Slowly varying functions with remainder term and their applications in analysis
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Slowly varying functions with remainder term and their applications in analysis

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Published by Serbian Academy of Sciences and Arts in Beograd .
Written in English


  • Functions.,
  • Convergence.,
  • Tauberian theorems.

Book details:

Edition Notes

Other titlesSporo promenljive funkcije sa ostatkom i njihova primena u analizi.
StatementS. Aljančić, R. Bojanić, M. Tomić ; editor Radivoje Kašanin.
SeriesMonographs - Serbian Academy of Sciences and Arts ; v. 467, Posebna izdanja (Srpska akademija nauka i umetnosti) ;, knj. 467.
ContributionsBojanić, R., joint author., Tomić, Miodrag, joint author., Srpska akademija nauka i umetnosti. Odeljenje prirodno-matematičkih nauka.
LC ClassificationsAS346 .B53 vol. 467, QA355 .B53 vol. 467
The Physical Object
Pagination51 p. ;
Number of Pages51
ID Numbers
Open LibraryOL5250263M
LC Control Number75322787

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