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Main Author: Cele, Siyabonga
Format: Recurso digital
Language:English
Published: Zenodo 2013
Subjects:
Online Access:https://doi.org/10.5281/zenodo.18993630
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author Cele, Siyabonga
author_facet Cele, Siyabonga
contents <p>This study examines the application of spectral methods and condition-number analysis in time-series econometrics to estimate financial risk in South Africa. Spectral methods and condition-number analysis are employed to analyse time-series data. A key assumption is that the dataset exhibits stationarity and ergodicity, allowing for reliable spectral estimation. A notable finding is the identification of a significant seasonal pattern in financial returns, with a coefficient ratio of 1.2 indicating strong seasonality effects. The study concludes that incorporating spectral analysis enhances risk assessment models, particularly for identifying and mitigating cyclical risks in South African financial markets. Recommendation is to integrate the proposed methodologies into existing financial risk management systems to improve accuracy and robustness. The analytical core is $\hat{y}_t=\mathcal{F}(x_t;\theta)$ with $\hat{\theta}=argmin_{\theta}L(\theta)$, and convergence is established under standard smoothness conditions.</p>
format Recurso digital
id zenodo_https___doi_org_10_5281_zenodo_18993630
institution Zenodo
language eng
publishDate 2013
publisher Zenodo
record_format zenodo
spellingShingle Spectral Methods and Condition-Number Analysis in Time-Series Econometrics for Financial Risk Estimation in South Africa,
Cele, Siyabonga
African geography
Time-series analysis
Econometrics
Spectral methods
Condition numbers
Financial risk assessment
South Africa
<p>This study examines the application of spectral methods and condition-number analysis in time-series econometrics to estimate financial risk in South Africa. Spectral methods and condition-number analysis are employed to analyse time-series data. A key assumption is that the dataset exhibits stationarity and ergodicity, allowing for reliable spectral estimation. A notable finding is the identification of a significant seasonal pattern in financial returns, with a coefficient ratio of 1.2 indicating strong seasonality effects. The study concludes that incorporating spectral analysis enhances risk assessment models, particularly for identifying and mitigating cyclical risks in South African financial markets. Recommendation is to integrate the proposed methodologies into existing financial risk management systems to improve accuracy and robustness. The analytical core is $\hat{y}_t=\mathcal{F}(x_t;\theta)$ with $\hat{\theta}=argmin_{\theta}L(\theta)$, and convergence is established under standard smoothness conditions.</p>
title Spectral Methods and Condition-Number Analysis in Time-Series Econometrics for Financial Risk Estimation in South Africa,
topic African geography
Time-series analysis
Econometrics
Spectral methods
Condition numbers
Financial risk assessment
South Africa
url https://doi.org/10.5281/zenodo.18993630