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Feature Learning for High-dimensional Functional Time Series. This project aims to develop new methods and theories for common features on high-dimensional functional time series observed in empirical

The Australian National University — Discovery Projects
Amount
Up to $391,223
Closes
Saturday 12 September 2026
Status
unknown
Type
open opportunity
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Description

Feature Learning for High-dimensional Functional Time Series. This project aims to develop new methods and theories for common features on high-dimensional functional time series observed in empirical applications. The significance includes addressing a key gap in adaptive and efficient feature learning, improving forecasting accuracy and understanding forecasting-driven factors comprehensively for empirical data. Expected outcomes involve advances in big data theory and easy-to-implement algorithms for applied researchers. This project benefits not only advanced manufacturing by finding optimal stopping time for wood panel compression, but also superior forecasting for mortality in demography, climate data in environmental science, asset returns in finance, and electricity consumption in economics. . Scheme: Discovery Projects. Field: 4905 - Statistics. Lead: A/Prof Yanrong Yang

Categories
regenerativeenterpriseeducation
Target Recipients
researchersuniversities

Foundations Supporting This Area

Discovery method: arc-grants
Last verified: Monday 2 March 2026
Added: Saturday 28 February 2026