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Add the sigma value calculation
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@ -19,6 +19,9 @@ the final snapshot.
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from math import floor
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import numpy
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from scipy.interpolate import interp1d
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from scipy.stats import kstest
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from scipy.special import erfinv
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from numba import jit
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from tqdm import tqdm
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@ -236,6 +239,58 @@ class NearestNeighbourReader:
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out /= out[:, -1].reshape(-1, 1)
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return out
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def calc_significance(self, simname, run, nsim, cdf, nobs=None):
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"""
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Calculate the significance of the nearest neighbour distribution of a
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reference halo relative to an unconstrained simulation.
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Parameters
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----------
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simname : str
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Simulation name. Must be either `csiborg` or `quijote`.
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run : str
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Run name.
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nsim : int
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Simulation index.
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cdf : 2-dimensional array of shape `(nbins_radial, nbins_neighbour)`
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CDF of the nearest neighbour distribution in an unconstrained
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suite of simiulations.
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nobs : int, optional
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Fiducial Quijote observer index.
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Returns
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-------
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sigma : 1-dimensional array of shape `(nhalos,)`
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Significance of the nearest neighbour distribution of each halo.
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"""
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assert simname in ["csiborg", "quijote"]
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data = self.read_single(simname, run, nsim, nobs)
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rdist = data["rdist"]
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ndist = data["ndist"]
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rbin_edges = self.radial_bin_edges
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# Create an interpolation function for each radial bin.
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xbin = self.bin_centres("neighbour")
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kwargs = {"bounds_error": False,
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"fill_value": numpy.nan,
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"assume_sorted": True}
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N = self.nbins_radial
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cdf_interp = [interp1d(xbin, cdf[i, :], **kwargs) for i in range(N)]
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# We loop over each halo and find its radial bin. Then calculate the
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# p-value under null hypothesis and convert it to a sigma value.
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out = numpy.full(rdist.size, numpy.nan, dtype=numpy.float64)
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for i, radial_cell in enumerate(numpy.digitize(rdist, rbin_edges) - 1):
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# The null hypothesis is that the distances in Quijote are larger
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# or equal to CSiBORG.
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ks = kstest(ndist[i, :], cdf_interp[radial_cell], N=10000,
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alternative="greater")
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# We convert the p-value to a sigma value.
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out[i] = - numpy.sqrt(2) * erfinv(ks.pvalue - 1)
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return out
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###############################################################################
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# Support functions #
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