The Clustering of Little Red Dots from Ultra-Strongly Self-Interacting Dark Matter
Abstract
We predict the effective clustering bias parameter, beff, at z5 for Little Red Dots (LRDs) seeded by Ultra-Strongly Self-Interacting Dark Matter (uSIDM). From our model, we find that beff4.5, thus we infer that LRDs seeded by uSIDM would populate halos of typical masses 8×1010~M; this bias factor is consistent with LRDs being a distinct population from high redshift quasars. To the extent that we are aware, this is the first formation-based theoretical prediction of LRD clustering from a model consistent with the LRD mass function. We find that this bias and clustering is insensitive to a wide range of the underlying uSIDM microphysics parameters, including the uSIDM cross-section σ/m and uSIDM fraction f. This is therefore a robust prediction from the uSIDM model, and will allow for direct probes of the uSIDM paradigm as the origin of LRDs in the next few years. Upcoming JWST observations will constrain the population of LRDs, including directly measuring their clustering.
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