Evis Kellezi and Manfred
Gilli
Manfred.Gilli@metri.unige.ch
In this paper we investigate the performance of the threshold accepting
heuristic for the index tracking problem. The index
tracking problem consists in minimizing the tracking error between
a portfolio and a benchmark. The objective is to replicate the performance
of a given index upon the condition that the number of stocks allowed in
the portfolio is smaller than the number of stocks in the benchmarking
index. The quantities of stocks in the portfolio are integers. Transaction
costs have to be faced each time that the portfolio is rebalanced. We find
the composition of a portfolio that best tracks the performance of the
benchmark during a given period in the past and then look at the performance
of the portfolio in the subsequent period. We report computational results
in the cases where the benchmarks are market indices tracked by a small
number of assets. We find that the threshold accepting is a very suitable
and efficient optimization technique for this problem.