DeepAI AI Chat
Log In Sign Up

Neural Embedding: Learning the Embedding of the Manifold of Physics Data

08/10/2022
by   Sang Eon Park, et al.
0

In this paper, we present a method of embedding physics data manifolds with metric structure into lower dimensional spaces with simpler metrics, such as Euclidean and Hyperbolic spaces. We then demonstrate that it can be a powerful step in the data analysis pipeline for many applications. Using progressively more realistic simulated collisions at the Large Hadron Collider, we show that this embedding approach learns the underlying latent structure. With the notion of volume in Euclidean spaces, we provide for the first time a viable solution to quantifying the true search capability of model agnostic search algorithms in collider physics (i.e. anomaly detection). Finally, we discuss how the ideas presented in this paper can be employed to solve many practical challenges that require the extraction of physically meaningful representations from information in complex high dimensional datasets.

READ FULL TEXT
05/03/2018

Anomaly and Change Detection in Graph Streams through Constant-Curvature Manifold Embeddings

Mapping complex input data into suitable lower dimensional manifolds is ...
05/08/2020

Tree! I am no Tree! I am a Low Dimensional Hyperbolic Embedding

Given data, finding a faithful low-dimensional hyperbolic embedding of t...
07/05/2020

Overlaying Spaces and Practical Applicability of Complex Geometries

Recently, non-Euclidean spaces became popular for embedding structured d...
02/17/2021

Switch Spaces: Learning Product Spaces with Sparse Gating

Learning embedding spaces of suitable geometry is critical for represent...
03/28/2023

Online embedding of metrics

We study deterministic online embeddings of metrics spaces into normed s...
07/02/2019

Learning graph-structured data using Poincaré embeddings and Riemannian K-means algorithms

Recent literature has shown several benefits of hyperbolic embedding of ...
03/03/2022

Topological data analysis of truncated contagion maps

The investigation of dynamical processes on networks has been one focus ...