Skip navigation
Use este identificador para citar ou linkar para este item: https://repositorio.ufpe.br/handle/123456789/62954

Compartilhe esta página

Título: Data-driven multiobjective algorithms : applications in portfolio optimization
Autor(es): SILVA, Julio Cezar Soares
Palavras-chave: Generative adversarial network; Interactive multiobjective optimization; Evolutionary Algorithm; Dominance-based rough set approach; Portfolio Optimization; Index Tracking
Data do documento: 3-Dez-2024
Editor: Universidade Federal de Pernambuco
Citação: SILVA, Julio Cezar Soares. Data-driven multiobjective algorithms: applications in portfolio optimization. 2024. Tese (Doutorado em Ciência da Computação) - Universidade Federal de Pernambuco, Recife, 2024.
Abstract: Practical portfolio optimization models have been bringing challenges that computa- tional intelligence tools are helping to solve. A class of portfolio optimization problems that have been attracting computational intelligence applications is index tracking. The index tracking problem aims to build a portfolio that replicates the performance of a market index with a subset of assets. Recent applications of deep learning in index tracking have limited application in real environments since the proposed frameworks are not flexible to include more practical constraints and objectives. A novel application of Generative Adversarial Network (GAN) which guarantees model extension flexibility is presented. The efficiency of the GAN was evaluated considering the difficulties imposed by the combinatorial nature of the index tracking problem. We also proposed and evaluated two new metaheuristics for the index tracking model with multiple scenarios. The results showed that solving the model using GAN’s market simulations produces more stable portfolios when compared to portfolios optimized with real data. Also, the models trained in a specific rebalancing strategy could perform well in other rebalancing strategies. This work also brings discussions about problems related to the application of GANs in this context. Obtaining the optimal Pareto front in a feasible time can be impractical in multiobjective portfolio optimization with practical constraints. Another unsolved problem is the extraction of preference information to find the most preferable nondominated solution. Thus, it is interesting to consider Evolutionary Multi-criterion approaches (EMO) to find good fronts within a time constraint guided by preference information. We propose a way to learn a rough approximation of the investor’s preference model to guide the EMO search for the single most preferable portfolio and to perform preference-driven portfolio updates. This model can be obtained using Interactive Multiobjective Optimization using Dominance-based Rough Sets Approach (IMO-DRSA), which is able to guide evolutionary algorithms using a rule-based model that is refined in each interaction with the investor. The problem is that there is no evidence on how to reduce the number of representative portfolios to minimize Decision-Maker (DM) cognitive effort during the interaction, taking the satisfaction of preferences in future distributions of portfolio components returns into account. The results showed that the proposed simulated IMO-DRSA can study the impact of different variables and approaches to reduce the cognitive effort in the performance of the EMO approach to achieve and maintain good preference satisfaction over time.
URI: https://repositorio.ufpe.br/handle/123456789/62954
Aparece nas coleções:Teses de Doutorado - Ciência da Computação

Arquivos associados a este item:
Arquivo Descrição TamanhoFormato 
TESE Julio Cezar Soares Silva.pdf16,51 MBAdobe PDFThumbnail
Visualizar/Abrir


Este arquivo é protegido por direitos autorais



Este item está licenciada sob uma Licença Creative Commons Creative Commons