Timezone: »
Hyperbolic space has become a popular choice of manifold for representation learning of various datatypes from tree-like structures and text to graphs. Building on the success of deep learning with prototypes in Euclidean and hyperspherical spaces, a few recent works have proposed hyperbolic prototypes for classification. Such approaches enable effective learning in low-dimensional output spaces and can exploit hierarchical relations amongst classes, but require privileged information about class labels to position the hyperbolic prototypes. In this work, we propose Hyperbolic Busemann Learning. The main idea behind our approach is to position prototypes on the ideal boundary of the Poincar\'{e} ball, which does not require prior label knowledge. To be able to compute proximities to ideal prototypes, we introduce the penalised Busemann loss. We provide theory supporting the use of ideal prototypes and the proposed loss by proving its equivalence to logistic regression in the one-dimensional case. Empirically, we show that our approach provides a natural interpretation of classification confidence, while outperforming recent hyperspherical and hyperbolic prototype approaches.
Author Information
Mina Ghadimi Atigh (University of Amsterdam)
Martin Keller-Ressel (TU Dresden)
Pascal Mettes (University of Amsterdam)
More from the Same Authors
-
2021 : Equidistant Hyperspherical Prototypes Improve Uncertainty Quantification »
Gertjan Burghouts · Pascal Mettes -
2022 : Self-Contained Entity Discovery from Captioned Videos »
melika ayoughi · Paul Groth · Pascal Mettes -
2022 : Hyperbolic Image Segmentation »
Mina Ghadimi Atigh · Julian Schoep · Erman Acar · Nanne van Noord · Pascal Mettes -
2022 : Maximum Class Separation as Inductive Bias in One Matrix »
Tejaswi Kasarla · Gertjan Burghouts · Max van Spengler · Elise van der Pol · Rita Cucchiara · Pascal Mettes -
2022 : Contributed talk (Mina Ghadimi Atigh) - "Hyperbolic Image Segmentation" »
Mina Ghadimi Atigh -
2022 Poster: Maximum Class Separation as Inductive Bias in One Matrix »
Tejaswi Kasarla · Gertjan Burghouts · Max van Spengler · Elise van der Pol · Rita Cucchiara · Pascal Mettes -
2019 Poster: Hyperspherical Prototype Networks »
Pascal Mettes · Elise van der Pol · Cees Snoek