alibi icon indicating copy to clipboard operation
alibi copied to clipboard

Algorithms for explaining machine learning models

Results 160 alibi issues
Sort by recently updated
recently updated
newest added

Updates the requirements on [numba](https://github.com/numba/numba) to permit the latest version. Release notes Sourced from numba's releases. Version 0.56.0 This release continues to add new features, bug fixes and stability improvements...

dependencies

Hi, I was wondering if it is possible to plot a Confidence Interval around the ALE plots? I'm looking for something similar to the confidence interval implemented in PyALE.

Type: Method extension
Priority: Medium

I have trained an Autoencoder classifier and I am trying to get SHAP computations to run on multiple CPUs. However, I get an exception as follows - > TypeError: can't...

Type: Bug
Type: HPC
internal-mle
Priority: Medium
Blocked

In `AnchorImage` the channel dimension is assumed to be the last dimension as defined [here](https://github.com/SeldonIO/alibi/blob/ab7dbf9b2a153ff49f29a372d5bdeac56dc7284a/alibi/explainers/anchor_image.py#L235). This is not necessarily true, for example in mnist handwritten pytorch model the shape of...

Type: API
Priority: Medium

* Addresses issue https://github.com/SeldonIO/alibi/issues/687 . * Changed storage file format from joblib to tar.gz notes: In order to load .npy files from a tar archive, the changed function uses the...

Bump transformers to 4.16.0 in the future to be able to use `numpy` arrays in [Integrated Gradients transformers example](https://github.com/SeldonIO/alibi/blob/master/doc/source/examples/integrated_gradients_transformers.ipynb).

Priority: Low
Effort: XS

[sklearn.preprocessing.OneHotEncoder](https://scikit-learn.org/stable/modules/classes.html#module-sklearn.preprocessing) exposes multiple parameters such as: `drop`, `handle_unknown`, etc. which are useful to avoid overparametrisation (e.g. overparametrisation of binary variables, dummy trap for linear regression etc.) or handle unknown values....

Type: Design
Effort: L

Interventional TreeSHAP works properly with only up to 100 instances in the background dataset. This issue has been previously reported [here](https://github.com/slundberg/shap/issues/2487) and [here](https://github.com/slundberg/shap/issues/1991), mentioning what is the potential cause of...

Priority: Low
TreeShap

The `test_save_cfrl` test in `alibi/tests/saving.py` has started failing intermittently. This seems to have started occurring as a result of a change in a dependency as the error could not be...

Type: Bug
Priority: Low

The `test_abdm_mvdm` infrequently fails due to the distance returned by one of `abdm` or `mvdm` being less than 0.

Type: Bug