Journal
PSYCHOMETRIKA
Volume 87, Issue 2, Pages 1-29Publisher
SPRINGER
DOI: 10.1007/s11336-021-09825-7
Keywords
ILD; forecasting; time series; regularization; LASSO; proximal gradient descent; vector autoregression
Categories
Funding
- NSF [DMS-1712966]
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Intensive longitudinal data (ILD) is a common data type in social and behavioral sciences, but its potential for forecasting individual-level dynamic processes has not been fully explored. We propose a novel methodological approach, the multi-VAR framework, which can estimate models for multiple individuals simultaneously and adaptively adjust to individual heterogeneity. We introduce a new proximal gradient descent algorithm to solve the multi-VAR problem and prove the consistency of the recovered transition matrices. We evaluate the forecasting performance of our method compared to benchmark methods using a case study of the daily emotional experiences of 16 individuals over 11 weeks.
Intensive longitudinal data (ILD) is an increasingly common data type in the social and behavioral sciences. Despite the many benefits these data provide, little work has been dedicated to realize the potential such data hold for forecasting dynamic processes at the individual level. To address this gap in the literature, we present the multi-VAR framework, a novel methodological approach allowing for penalized estimation of ILD collected from multiple individuals. Importantly, our approach estimates models for all individuals simultaneously and is capable of adaptively adjusting to the amount of heterogeneity present across individual dynamic processes. To accomplish this, we propose a novel proximal gradient descent algorithm for solving the multi-VAR problem and prove the consistency of the recovered transition matrices. We evaluate the forecasting performance of our method in comparison with a number of benchmark methods and provide an illustrative example involving the day-to-day emotional experiences of 16 individuals over an 11-week period.
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