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+import numpy as np
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+from scipy.optimize import curve_fit
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+import matplotlib.pyplot as plt
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+from atlas_fit_function import atlas_invMass_mumu
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+
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+#############################################################################################################################
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+# User defined
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+
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+labels = ['Background', 'Signal', 'Data']
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+
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+pldict = {}
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+for label in labels:
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+ with np.load('DATA/generated_histograms/mass_mm_higgs_' + label + '.npz', 'rb') as data:
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+ bin_centers = data['bin_centers']
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+ bin_edges = data['bin_edges']
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+ bin_values = data['bin_values']
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+ bin_errors = data['bin_errors']
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+
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+ pldict[label] = [bin_centers, bin_edges, bin_values, bin_errors]
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+
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+xs = np.linspace(bin_edges[0], bin_edges[-1], 301)
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+width = (np.max(xs) - np.min(xs)) / len(bin_centers)
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+chebyshev = False
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+save = False
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+
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+#############################################################################################################################
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+# Fit simulated background
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+
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+bin_centers = pldict['Background'][0]
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+bin_edges = pldict['Background'][1]
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+bin_values = pldict['Background'][2]
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+bin_errors = pldict['Background'][3]
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+xerrs = 0.5 * (bin_edges[1:] - bin_edges[:-1])
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+
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+
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+def Background(x, a, b, c, d, e, f, g, h, func=atlas_invMass_mumu):
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+ if chebyshev:
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+ # Choose Chebyshev polynomials as weights
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+ from numpy.polynomial.chebyshev import chebval
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+ return chebval(x, [a, b, c, d, e, f, g]) * func(x)
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+ else:
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+ # Choose some weighting function
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+ return func(np.exp(a * x) + b * x**3 + c * x**2 + d * x + h, x)
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+
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+
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+def return_p0(chebyshev):
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+ if chebyshev:
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+ return (10**6, 1., 1., 1., 1., 1., 1., 1.)
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+ else:
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+ return (1., 1., 1., 1., 1., 1., 1., 10**6)
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+
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+
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+popt, pcov = curve_fit(Background, bin_centers, bin_values, sigma=bin_errors, p0=return_p0(chebyshev))
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+perr = np.sqrt(np.diag(pcov))
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+
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+f, (ax1, ax2) = plt.subplots(2, sharex=True, figsize=(16, 9), gridspec_kw={'height_ratios': [3, 1]})
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+f.suptitle('Fitting simulated background', fontsize=22)
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+ax1.errorbar(bin_centers, bin_values, bin_errors, xerrs, marker='o', markersize=5, color='k', ecolor='k', ls='', label='Original SimBkg histogram')
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+ax1.plot(xs, Background(xs, *popt), 'r-', label='Simulated Background fit')
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+ax1.set_ylabel('Number of events', fontsize=20)
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+ax1.tick_params(axis='both', which='major', labelsize=20)
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+ax1.legend(fontsize=20)
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+# ax1.set_yscale('log')
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+
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+ax2.bar(bin_centers, bin_values / Background(bin_centers, *popt) - 1, width=width, color='k')
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+ax2.axhline(0, color='k', ls='--', alpha=0.7)
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+ax2.set_xlabel(r'$m_{\mu \mu}$', fontsize=20)
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+ax2.set_ylabel('(Data-Pred.)/Pred.', fontsize=20)
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+ax2.set_xticks(bin_edges[::2])
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+ax2.tick_params(axis='both', which='major', labelsize=20)
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+ax2.grid(True)
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+
