Title:
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FUZZY PORTFOLIO OPTIMIZATION
ADVANCES IN HYBRID MULTI-CRITERIA METHODOLOGIES |
By: |
Pankaj Gupta, Mukesh Kumar Mehlawat, Masahiro Inuiguchi |
Format: |
Paperback |
List price:
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£109.99 |
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ISBN 10: |
3662508567 |
ISBN 13: |
9783662508565 |
Publisher: |
SPRINGER-VERLAG BERLIN AND HEIDELBERG GMBH & CO. KG |
Pub. date: |
3 September, 2016 |
Edition: |
Softcover reprint of the original 1st ed. 2014 |
Series: |
Studies in Fuzziness and Soft Computing 316 |
Pages: |
320 |
Synopsis: |
This monograph presents a comprehensive study of portfolio optimization, an important area of quantitative finance. Considering that the information available in financial markets is incomplete and that the markets are affected by vagueness and ambiguity, the monograph deals with fuzzy portfolio optimization models. At first, the book makes the reader familiar with basic concepts, including the classical mean-variance portfolio analysis. Then, it introduces advanced optimization techniques and applies them for the development of various multi-criteria portfolio optimization models in an uncertain environment. The models are developed considering both the financial and non-financial criteria of investment decision making, and the inputs from the investment experts. The utility of these models in practice is then demonstrated using numerical illustrations based on real-world data, which were collected from one of the premier stock exchanges in India. The book addresses both academics and professionals pursuing advanced research and/or engaged in practical issues in the rapidly evolving field of portfolio optimization. |
Illustrations: |
2 Illustrations, color; 54 Illustrations, black and white; XVI, 320 p. 56 |
Publication: |
Germany |
Imprint: |
Springer-Verlag Berlin and Heidelberg GmbH & Co. K |
Returns: |
Returnable |