Convolutional Vision Transformer for Cosmology Parameter Inference
Parameter inference is a crucial task in modern cosmology that requires accurate and fast computational methods to handle the high precision and volume of observational datasets. In this study, we explore a hybrid vision transformer, the Convolution vision Transformer (CvT), which combines the benef...
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Zusammenfassung: | Parameter inference is a crucial task in modern cosmology that requires
accurate and fast computational methods to handle the high precision and volume
of observational datasets. In this study, we explore a hybrid vision
transformer, the Convolution vision Transformer (CvT), which combines the
benefits of vision transformers and convolutional neural networks. We use this
approach to infer the $\Omega_m$ and $\sigma_8$ cosmological parameters from
simulated dark matter and halo fields. Our experiments indicate that the
constraints on $\Omega_m$ and $\sigma_8$ obtained using CvT are better than the
traditional vision transformer (ViT) and CNN, using either dark matter or halo
fields. For CvT, pretraining on dark matter fields proves advantageous for
improving constraints using halo fields compared to training a model from the
beginning. However, ViT and CNN do not show these benefits. The CvT is more
efficient than ViT since, despite having more parameters, it requires a
training time similar to that of ViT and has similar inference times. The code
is available at \url{https://github.com/Yash-10/cvt-cosmo-inference/}. |
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DOI: | 10.48550/arxiv.2411.14392 |