Linear analysis
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Linear analysis measure and integral, Banach and Hilbert space, linear integral equations by Adriaan Cornelius Zaanen

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Published by North-Holland in Amsterdam .
Written in


  • Linear programming

Book details:

LC ClassificationsQA265 .Z3 1960
The Physical Object
Pagination600 p. ;
Number of Pages600
ID Numbers
Open LibraryOL26550300M

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