Abstract

Our modern understanding of cosmological structure formation posits that small matter density fluctuations present in the early Universe, as traced by the cosmic microwave background, grow via gravitational instability to form extended haloes of dark matter. A theoretical understanding of the structure, evolution and formation of dark matter haloes is an essential step towards unravelling the intricate connection between halo and galaxy formation, needed to test our cosmological model against data from upcoming galaxy surveys. Physical understanding of the process of dark matter halo formation is made difficult by the highly non-linear nature of the haloes' evolution. I describe a new approach to gain physical insight into cosmological structure formation based on machine learning. This approach combines the ability of machine learning algorithms to learn non-linear relationships, with techniques that enable us to physically interpret the learnt mapping. I describe applications of the method, with the aim of investigating which aspects of the early universe density field impact the later formation of dark matter haloes. First I present a case where the process of halo formation is turned into a binary classification problem; the algorithm predicts whether or not dark matter `particles' in the initial conditions of a simulation will collapse into haloes of a given mass range. Second, I present its generalization to regression, where the algorithm infers the final mass of the halo to which each particle will later belong. I show that the initial tidal shear does not play a significant role compared to the initial density field in establishing final halo masses. Finally, I demonstrate that extending the framework to deep learning algorithms such as convolutional neural networks allows us to explore connections between the early universe and late time haloes beyond those studied by existing analytic approximations of halo collapse.

Highlights

  • 1.1 The UniverseThe field of modern cosmology, studying the origin and evolution of our Universe as a whole, began with the discovery of the expansion of the Universe in 1929 (Hubble 1929)

  • When the algorithm was trained on spherical overdensities from the linear density field, we found that it matched predictions based on extended Press-Schechter (EPS) theory

  • The fact that the ST halo mass function improves the EPS halo mass function may not be due to the addition of tidal shear information, but rather some other physical effects captured by calibrating the free parameters in the halo mass function to the simulations

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Summary

Introduction

1.1 The UniverseThe field of modern cosmology, studying the origin and evolution of our Universe as a whole, began with the discovery of the expansion of the Universe in 1929 (Hubble 1929). Combined with excursion set theory, this ansatz provides a tool to analytically predict the final halo mass of an initially overdense region This can be used to infer useful quantitites such as the abundance of dark matter haloes in the Universe, or the halo mass function, based on properties of a Gaussian random field alone (Bond and Myers 1996; Bond et al 1991; Press and Schechter 1974). Previous studies have provided a qualitative understanding of halo formation by using simple analytic models that require restrictive assumptions about the physical processes involved, such as spherical or ellipsoidal collapse, and are implemented in the context of excursion set theories (Bond and Myers 1996; Bond et al 1991; Doroshkevich 1970; Press and Schechter 1974). This approach is limited by the need for feature extraction, a step required by most standard machine learning algorithms; in order to propose a set of informative features, we must rely on our current understanding of halo formation based on simplified and incomplete analytic approximations of halo collapse

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