Invitation to a Public Lecture - Professor Edward Elson

The College of Agriculture, Engineering and Science

Discipline of Physics

Cordially invites you to a Public Lecture:

 

Date:              3 July 2026

Time:              11h00  

Venue:           Physics department computer LAN, Main Science Building, Level 2, UKZN Pietermaritzburg Campus

 

Speaker:        Professor Edward Elson, North-West University, South Africa

 

Title:              A Simple Neural-Network Bridge Between Galaxy Simulations and Surveys


Abstract: Stellar mass is one of the most important quantities used to understand how galaxies form and evolve, but it is not something that can be measured directly. It is usually inferred from galaxy light using detailed modelling, which can be computationally expensive and dependent on a range of assumptions about stellar populations, dust, and star-formation history.


In this presentation, Professor Elson offers a simpler approach: a deliberately lightweight, fully connected neural network developed from scratch to estimate galaxy stellar masses from broad-band photometry. Rather than using a deep or highly specialised architecture, the model uses a single hidden layer and learns directly from simulated galaxies produced by the SHARK semi-analytic model. Despite its simplicity, the network accurately recovers the known stellar masses of simulated galaxies across a wide mass range. To understand what the network has learned, an independently derived saliency-mapping method is used to identify which colours and magnitudes most strongly influence its predictions, showing that the model captures physically meaningful information in the input data.

To follow the method from simulation to observation, it is applied to real galaxies from the GAMA survey, reproducing stellar masses derived from conventional modelling with low scatter and only a small, correctable bias. It is also used to estimate masses for GAMA galaxies without existing stellar-mass measurements. 

Overall, the work demonstrates that simple, transparent machine-learning models can provide a practical bridge between theoretical galaxy simulations and large observational surveys.

Please refer to attachment for details. 

 


 

Attachments
ProfElson.pdf
Notice Details
Category Events
Posted 29 June 2026
By Sally Frost
Tel
From UKZN
Audience
Howard College Staff  Howard College Students 
Edgewood Staff  EdgWood Students 
Medical School Staff  Medical School Students 
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