Optimizing Bond Portfolios Using Yield Curve Analysis

Thesis title: Optimizing Bond Portfolios Using Yield Curve Analysis
Author: Pitoňák, Erik
Thesis type: Diploma thesis
Supervisor: Witzany, Jiří
Opponents: Babušík, Martin
Thesis language: English
Abstract:
This diploma thesis examines optimization for a maximum Sharpe Ratio (SR) portfolio of Czech government bonds using principal component analysis (PCA) complemented with Monte Carlo simulation. The study begins by analyzing the term structure of interest rates, reviewing PCA's effectiveness in modeling term structures, and examining portfolio optimization strategies. In the empirical section, PCA is applied to historical data on Czech government bond indices to extract principal components. These components are then used in Monte Carlo simulations to generate future yield curve scenarios and possible portfolio returns. The PCA method effectively reconstructs the yield curve in a reduced dimension, capturing significant variance, as supported by existing literature. While some limitations are present related to the type of data or initial output, the optimization results demonstrate effective weight adjustments that can enhance portfolio performance, validating the applicability of combining PCA and Monte Carlo simulation methods.
Keywords: Fixed income portfolio; Principal Component Analysis (PCA); Sharpe Ratio (SR); Monte Carlo Simulation; Optimization methods
Thesis title: Optimizing Bond Portfolios Using Yield Curve Analysis
Author: Pitoňák, Erik
Thesis type: Diplomová práce
Supervisor: Witzany, Jiří
Opponents: Babušík, Martin
Thesis language: English
Abstract:
This diploma thesis examines optimization for a maximum Sharpe Ratio (SR) portfolio of Czech government bonds using principal component analysis (PCA) complemented with Monte Carlo simulation. The study begins by analyzing the term structure of interest rates, reviewing PCA's effectiveness in modeling term structures, and examining portfolio optimization strategies. In the empirical section, PCA is applied to historical data on Czech government bond indices to extract principal components. These components are then used in Monte Carlo simulations to generate future yield curve scenarios and possible portfolio returns. The PCA method effectively reconstructs the yield curve in a reduced dimension, capturing significant variance, as supported by existing literature. While some limitations are present related to the type of data or initial output, the optimization results demonstrate effective weight adjustments that can enhance portfolio performance, validating the applicability of combining PCA and Monte Carlo simulation methods.
Keywords: Fixed income portfolio; Principal Component Analysis (PCA); Sharpe Ratio (SR); Monte Carlo Simulation; Optimization methods

Information about study

Study programme: Finance and Accounting
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Finance and Accounting
Department: Department of Banking and Insurance

Information on submission and defense

Date of assignment: 27. 10. 2023
Date of submission: 15. 6. 2024
Date of defense: 11. 9. 2024
Identifier in the InSIS system: https://insis.vse.cz/zp/86277/podrobnosti

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