Multi-dimensional concept discovery (MCD): A unifying framework with completeness guarantees
About
The completeness axiom renders the explanation of a post-hoc XAI method only locally faithful to the model, i.e. for a single decision. For the trustworthy application of XAI, in particular for high-stake decisions, a more global model understanding is required. Recently, concept-based methods have been proposed, which are however not guaranteed to be bound to the actual model reasoning. To circumvent this problem, we propose Multi-dimensional Concept Discovery (MCD) as an extension of previous approaches that fulfills a completeness relation on the level of concepts. Our method starts from general linear subspaces as concepts and does neither require reinforcing concept interpretability nor re-training of model parts. We propose sparse subspace clustering to discover improved concepts and fully leverage the potential of multi-dimensional subspaces. MCD offers two complementary analysis tools for concepts in input space: (1) concept activation maps, that show where a concept is expressed within a sample, allowing for concept characterization through prototypical samples, and (2) concept relevance heatmaps, that decompose the model decision into concept contributions. Both tools together enable a detailed understanding of the model reasoning, which is guaranteed to relate to the model via a completeness relation. This paves the way towards more trustworthy concept-based XAI. We empirically demonstrate the superiority of MCD against more constrained concept definitions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Object Classification | Caltech-101 (test) | SURFMAE2.6 | 7 | |
| Multi-attribute prediction | CelebA (test) | SURFMAE2.83 | 6 | |
| Object Classification | ImageNet InceptionV3 (test) | SURF MAE2.76 | 6 | |
| Object Classification | Food-101 | SURF MAE1.95 | 6 |