Portfolio construction with optimal denoising matrix in L1 minimization approach

In this paper, we investigate the mean-variance (MV) portfolio problems that is constructed from the L1 minimization approach that can estimate the eff ective parameters of the MV strategies. Speci cally, we will study the properties of models constructed from the Dantzig Selector (DS) such as the o...

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Main Author: Wong, Jing Lun
Other Authors: PUN Chi Seng
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2021
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Online Access:https://hdl.handle.net/10356/146124
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spelling sg-ntu-dr.10356-1461242023-02-28T23:13:34Z Portfolio construction with optimal denoising matrix in L1 minimization approach Wong, Jing Lun PUN Chi Seng School of Physical and Mathematical Sciences cspun@ntu.edu.sg Business::Finance::Portfolio management Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence In this paper, we investigate the mean-variance (MV) portfolio problems that is constructed from the L1 minimization approach that can estimate the eff ective parameters of the MV strategies. Speci cally, we will study the properties of models constructed from the Dantzig Selector (DS) such as the optimality of the denoising matrix in the DS. Our primary interest is to extend some of the existing models proposed in studies to the DS (CDS) and DS with optimal denoising matrix (OD-LPO and OD-CDS), which is inspired by the study conducted by Liu et al. (2016). The advantage of using the DS framework is that the algorithms proposed can be transformed into linear programming problems and e fficiently implemented by numerous mature solvers. Subsequently, we will implement the models to construct MV portfolios and investigate their performance. Simulations are performed to compare the performance of the approaches to the oracle MV portfolios. An empirical study is then conducted to investigate the practical performance of the proposed approaches which found that the optimal denoising matrix has an stabilizing e ffect on the estimated portfolio weights in OD-CDS. Bachelor of Science in Mathematical Sciences 2021-01-27T02:51:00Z 2021-01-27T02:51:00Z 2018 Final Year Project (FYP) https://hdl.handle.net/10356/146124 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Business::Finance::Portfolio management
Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence
spellingShingle Business::Finance::Portfolio management
Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence
Wong, Jing Lun
Portfolio construction with optimal denoising matrix in L1 minimization approach
description In this paper, we investigate the mean-variance (MV) portfolio problems that is constructed from the L1 minimization approach that can estimate the eff ective parameters of the MV strategies. Speci cally, we will study the properties of models constructed from the Dantzig Selector (DS) such as the optimality of the denoising matrix in the DS. Our primary interest is to extend some of the existing models proposed in studies to the DS (CDS) and DS with optimal denoising matrix (OD-LPO and OD-CDS), which is inspired by the study conducted by Liu et al. (2016). The advantage of using the DS framework is that the algorithms proposed can be transformed into linear programming problems and e fficiently implemented by numerous mature solvers. Subsequently, we will implement the models to construct MV portfolios and investigate their performance. Simulations are performed to compare the performance of the approaches to the oracle MV portfolios. An empirical study is then conducted to investigate the practical performance of the proposed approaches which found that the optimal denoising matrix has an stabilizing e ffect on the estimated portfolio weights in OD-CDS.
author2 PUN Chi Seng
author_facet PUN Chi Seng
Wong, Jing Lun
format Final Year Project
author Wong, Jing Lun
author_sort Wong, Jing Lun
title Portfolio construction with optimal denoising matrix in L1 minimization approach
title_short Portfolio construction with optimal denoising matrix in L1 minimization approach
title_full Portfolio construction with optimal denoising matrix in L1 minimization approach
title_fullStr Portfolio construction with optimal denoising matrix in L1 minimization approach
title_full_unstemmed Portfolio construction with optimal denoising matrix in L1 minimization approach
title_sort portfolio construction with optimal denoising matrix in l1 minimization approach
publisher Nanyang Technological University
publishDate 2021
url https://hdl.handle.net/10356/146124
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