Title :
Portfolio of Automated Trading Systems: Complexity and Learning Set Size Issues
Author_Institution :
Dept. of Inf., Vilnius Univ., Vilnius, Lithuania
Abstract :
In this paper, we consider using profit/loss histories of multiple automated trading systems (ATSs) as N input variables in portfolio management. By means of multivariate statistical analysis and simulation studies, we analyze the influences of sample size (L) and input dimensionality on the accuracy of determining the portfolio weights. We find that degradation in portfolio performance due to inexact estimation of N means and N(N - 1)/2 correlations is proportional to N/L; however, estimation of N variances does not worsen the result. To reduce unhelpful sample size/dimensionality effects, we perform a clustering of N time series and split them into a small number of blocks. Each block is composed of mutually correlated ATSs. It generates an expert trading agent based on a nontrainable 1/N portfolio rule. To increase the diversity of the expert agents, we use training sets of different lengths for clustering. In the output of the portfolio management system, the regularized mean-variance framework-based fusion agent is developed in each walk-forward step of an out-of-sample portfolio validation experiment. Experiments with the real financial data (2003-2012) confirm the effectiveness of the suggested approach.
Keywords :
investment; learning (artificial intelligence); multi-agent systems; pattern clustering; statistical analysis; time series; ATS; automated trading systems; complexity issues; dimensionality effect reduction; expert trading agent; input dimensionality; learning set size issues; multivariate statistical analysis; nontrainable 1-N portfolio rule; out-of-sample portfolio validation experiment; portfolio management system; portfolio weight determination; profit-loss history; regularized mean-variance framework-based fusion agent; sample size; time series clustering; Accuracy; Covariance matrix; Estimation; Optimization; Portfolios; Standards; Vectors; Complexity; Markowitz; efficient-market hypothesis; investments; multiagent systems; optimization; portfolios; regularization; sample size;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2012.2230405