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Computational Finance, an exciting new cross-disciplinary research
area, depends extensively on the tools and techniques of computer
science, statistics, information systems and financial economics
for educating the next generation of financial researchers,
analysts, risk managers, and financial information technology
professionals. This new discipline, sometimes also referred to as
"Financial Engineering" or "Quantitative Finance" needs
professionals with extensive skills both in finance and mathematics
along with specialization in computer science. Soft-Computing in
Capital Market hopes to fulfill the need of applications of this
offshoot of the technology by providing a diverse collection of
cross-disciplinary research. This edited volume covers most of the
recent, advanced research and practical areas in computational
finance, starting from traditional fundamental analysis using
algebraic and geometric tools to the logic of science to explore
information from financial data without prejudice. Utilizing
various methods, computational finance researchers aim to determine
the financial risk with greater precision that certain financial
instruments create. In this line of interest, twelve papers dealing
with new techniques and/or novel applications related to
computational intelligence, such as statistics, econometrics,
neural- network, and various numerical algorithms are included in
this volume.
Data Envelopment Analysis (DEA) represents a milestone in the
progression of a continuously advancing methodology for data
analysis, which finds extensive use in industry, society and even
in education. This book is a handy encyclopedia for researchers,
students and practitioners looking for the latest and most
comprehensive references in DEA. J.K. Mantri has specifically
selected 22 research papers where DEA is applied in different
fields so that the techniques discussed in this book can be used
for various applications. In A Bibliography of Data Envelopment
Analysis (1978-2001), Gabriel Tavares states that DEA is a
mathematical programme for measuring performance efficiency of
organizations popularly named as decision-making units (DMU). The
DMU can be of any kind such as manufacturing units, a number of
schools, banks, hospitals, police stations, firms, etc. DEA
measures the performance efficiency of these kinds of DMUs, which
share a common characteristic: they have a non-profit organization
where measurement is difficult. DEA assumes the performance of the
DMU using the concepts of efficiency and productivity, which are
measured as the ratio of total outputs to total inputs. The
efficiencies estimated are relative to the best performing DMU,
which is given a score of 100%. The performance of other DMUs
varies between 0% and 100%.
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