The strong law of large numbers for k-means and best possible nets of Banach valued random variables
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Publication:1093233
DOI10.1007/BF00353875zbMath0628.60010MaRDI QIDQ1093233
Juan Antonio Cuesta, Carlos Matrán
Publication date: 1988
Published in: Probability Theory and Related Fields (Search for Journal in Brave)
Strong limit theorems (60F15) Limit theorems for vector-valued random variables (infinite-dimensional case) (60B12)
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