional time-series data. Our method first estimates parameters for each univariate time series. Next, we use these parameters to cluster the time series. These clusters can be viewed as multivariate time series, for which we then compute parameters. The forecasted values of a single time series can depend on the history of other time series in the same cluster, accounting for intra-cluster similarity while minimizing potential noise in predictions by… Show more

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