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depscope/conda/r-rlgt

r-rlgt

condav0.2_2

An implementation of a number of Global Trend models for time series forecasting that are Bayesian generalizations and extensions of some Exponential Smoothing models. The main differences/additions include 1) nonlinear global trend, 2) Student-t error distribution, and 3) a function for the error size, so heteroscedasticity. The methods are particularly useful for short time series. When tested on the well-known M3 dataset, they are able to outperform all classical time series algorithms. The models are fitted with MCMC using the 'rstan' package.

License GPL-3.0-only5 versions1 maintainers0 deps148 weekly dl
54
/ 100
Health
safe to use

[email protected]_2 is safe to use (health: 54/100)

Health breakdown0 – 100
15/25
maintenance
3/20
popularity
25/25
security
9/15
maturity
2/15
community
Vulnerabilities
0
none known

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First published · 2021-05-16 14:49:14.053000+00:00

Last updated · 2025-12-21 04:01:21.018000+00:00

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