This paper presents a novel topology-aware dimensionality reduction approach aiming at accurately visualizing the cyclic patterns present in high dimensional data. To that end, we build on the Topological Autoencoders (TopoAE) formulation. First, we provide a novel theoretical analysis of its associated loss and show that a zero loss indeed induces identical persistence pairs (in high and low dimensions) for the -dimensional persistent homology (PH) of the Rips filtration. We also provide a counter example showing that this property no longer holds for a naive extension of TopoAE to PH for . Based on this observation, we introduce a novel generalization of TopoAE to -dimensional persistent homology (PH), called TopoAE++, for the accurate generation of cycle-aware planar embeddings, addressing the above failure case. This generalization is based on the notion of cascade distortion, a new penalty term favoring an isometric embedding of the -chains filling persistent -cycles, hence resulting in more faithful geometrical reconstructions of the -cycles in the plane. We further introduce a novel, fast algorithm for the exact computation of PH for Rips filtrations in the plane, yielding improved runtimes over previously documented topology-aware methods. Our method also achieves a better balance between the topological accuracy, as measured by the Wasserstein distance, and the visual preservation of the cycles in low dimensions. Our C++ implementation is available atthis https URL.
View on arXiv@article{clémot2025_2502.20215, title={ Topological Autoencoders++: Fast and Accurate Cycle-Aware Dimensionality Reduction }, author={ Mattéo Clémot and Julie Digne and Julien Tierny }, journal={arXiv preprint arXiv:2502.20215}, year={ 2025 } }