diff --git a/README.md b/README.md index 496f8d4c..b283dddc 100644 --- a/README.md +++ b/README.md @@ -230,6 +230,8 @@ Want to know more ? Check the [PyTorch documentation](https://deel-ai.github.io/ There are 4 modules in Xplique, [Attribution methods](https://deel-ai.github.io/xplique/latest/api/attributions/api_attributions/), [Attribution metrics](https://deel-ai.github.io/xplique/latest/api/attributions/metrics/api_metrics/), [Concepts](https://deel-ai.github.io/xplique/latest/api/concepts/cav/), and [Feature visualization](https://deel-ai.github.io/xplique/latest/api/feature_viz/feature_viz/). In particular, the attribution methods module supports a huge diversity of tasks for diverse data types: [Classification](https://deel-ai.github.io/xplique/latest/api/attributions/classification/), [Regression](https://deel-ai.github.io/xplique/latest/api/attributions/regression/), [Object Detection](https://deel-ai.github.io/xplique/latest/api/attributions/object_detection/), and [Semantic Segmentation](https://deel-ai.github.io/xplique/latest/api/attributions/semantic_segmentation/). The methods compatible with such task are highlighted in the following table: +# TEST TABLE, TODO remove + | **Attribution Method** | Type of Model | Source | Tabular Data | Images | Time-Series | | :--------------------- | :----------------------- | :---------------------------------------- | :----------: | :----------------- : | :---------: | | Deconvolution | TF | [Paper](https://arxiv.org/abs/1311.2901) | C:✔️, R:✔️ | C:✔️, OD:❌, SS:❌ | 🔵 | @@ -241,6 +243,22 @@ There are 4 modules in Xplique, [Attribution methods](https://deel-ai.github.io/ | Deconvolution | TF | [Paper](https://arxiv.org/abs/1311.2901) | C:Y, R:Y | C:Y, OD:N, SS:N | WIP | | Grad-CAM | TF | [Paper](https://arxiv.org/abs/1610.02391) | N | C:Y, OD:N, SS:N | N | +| **Attribution Method** | Type of Model | Source | Tabular Data | Images | Time-Series | +| :--------------------- | :----------------------- | :---------------------------------------- | :----------: | :----------------- : | :---------: | +| Deconvolution | TF | [Paper](https://arxiv.org/abs/1311.2901) | C✔️, R✔️ | C✔️, OD❌, SS❌ | 🔵 | +| Grad-CAM | TF | [Paper](https://arxiv.org/abs/1610.02391) | ❌ | C✔️, OD❌, SS❌ | ❌ | + +| **Attribution Method** | Type of Model | Source | Tabular Data | Images | Time-Series | +| :--------------------- | :----------------------- | :---------------------------------------- | :----------: | :----------------- : | :---------: | +| Deconvolution | TF | [Paper](https://arxiv.org/abs/1311.2901) | C✔️ R✔️ | C✔️ OD❌ SS❌ | 🔵 | +| Grad-CAM | TF | [Paper](https://arxiv.org/abs/1610.02391) | ❌ | C✔️ OD❌ SS❌ | ❌ | + + +| **Attribution Method** | Type of Model | Source | +| :--------------------- | :----------------------- | :---------------------------------------- | +| Deconvolution | TF | [Paper](https://arxiv.org/abs/1311.2901) | +| Grad-CAM | TF | [Paper](https://arxiv.org/abs/1610.02391) | +
Table of attributions available