scholarly journals Simultaneous pursuit of out-of-sample performance and sparsity in index tracking portfolios

2012 ◽  
Vol 10 (1) ◽  
pp. 21-49 ◽  
Author(s):  
Akiko Takeda ◽  
Mahesan Niranjan ◽  
Jun-ya Gotoh ◽  
Yoshinobu Kawahara
2010 ◽  
Vol 8 (4) ◽  
pp. 469
Author(s):  
João Frois Caldeira ◽  
Marcelo Savino Portugal

The traditional models to optimize portfolios based on mean-variance analysis aim to determine the portfolio weights that minimize the variance for a certain return level. The covariance matrices used to optimize are difficult to estimate and ad hoc methods often need to be applied to limit or smooth the mean-variance efficient allocations recommended by the model. Although the method is efficient, the tracking error isn’t certainly stationary, so the portfolio can get distant from the benchmark, requiring frequent re-balancements. This work uses cointegration methodology to devise two quantitative strategies: index tracking and long-short market neutral. We aim to design optimal portfolios acquiring the asset prices’ co-movements. The results show that the devise of index tracking portfolios using cointegration generates goods results, replicating the benchmark’s return and volatility. The long-short strategy generated stable returns under several market circumstances, presenting low volatility.


Author(s):  
Patrizia Beraldi ◽  
Maria Elena Bruni

Abstract The enhanced index tracking (EIT) represents a popular investment strategy designed to create a portfolio of assets that outperforms a benchmark, while bearing a limited additional risk. This paper analyzes the EIT problem by the chance constraints (CC) paradigm and proposes a formulation where the return of the tracking portfolio is imposed to overcome the benchmark with a high probability value. Besides the CC-based formulation, where the eventual shortage is controlled in probabilistic terms, the paper introduces a model based on the Integrated version of the CC. Here the negative deviation of the portfolio performance from the benchmark is measured and the corresponding expected value is limited to be lower than a given threshold. Extensive computational experiments are carried out on different set of benchmark instances. Both the proposed formulations suggest investment strategies that track very closely the benchmark over the out-of-sample horizon and often achieve better performance. When compared with other existing strategies, the empirical analysis reveals that no optimization model clearly dominates the others, even though the formulation based on the traditional form of the CC seems to be very competitive.


Author(s):  
Iuliia Gavriushina ◽  
Oliver Sampson ◽  
Michael R. Berthold ◽  
Winfried Pohlmeier ◽  
Christian Borgelt

Author(s):  
Thiago Wanderley De Amorim ◽  
Julio Cezar Soares Silva ◽  
Adiel Teixeira De Almeida Filho

PLoS ONE ◽  
2021 ◽  
Vol 16 (4) ◽  
pp. e0249665
Author(s):  
Xiangyu Cui ◽  
Xuan Zhang

To obtain market average return, investment managers need to construct index tracking portfolio to replicate target index. Currently, most literatures use financial data that has homogenous frequency when constructing the index tracking portfolio. To make up for this limitation, we propose a methodology based on mixed-frequency financial data, called FACTOR-MIDAS-POET model. The proposed model can utilize the intraday return data, daily risk factors data and monthly or quarterly macro economy data, simultaneously. Meanwhile, the out-of-sample analysis demonstrates that our model can improve the tracking accuracy.


2021 ◽  
pp. 1-27
Author(s):  
Eduardo Nesi Bubicz ◽  
Tiago Pascoal Filomena ◽  
Leonardo Riegel Sant’Anna ◽  
Eduardo Bered Fernandes Vieira

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