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+f.tight_layout()
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+if save:
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+ plt.savefig('SimBkg_fit.pdf')
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+
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+
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+############################################################################################################################
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+# Fit background from data
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+
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+bin_centers = pldict['Data'][0]
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+bin_edges = pldict['Data'][1]
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+bin_values = pldict['Data'][2]
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+bin_errors = pldict['Data'][3]
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+xerrs = 0.5 * (bin_edges[1:] - bin_edges[:-1])
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+
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+# Blind signal region
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+signal_region = (bin_centers < 120) | (bin_centers > 130)
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+bin_centers_masked = bin_centers[signal_region]
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+bin_values_masked = bin_values[signal_region]
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+bin_errors_masked = bin_errors[signal_region]
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+xerrs_masked = xerrs[signal_region]
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+
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+popt_full, pcov_full = curve_fit(Background, bin_centers, bin_values, sigma=bin_errors, p0=return_p0(chebyshev))
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+popt_masked, pcov = curve_fit(Background, bin_centers_masked, bin_values_masked, sigma=bin_errors_masked, p0=return_p0(chebyshev))
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+
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+f, (ax1, ax2) = plt.subplots(2, sharex=True, figsize=(16, 9), gridspec_kw={'height_ratios': [3, 1]})
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+f.suptitle('Fitting background from data', fontsize=22)
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+
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+ax1.errorbar(bin_centers_masked, bin_values_masked, bin_errors_masked, xerrs_masked, marker='o', markersize=5, color='k', ecolor='k', ls='', label='Original Data histogram')
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+ax1.plot(xs, Background(xs, *popt_full), 'g-', label='Data Background fit full', alpha=0.7)
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+ax1.plot(xs, Background(xs, *popt_masked), 'r-', label='Data Background fit', alpha=0.7)
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+# ax1.text(140, 10**5, 'Full:\na: {:.3e}\nb: {:.3f}\nc: {:.3f}\nd: {:.3e}'.format(*popt_full), fontsize=20)
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+# ax1.text(150, 10**5, 'Blinded:\na: {:.3e}\nb: {:.3f}\nc: {:.3f}\nd: {:.3e}'.format(*popt_masked), fontsize=20)
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+ax1.set_ylabel('Number of events', fontsize=20)
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+ax1.tick_params(axis='both', which='major', labelsize=20)
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+ax1.legend(fontsize=20)
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+# ax1.set_yscale('log')
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+
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+ax2.bar(bin_centers_masked, bin_values_masked / Background(bin_centers_masked, *popt_masked) - 1, width=width / 2., color='g')
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+ax2.bar(bin_centers_masked + width / 2., bin_values_masked / Background(bin_centers_masked, *popt_full) - 1, width=width / 2., color='r')
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+ax2.axhline(0, color='k', ls='--', alpha=0.7)
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+ax2.set_xlabel(r'$m_{\mu \mu}$', fontsize=20)
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+ax2.set_ylabel('(Data-Pred.)/Pred.', fontsize=20)
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+ax2.set_xticks(bin_edges[::2])
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+ax2.tick_params(axis='both', which='major', labelsize=20)
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+ax2.grid(True)
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+
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+f.tight_layout()
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+if save:
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+ plt.savefig('DataBkg_fit.pdf')
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+
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+
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+#############################################################################################################################
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+# Extract signal (data - background fit)
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+
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+extracted_signal = bin_values - Background(bin_centers, *popt_masked)
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+
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+plt.figure(figsize=(12, 4.5))
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+plt.title('Extracted signal', fontsize=22)
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+plt.scatter(bin_centers, extracted_signal, color='k', label='Extracted signal')
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+plt.xlabel(r'$m_{\mu \mu}$', fontsize=20)
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+plt.ylabel('Number of events', fontsize=20)
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+plt.xticks(bin_edges[::2], bin_edges[::2].astype(int), size=20)
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+plt.yticks(size=20)
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+plt.legend(fontsize=20)
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+plt.tight_layout()
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+plt.grid()
