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Reconstructing Cosmic History with Machine Learning: A Study Using CART, MLPR, and SVR

Reconstructing Cosmic History with Machine Learning: A Study Using CART, MLPR, and SVR

来源:Arxiv_logoArxiv
英文摘要

In this work, we reconstruct cosmic history via supervised learning through three methods: Classification and Regression Trees (CART), Multi-layer Perceptron Regressor (MLPR), and Support Vector Regression (SVR). For this purpose, we use ages of simulated galaxies based on 32 massive, early-time, passively evolving galaxies in the range $0.12 < z < 1.85$, with absolute ages determined. Using this sample, we simulate subsamples of 100, 1000, 2000, 3334, 6680 points, through the Monte Carlo Method and adopting a Gaussian distribution centering on a spatially flat $\Lambda$CDM as a fiducial model. We found that the SVR method demonstrates the best performance during the process. The methods MLPR and CART also present satisfactory performance, but their mean square errors are greater than those found for the SVR. Using the reconstructed ages, we estimate the matter density parameter and equation of state (EoS) and our analysis found the SVR with 600 predict points obtains $\Omega_m=0.329\pm{}^{0.010}_{0.010}$ and the dark energy EoS parameter $\omega= -1.054\pm{}^{0.087}_{0.126}$, which are consistent with the values from the literature. We highlight that we found the most consistent results for the subsample with 2000 points, which returns 600 predicted points and has the best performance, considering its small sample size and high accuracy. We present the reconstructed curves of galaxy ages and the best fits cosmological parameters.

Agripino Sousa-Neto、Maria Aldinez Dantas

天文学

Agripino Sousa-Neto,Maria Aldinez Dantas.Reconstructing Cosmic History with Machine Learning: A Study Using CART, MLPR, and SVR[EB/OL].(2025-05-22)[2025-06-15].https://arxiv.org/abs/2505.17205.点此复制

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