This release fixes a bug with the decoder instantiation, and also allows users to set a random state for the model fitting and sampling.
- Update self.decoder with correct variable name - Issue #203 by @tejuafonja
- Add random state - Issue #204 by @katxiao
This release adds support for Python 3.9 and updates dependencies to ensure compatibility with the rest of the SDV ecosystem, and upgrades to the latests RDT release.
- Add support for Python 3.9 - Issue #177 by @pvk-developer
- Add pip check to CI workflows - Issue #174 by @pvk-developer
- Typo in
CTGAN
code - Issue #158 by @ori-katz100 and @fealho
Dependency upgrades to ensure compatibility with the rest of the SDV ecosystem.
In this release, the way in which the loss function of the TVAE model was computed has been fixed.
In addition, the default value of the discriminator_decay
has been changed to a more optimal
value. Also some improvements to the tests were added.
TVAE
: loss function - Issue #143 by @fealho and @DingfanChen- Set
discriminator_decay
to1e-6
- Pull request #145 by @fealho - Adds unit tests - Pull requests #140 by @fealho
This release exposes all the hyperparameters which the user may find useful for both CTGAN
and TVAE
. Also TVAE
can now be fitted on datasets that are shorter than the batch
size and drops the last batch only if the data size is not divisible by the batch size.
TVAE
: Adaptbatch_size
to data size - Issue #135 by @fealho and @csalaValueError
fromvalidate_discre_columns
withuniqueCombinationConstraint
- Issue 133 by @fealho and @MLjungg
Maintenance relese to upgrade dependencies to ensure compatibility with the rest of the SDV libraries.
Also add a validation on the CTGAN condition_column
and condition_value
inputs.
- Validate condition_column and condition_value - Issue #124 by @fealho
- Check discrete_columns valid before fitting - Issue #35 by @fealho
- ValueError: max() arg is an empty sequence - Issue #115 by @fealho
In this release we add a new TVAE model which was presented in the original CTGAN paper. It also exposes more hyperparameters and moves epochs and log_frequency from fit to the constructor.
A new verbose argument has been added to optionally disable unnecessary printing, and a new hyperparameter
called discriminator_steps
has been added to CTGAN to control the number of optimization steps performed
in the discriminator for each generator epoch.
The code has also been reorganized and cleaned up for better readability and interpretability.
Special thanks to @Baukebrenninkmeijer @fealho @leix28 @csala for the contributions!
- Add TVAE - Issue #111 by @fealho
- Move
log_frequency
to__init__
- Issue #102 by @fealho - Add discriminator steps hyperparameter - Issue #101 by @Baukebrenninkmeijer
- Code cleanup / Expose hyperparameters - Issue #59 by @fealho and @leix28
- Publish to conda repo - Issue #54 by @fealho
- Fixed NaN != NaN counting bug. - Issue #100 by @fealho
- Update dependencies and testing - Issue #90 by @csala
In this release we introduce several minor improvements to make CTGAN more versatile and propertly support new types of data, such as categorical NaN values, as well as conditional sampling and features to save and load models.
Additionally, the dependency ranges and python versions have been updated to support up to date runtimes.
Many thanks @fealho @leix28 @csala @oregonpillow and @lurosenb for working on making this release possible!
- Drop Python 3.5 support - Issue #79 by @fealho
- Support NaN values in categorical variables - Issue #78 by @fealho
- Sample synthetic data conditioning on a discrete column - Issue #69 by @leix28
- Support recent versions of pandas - Issue #57 by @csala
- Easy solution for restoring original dtypes - Issue #26 by @oregonpillow
- Loss to nan - Issue #73 by @fealho
- Swapped the sklearn utils testing import statement - Issue #53 by @lurosenb
Minor version including changes to ensure the logs are properly printed and the option to disable the log transformation to the discrete column frequencies.
Special thanks to @kevinykuo for the contributions!
- Option to sample from true data frequency instead of logged frequency - Issue #16 by @kevinykuo
- Flush stdout buffer for epoch updates - Issue #14 by @kevinykuo
Reorganization of the project structure with a new Python API, new Command Line Interface and increased data format support.
- Reorganize the project structure - Issue #10 by @csala
- Move epochs to the fit method - Issue #5 by @csala
First Release - NeurIPS 2019 Version.