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+if save:
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+ plt.savefig('Extracted_signal.pdf')
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+
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+
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+#############################################################################################################################
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+# Fit simulated signal
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+
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+bin_centers = pldict['Signal'][0]
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+bin_edges = pldict['Signal'][1]
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+bin_values = pldict['Signal'][2]
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+bin_errors = pldict['Signal'][3]
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+xerrs = 0.5 * (bin_edges[1:] - bin_edges[:-1])
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+
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+
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+def CB(x, A, aL, aR, nL, nR, mCB, sCB):
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+ return np.piecewise(x, [(x - mCB) / sCB <= -aL,
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+ (x - mCB) / sCB >= aR],
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+ [lambda x: A * (nL / np.abs(aL))**nL * np.exp(-aL**2 / 2) * (nL / np.abs(aL) - np.abs(aL) - (x - mCB) / sCB)**(-nL),
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+ lambda x: A * (nR / np.abs(aR))**nR * np.exp(-aR**2 / 2) * (nR / np.abs(aR) - np.abs(aR) + (x - mCB) / sCB)**(-nR),
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+ lambda x: A * np.exp(-(x - mCB)**2 / (2 * sCB**2))
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+ ])
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+
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+
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+popt_CB, pcov = curve_fit(CB, bin_centers, bin_values, sigma=bin_errors, p0=[134., 1.5, 1.5, 5., 5., 124.6, 2.7])
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+perr = np.sqrt(np.diag(pcov))
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+
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+plt.figure(figsize=(16, 9))
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+plt.title('Fitting simulated signal', fontsize=22)
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+plt.errorbar(bin_centers, bin_values, bin_errors, xerrs, marker='o', markersize=5, color='k', ecolor='k', ls='', label='Original histogram')
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+plt.plot(xs, CB(xs, *popt_CB), 'r-', label='signal fit CB')
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+string = 'CB parameters after fit:\n'
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+for par, pop in zip(['A', r'$\alpha_L$', r'$\alpha_R$', r'$n_L$', r'$n_R$', r'$\overline{m}_{CB}$', r'$\sigma_{CB}$'], popt_CB):
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+ string += par + f': {pop:.3f}\n'
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+plt.text(115, 75, string[:-1], size=20, bbox=dict(facecolor='none', edgecolor='gray', boxstyle='round,pad=0.5'))
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+plt.xlabel(r'$m_{\mu \mu}$', fontsize=20)
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+plt.ylabel('Number of events', fontsize=20)
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+plt.xticks(bin_edges[::2], bin_edges[::2].astype(int), size=20)
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+plt.yticks(size=20)
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+plt.legend(fontsize=20)
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+if save:
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+ plt.savefig('CB_fit.pdf')
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+
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+
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+#############################################################################################################################
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+# Scale our signal
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+
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+def scale_signal(x, scale, popt_CB=popt_CB):
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+ return scale * CB(x, *popt_CB)
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+
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+
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+popt, pcov = curve_fit(scale_signal, bin_centers, extracted_signal, sigma=bin_errors, p0=[1.])
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+NHiggs = int(popt_CB[0] * popt[0])
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+
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+plt.figure(figsize=(12, 8))
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+plt.title('Fitted signal', fontsize=22)
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+plt.plot(xs, scale_signal(xs, popt), color='r', label='Fitted signal')
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+plt.scatter(bin_centers, extracted_signal, color='k', label='Extracted signal')
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+plt.text(130, -200, r'$\alpha_{{scale}} = {:.3f}$'.format(*popt) + '\n' + r'$N_{{Higgs}} = {:d}$'.format(NHiggs), size=20, bbox=dict(facecolor='w', edgecolor='gray', boxstyle='round,pad=0.5'))
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+plt.xlabel(r'$m_{\mu \mu}$', fontsize=20)
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+plt.ylabel('Number of events', fontsize=20)
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+plt.xticks(bin_edges[::2], bin_edges[::2].astype(int), size=20)
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+plt.yticks(size=20)
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+plt.legend(loc='upper right', fontsize=20)
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+plt.tight_layout()
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+plt.grid()
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+if save:
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+ plt.savefig('final_fit.pdf')
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