Convergence of Minimization Estimators Trained Under Additive Noise
نویسندگان
چکیده
under the supervision of Dr. Lasse Holmström, whom I wish to thank for his guidance, encouragement and support during the work. It has been a pleasure to work in the comfortable and inspiring environment of the Rolf Nevanlinna Institute. I would like to thank my fellow workers for their help and friendship over these years. Note I have corrected some typographical errors of the original printed version in this electronic reprint of the thesis. This reprint differs from the original also in pagination and in some typographic detail.
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