2 edition of Introduction to analysis in the large. found in the catalog.
Introduction to analysis in the large.
|The Physical Object|
|Pagination||1 v. (various pagings)|
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Additional Physical Format: Online version: Morse, Marston, Introduction to analysis in the large. [Princeton. N.J.]: Institute for Advanced Study, Arthur Mattuck: Introduction to Analysis Publisher: CreateSpace (Amazon)(previously published by Pearson (Prentice-Hall div.), ) Massachusetts Institute of Technology The book was developed at MIT, mostly for students not in mathematics having trouble with the usual real-analysis ~apm/ I used this book in my first semester of real analysis as an undergrad and can confidently say that I understand the bulk of what analysis is about after having read this book.
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