Title :
Exploiting topography of neural maps: a case study on investment strategies for emerging markets
Author_Institution :
Max-Planck-Inst. fur Stromungsforschung, Gottingen, Germany
Abstract :
Investments can be spread over many possible assets to avoid risk (at the cost of obtaining only an average performance) or it can be focused on clusters of only a few promising assets (at the cost of increased risk). A trade-off between these two objectives can be reached by using the self-organizing map (SOM), a neural network paradigm which achieves a clustering of data points while simultaneously preserving their inherent neighborhood relations (topography). This amounts to a combination of clustering with local smoothing. In a case study involving investments in emerging stock markets the author illustrates the application of SOMs in investment decisions, with an improvement of about 30% in returns over other, more simple investment strategies
Keywords :
financial data processing; investment; self-organising feature maps; stock markets; data point clustering; emerging stock markets; investment decisions; investment strategies; local smoothing; neighborhood relations; neural map topography; risk; self-organizing map; Computer aided software engineering; Costs; Data mining; Investments; Neural networks; Neurons; Organizing; Smoothing methods; Stock markets; Surfaces;
Conference_Titel :
Computational Intelligence for Financial Engineering (CIFEr), 1998. Proceedings of the IEEE/IAFE/INFORMS 1998 Conference on
Conference_Location :
New York, NY
Print_ISBN :
0-7803-4930-X
DOI :
10.1109/CIFER.1998.690120