Skip to content

Complementary code for my thesis on active learning for imbalanced data sets

Notifications You must be signed in to change notification settings

flipflop97/imbalanced-active-learning

Repository files navigation

Imbalanced Active Learning

Supplementary code for my thesis on active learning for imbalanced data sets. This framework contains code to run and compare different active learning methods on different datasets to be able to compare them.

Environment

For replicating experiments with the originally used library versions, import the stable environment:

$ conda env create -f conda_env_stable.yml

For continuation of work on this framework with the newest library versions, import the rolling environment:

$ conda env create -f conda_env_rolling.yml

Running

Experiments can be executed using main.py, datasets will be downloaded automatically. Parameters can be set via command line parameters, check the help for available parameters:

$ ./main.py --help

About

Complementary code for my thesis on active learning for imbalanced data sets

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages