Mapping complex input data into suitable lower dimensional manifolds is a common procedure in machine learning. This step is beneficial mainly for two reasons: (1) it reduces the data dimensionality and (2) it provides a new data representation possibly characterised by convenient geometric properties. Euclidean spaces are by far the most widely used embedding spaces, thanks to their well-understood structure and large availability of consolidated inference methods. However, recent research demonstrated that many types of complex data (e.g., those represented as graphs) are actually better described by non-Euclidean geometries. Here, we investigate how embedding graphs on constant-curvature manifolds (hyper-spherical and hyperbolic manifold...
Graph representations offer powerful and intuitive ways to describe data in a multitude of applicati...
An important research topic of the recent years has been to understand and analyze manifold-modeled ...
First version. The package generating the experimental results will be made public in the near futur...
Mapping complex input data into suitable lower dimensional manifolds is a common procedure in machin...
The space of graphs is often characterized by a nontrivial geometry, which complicates learning and ...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
Representing graphs as sets of node embeddings in certain curved Riemannian manifolds has recently g...
Learning low-dimensional embeddings of graph data in curved Riemannian manifolds has gained traction...
Learning a latent embedding to understand the underlying nature of data distribution is often formul...
Dimensionality reduction techniques such as t-SNE and UMAP are useful both for overview of high-dime...
Manifold learning and finding low-dimensional structure in data is an important task. Many algorithm...
Defining the geometry of networks is typically associated with embedding in low-dimensional spaces s...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
Many computer vision and pattern recognition problems may be posed as the analysis of a set of {\bf ...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
Graph representations offer powerful and intuitive ways to describe data in a multitude of applicati...
An important research topic of the recent years has been to understand and analyze manifold-modeled ...
First version. The package generating the experimental results will be made public in the near futur...
Mapping complex input data into suitable lower dimensional manifolds is a common procedure in machin...
The space of graphs is often characterized by a nontrivial geometry, which complicates learning and ...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
Representing graphs as sets of node embeddings in certain curved Riemannian manifolds has recently g...
Learning low-dimensional embeddings of graph data in curved Riemannian manifolds has gained traction...
Learning a latent embedding to understand the underlying nature of data distribution is often formul...
Dimensionality reduction techniques such as t-SNE and UMAP are useful both for overview of high-dime...
Manifold learning and finding low-dimensional structure in data is an important task. Many algorithm...
Defining the geometry of networks is typically associated with embedding in low-dimensional spaces s...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
Many computer vision and pattern recognition problems may be posed as the analysis of a set of {\bf ...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
Graph representations offer powerful and intuitive ways to describe data in a multitude of applicati...
An important research topic of the recent years has been to understand and analyze manifold-modeled ...
First version. The package generating the experimental results will be made public in the near futur...