(Takada & Fujisawa, 2020, NeurIPS) proposed a method for transferring knowledge from a source domain to a target domain via
To install the package:
# install.packages("remotes")
remotes::install_github("tkdmah/trlasso", build_vignettes = TRUE, dependencies = TRUE)
To learn how to use:
vignette("example_linear", package = "trlasso")
vignette("example_linear_weight", package = "trlasso")
File | Description |
---|---|
vignettes/example_linear.Rmd | Sample script for Transfer Lasso |
vignettes/example_linear_weight.Rmd | Sample script for Weighted Transfer Lasso |
To replicate the experiments in (Takada & Fujisawa, 2023, arXiv):
File | Description |
---|---|
inst/experiments/empirical_convergence.Rmd | Experiment script for evaluating estimation errors with respect to sample size |
inst/experiments/empirical_phase_diagram.Rmd | Experiment script for drawing empirical phase diagrams |
inst/experiments/method_comparison_large.Rmd | Experiment script for comparing several methods using a large amount of source data (Note: time-consuming) |
inst/experiments/method_comparison_medium.Rmd | Experiment script for comparing several methods using a medium amount of source data (Note: time-consuming) |
- Takada, M., & Fujisawa, H. (2020). Transfer Learning via $\ell_1$ Regularization. Advances in Neural Information Processing Systems, 33, 14266-14277.
- Takada, M., & Fujisawa, H. (2023). Adaptive Lasso, Transfer Lasso, and Beyond: An Asymptotic Perspective. arXiv preprint arXiv:2308.15838.
- Masaaki Takada (Toshiba Corporation)
- Gen Li (Toshiba Corporation)
- Sunao Yotsutsuji (Toshiba Corporation)