Foundations of Mathematical and Computational Economics

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Foundations of Mathematical and Computational Economics springer.com Economics : Economic Theory/Quantitative Economics/Mathematical Methods Dadkhah, Kamran Foundations of Mathematical and Computational Economics Plenty of examples from all areas of economics and econometrics Emphasizes computation and programming in Matlab, Maple and Excel Numerous exercises and solutions to selected exercises This is a book on the basics of mathematics and computation and their uses in economics for modern day students and practitioners. The reader is introduced to the basics of numerical analysis as well as the use of computer programs such as Matlab and Excel in carrying out involved computations. Sections are devoted to the use of Maple in mathematical analysis. Springer Examples drawn from recent contributions to economic theory and econometrics as well as a variety of end of chapter exercises help to illustrate and apply the presented concepts. 2nd ed. 2011, XVI, 542 p. 2nd edition Order online at springer.com/booksellers Springer Nature Customer Service Center GmbH Customer Service Printed book Tiergartenstrasse 15-17 Hardcover 69121 Heidelberg Germany Printed book T: +49 (0)6221 345-4301 Hardcover [email protected] ISBN 978-3-642-13747-1 £ 109,99 | CHF 141,50 | 119,99 € | 131,99 € (A) | 128,39 € (D) Available Discount group Standard (0) Product category Graduate/advanced undergraduate textbook Other renditions Softcover ISBN 978-3-642-42393-2 Softcover ISBN 978-3-642-13749-5 Prices and other details are subject to change without notice. All errors and omissions excepted. Americas: Tax will be added where applicable. Canadian residents please add PST, QST or GST. Please add $5.00 for shipping one book and $ 1.00 for each additional book. Outside the US and Canada add $ 10.00 for first book, $5.00 for each additional book. If an order cannot be fulfilled within 90 days, payment will be refunded upon request. Prices are payable in US currency or its equivalent. ISBN 978-3-642-13747-1 / BIC: KCA / SPRINGER NATURE: SCW29000 Part of .
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