Portfolio optimization with percentage error-based fuzzy random data for industrial production

Data-driven decision-making processes are pervasive in various domains, yet the inherent uncertainties within observational and measurement data can lead to misleading outcomes, particularly in portfolio selection where randomness may seem ambiguous. While existing methodologies recognize the signif...

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Main Authors: Othman, Mohammad Haris Haikal, Arbaiy, Nureize, Che Lah, Muhammad Shukri, Pei, Chun Lin
Format: Conference or Workshop Item
Language:en
Published: 2024
Subjects:
Online Access:http://eprints.uthm.edu.my/11839/1/P17175_5d94fbdfb197989a8805796c3ad99fe0.pdf%209.pdf
http://eprints.uthm.edu.my/11839/
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author Othman, Mohammad Haris Haikal
Arbaiy, Nureize
Che Lah, Muhammad Shukri
Pei, Chun Lin
author_facet Othman, Mohammad Haris Haikal
Arbaiy, Nureize
Che Lah, Muhammad Shukri
Pei, Chun Lin
author_sort Othman, Mohammad Haris Haikal
building UTHM Library
collection Institutional Repository
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
continent Asia
country Malaysia
description Data-driven decision-making processes are pervasive in various domains, yet the inherent uncertainties within observational and measurement data can lead to misleading outcomes, particularly in portfolio selection where randomness may seem ambiguous. While existing methodologies recognize the significance of data preprocessing in managing uncertainties such as fuzziness and randomness, a systematic framework to effectively address these challenges is currently lacking. This study aims to bridge this gap by presenting a comprehensive framework tailored to efficiently handle uncertainty during the preprocessing stage. The proposed framework not only acknowledges the importance of data preprocessing but also offers a systematic approach to processing fuzzy random data, thus providing a robust foundation for portfolio selection algorithms. Leveraging fuzzy integers to manage fuzziness and probability distributions to address randomness, our methodology ensures the construction of reliable portfolio selection strategies. The main objective is to optimize selection based on industrial production, effectively managing uncertainty in traditional portfolio selection models. In this proposed approach, fuzziness is handled using fuzzy numbers, and randomness is addressed through probability distributions. The efficacy of this approach is demonstrated in agricultural planning, evaluating five distinct industrial production types: Agriculture, Mining, Manufacturing, Electricity, and Water. The findings underscore the effectiveness of the proposed methodology in managing uncertainties, reducing errors in model development stages, and providing a robust framework for optimal portfolio selection tailored to industrial production contexts, thereby enhancing decision-making processes in uncertain environments
format Conference or Workshop Item
id my.uthm.eprints-11839
institution Universiti Tun Hussein Onn Malaysia
language en
publishDate 2024
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spelling my.uthm.eprints-118392025-03-27T00:57:45Z http://eprints.uthm.edu.my/11839/ Portfolio optimization with percentage error-based fuzzy random data for industrial production Othman, Mohammad Haris Haikal Arbaiy, Nureize Che Lah, Muhammad Shukri Pei, Chun Lin T Technology (General) Data-driven decision-making processes are pervasive in various domains, yet the inherent uncertainties within observational and measurement data can lead to misleading outcomes, particularly in portfolio selection where randomness may seem ambiguous. While existing methodologies recognize the significance of data preprocessing in managing uncertainties such as fuzziness and randomness, a systematic framework to effectively address these challenges is currently lacking. This study aims to bridge this gap by presenting a comprehensive framework tailored to efficiently handle uncertainty during the preprocessing stage. The proposed framework not only acknowledges the importance of data preprocessing but also offers a systematic approach to processing fuzzy random data, thus providing a robust foundation for portfolio selection algorithms. Leveraging fuzzy integers to manage fuzziness and probability distributions to address randomness, our methodology ensures the construction of reliable portfolio selection strategies. The main objective is to optimize selection based on industrial production, effectively managing uncertainty in traditional portfolio selection models. In this proposed approach, fuzziness is handled using fuzzy numbers, and randomness is addressed through probability distributions. The efficacy of this approach is demonstrated in agricultural planning, evaluating five distinct industrial production types: Agriculture, Mining, Manufacturing, Electricity, and Water. The findings underscore the effectiveness of the proposed methodology in managing uncertainties, reducing errors in model development stages, and providing a robust framework for optimal portfolio selection tailored to industrial production contexts, thereby enhancing decision-making processes in uncertain environments 2024-08-21 Conference or Workshop Item PeerReviewed text en http://eprints.uthm.edu.my/11839/1/P17175_5d94fbdfb197989a8805796c3ad99fe0.pdf%209.pdf Othman, Mohammad Haris Haikal and Arbaiy, Nureize and Che Lah, Muhammad Shukri and Pei, Chun Lin (2024) Portfolio optimization with percentage error-based fuzzy random data for industrial production. In: THE 6TH INTERNATIONAL CONFERENCE ON SOFT COMPUTING & DATA MINING 2024.
spellingShingle T Technology (General)
Othman, Mohammad Haris Haikal
Arbaiy, Nureize
Che Lah, Muhammad Shukri
Pei, Chun Lin
Portfolio optimization with percentage error-based fuzzy random data for industrial production
title Portfolio optimization with percentage error-based fuzzy random data for industrial production
title_full Portfolio optimization with percentage error-based fuzzy random data for industrial production
title_fullStr Portfolio optimization with percentage error-based fuzzy random data for industrial production
title_full_unstemmed Portfolio optimization with percentage error-based fuzzy random data for industrial production
title_short Portfolio optimization with percentage error-based fuzzy random data for industrial production
title_sort portfolio optimization with percentage error-based fuzzy random data for industrial production
topic T Technology (General)
url http://eprints.uthm.edu.my/11839/1/P17175_5d94fbdfb197989a8805796c3ad99fe0.pdf%209.pdf
http://eprints.uthm.edu.my/11839/
url_provider http://eprints.uthm.edu.my/