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. Gaussian-noise, True density (dotted), density estimates (gray) and sample of 20 estimates (thin gray) out of 50 proposed to the selection algorithm obtained with a sample of n = 1000 data

. .. Linear-aggregation-of-laguerre-estimators, 105 4.3.1 Estimation of the weights of aggregation

. .. Bounds, 2 Statistical model

. .. Bounds, 4.2 Comparison with Comte and Lacour (2011) and influence of M in the NS-model

. .. Proofs, 156 6.6.1 Sketch of the proof of Proposition 6

. .. Proofs, 193 7.5.5 Proof of the rates in Table 7