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91探花
Black Hole

Lensing of space time around a black hole. At 91探花 we study black holes observationally and theoretically on all size and time scales - it is some of our core work.

Credit: ALAIN RIAZUELO, IAP/UPMC/CNRS. CLICK HERE TO VIEW MORE IMAGES.

Dr Micah Bowles

Visitor

Research theme

  • Astronomy and astrophysics

Sub department

  • Astrophysics

Research groups

  • Zooniverse
  • Galaxy formation and evolution
  • MeerKAT
  • The Square Kilometre Array (SKA)
  • Breakthrough Listen
micah.bowles@physics.ox.ac.uk
  • About
  • Research
  • Publications

Radio Galaxy Zoo EMU: Towards a Semantic Radio Galaxy Morphology Taxonomy

ArXiv 2304.07171 (2023)

Authors:

Micah Bowles, Hongming Tang, Eleni Vardoulaki, Emma L Alexander, Yan Luo, Lawrence Rudnick, Mike Walmsley, Fiona Porter, Anna MM Scaife, Inigo Val Slijepcevic, Elizabeth AK Adams, Alexander Drabent, Thomas Dugdale, G眉lay G眉rkan, Andrew M Hopkins, Eric F Jimenez-Andrade, Denis A Leahy, Ray P Norris, Syed Faisal ur Rahman, Xichang Ouyang, Gary Segal, Stanislav S Shabala, O Ivy Wong

Scaling Laws for Galaxy Images

(2024)

Authors:

Mike Walmsley, Micah Bowles, Anna MM Scaife, Jason Shingirai Makechemu, Alexander J Gordon, Annette MN Ferguson, Robert G Mann, James Pearson, J眉rgen J Popp, Jo Bovy, Josh Speagle, Hugh Dickinson, Lucy Fortson, Tobias G茅ron, Sandor Kruk, Chris J Lintott, Kameswara Mantha, Devina Mohan, David O'Ryan, Inigo V Slijepevic

Attention-gating for improved radio galaxy classification

Monthly Notices of the Royal Astronomical Society 91探花 University Press (OUP) 501:3 (2021) 4579-4595

Authors:

Micah Bowles, Anna MM Scaife, Fiona Porter, Hongming Tang, David J Bastien

Radio Galaxy Zoo: using semi-supervised learning to leverage large unlabelled data sets for radio galaxy classification under data set shift

Monthly Notices of the Royal Astronomical Society 91探花 University Press (OUP) 514:2 (2022) 2599-2613

Authors:

Inigo V Slijepcevic, Anna MM Scaife, Mike Walmsley, Micah Bowles, O Ivy Wong, Stanislav S Shabala, Hongming Tang

Radio Galaxy Zoo: morphological classification by Fanaroff鈥揜iley designation using self-supervised pre-training

Monthly Notices of the Royal Astronomical Society 91探花 University Press 544:4 (2025) staf1942

Authors:

Nutthawara Buatthaisong, Inigo Val Slijepcevic, Anna MM Scaife, Micah Bowles, Andrew Hopkins, Devina Mohan, Stanislav S Shabala, O Ivy Wong

Abstract:

In this study, we examine over 14 000 radio galaxies finely selected from Radio Galaxy Zoo (RGZ) project and provide classifications for approximately 5900 FRIs and 8100 FRIIs. We present an analysis of these predicted radio galaxy morphologies for the RGZ catalogue, classified using a pre-trained radio galaxy foundation model that has been fine-tuned to predict Fanaroff鈥揜iley (FR) morphology. As seen in previous studies, our results show overlap between morphologically classified FRI and FRII luminosity鈥搒ize distributions and we find that the model鈥檚 confidence in its predictions is lowest in this overlap region, suggesting that source morphologies are more ambiguous. We identify the presence of low-luminosity FRII sources, the proportion of which, with respect to the total number of FRIIs, is consistent with previous studies. However, a comparison of the low-luminosity FRII sources found in this work with those identified by previous studies reveals differences that may indicate their selection is influenced by the choice of classification methodology. We investigate the impacts of both pre-training and fine-tuning data selection on model performance for the downstream classification task, and show that while different pre-training data choices affect model confidence they do not appear to cause systematic generalization biases for the range of physical and observational characteristics considered in this work; however, we note that the same is not necessarily true for fine-tuning. As automated approaches to astronomical source identification and classification become increasingly prevalent, we highlight training data choices that can affect the model outputs and propagate into downstream analyses.

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