6533b859fe1ef96bd12b6ea9

RESEARCH PRODUCT

Self-organizing maps could improve the classification of Spanish mutual funds

Ignacio OlmedaPaulina MarcoDavid Moreno

subject

Self-organizing mapInformation Systems and ManagementGeneral Computer ScienceComputer scienceManagement Science and Operations Researchcomputer.software_genreInvestment (macroeconomics)Industrial and Manufacturing EngineeringClusteringStock exchangeModeling and SimulationSelf-organizing map (SOM)EconometricsInvestment analysisAsset (economics)Data miningMutual fundscomputerFinanceEmpresa

description

In this paper, we apply nonlinear techniques (Self-Organizing Maps, k-nearest neighbors and the k-means algorithm) to evaluate the official Spanish mutual funds classification. The methodology that we propose allows us to identify which mutual funds are misclassified in the sense that they have historical performances which do not conform to the investment objectives established in their official category. According to this, we conclude that, on average, over 40% of mutual funds could be misclassified. Then, we propose an alternative classification, based on a double-step methodology, and we find that it achieves a significantly lower rate of misclassifications. The portfolios obtained from this alternative classification also attain better performances in terms of return/risk and include a smaller number of assets. Publicado

10.1016/j.ejor.2004.12.018http://hdl.handle.net/10016/7747