Empirical studies on dynamic trading strategies with autoregressive assets
In this paper, the out-of-sample performances of the sample-based multi-period dynamic mean-variance models and global minimum-variance models are evaluated under both time-consistent and time-inconsistent (precommitment) setting. Across the eight empirical datasets we apply, the time-consistent str...
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sg-ntu-dr.10356-1460862023-02-28T23:11:31Z Empirical studies on dynamic trading strategies with autoregressive assets Goh, Chian Yi PUN Chi Seng School of Physical and Mathematical Sciences cspun@ntu.edu.sg Science::Mathematics::Applied mathematics::Operational research Business::Finance::Financial management In this paper, the out-of-sample performances of the sample-based multi-period dynamic mean-variance models and global minimum-variance models are evaluated under both time-consistent and time-inconsistent (precommitment) setting. Across the eight empirical datasets we apply, the time-consistent strategies outperform the time-inconsistent strategies as the latter always suggests extreme portfolio weights which are less applicable and less robust in practical. Among time-consistent strategies, the performance of the time-consistent global minimum-variance model is superior to other strategies in minimizing the potential risk, even in the presence of estimation error. Whereas the time-consistent mean-variance model attains a recommendable risk-adjusted performance even though it does not outperform the benchmark, equally weighted portfolio consistently, in term of Sharpe ratios. Besides, for the time-consistent mean-variance strategy, the advancement extended to the autoregressive assets does suggest improvement in the performance, in term of risk-adjusted metrics including Sharpe ratios and CEQ returns. Enhancement through adjusting the desired required return may lead to a better achievement in balancing risk and return of asset allocation. This paper contributes to the evaluation of the practical use of dynamic trading strategies and hence the best choice among them, which is previously questionable. Bachelor of Science in Mathematical Sciences 2021-01-26T07:04:24Z 2021-01-26T07:04:24Z 2017 Final Year Project (FYP) https://hdl.handle.net/10356/146086 en application/pdf Nanyang Technological University |
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Science::Mathematics::Applied mathematics::Operational research Business::Finance::Financial management Goh, Chian Yi Empirical studies on dynamic trading strategies with autoregressive assets |
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In this paper, the out-of-sample performances of the sample-based multi-period dynamic mean-variance models and global minimum-variance models are evaluated under both time-consistent and time-inconsistent (precommitment) setting. Across the eight empirical datasets we apply, the time-consistent strategies outperform the time-inconsistent strategies as the latter always suggests extreme portfolio weights which are less applicable and less robust in practical. Among time-consistent strategies, the performance of the time-consistent global minimum-variance model is superior to other strategies in minimizing the potential risk, even in the presence of estimation error. Whereas the time-consistent mean-variance model attains a recommendable risk-adjusted performance even though it does not outperform the benchmark, equally weighted portfolio consistently, in term of Sharpe ratios. Besides, for the time-consistent mean-variance strategy, the advancement extended to the autoregressive assets does suggest improvement in the performance, in term of risk-adjusted metrics including Sharpe ratios and CEQ returns. Enhancement through adjusting the desired required return may lead to a better achievement in balancing risk and return of asset allocation. This paper contributes to the evaluation of the practical use of dynamic trading strategies and hence the best choice among them, which is previously questionable. |
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PUN Chi Seng |
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PUN Chi Seng Goh, Chian Yi |
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Final Year Project |
author |
Goh, Chian Yi |
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Goh, Chian Yi |
title |
Empirical studies on dynamic trading strategies with autoregressive assets |
title_short |
Empirical studies on dynamic trading strategies with autoregressive assets |
title_full |
Empirical studies on dynamic trading strategies with autoregressive assets |
title_fullStr |
Empirical studies on dynamic trading strategies with autoregressive assets |
title_full_unstemmed |
Empirical studies on dynamic trading strategies with autoregressive assets |
title_sort |
empirical studies on dynamic trading strategies with autoregressive assets |
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Nanyang Technological University |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/146086 |
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