Abstract:
Quantifying the uncertainty of a financial portfolio is important for investors and regulatory agencies. Reporting such uncertainty accurately is challenging due to time-...Show MoreMetadata
Abstract:
Quantifying the uncertainty of a financial portfolio is important for investors and regulatory agencies. Reporting such uncertainty accurately is challenging due to time-dependent market dynamics, non-linearities in the return and risk properties of a portfolio, and due to the unobserved nature of the market risk. We propose Bayesian Neural Network (BNN) models, namely Recurrent Neural Network (RNN) and Long Short Term Memory (LSTM) models, to estimate the time-varying return distribution of an asset portfolio. The proposed models estimate the density of returns and incorporate parameter uncertainty through Bayesian inference. The uncertainty and any financial risk metric of interest can directly be obtained from the estimated density. Furthermore, through the BNN input-output design, proposed BNNs incorporate potential non-linear effects of each asset in the portfolio on the obtained density estimates. The proposed method is applicable to assess the uncertainty of any portfolio where the portfolio weight optimization is separated from risk assessment. We analyze the risk of a daily, equally weighted portfolio of 29 ETFs and a risk-free asset for a long time span with differing market environments between 09/06/2005 and 10/09/2020. We study the effects of different inference methods on the obtained results. The proposed models improve portfolio risk estimates compared to the benchmark. The performances of the proposed models depend on BNN design and the inference method. RNN models lead to relatively more stable results compared to LSTMs. Furthermore, the results of models with a relatively higher number of parameters depend heavily on the estimation method.
Date of Conference: 30 June 2024 - 05 July 2024
Date Added to IEEE Xplore: 09 September 2024
ISBN Information:
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Bayesian Neural Network ,
- Estimation Method ,
- Network Model ,
- Bayesian Inference ,
- Artificial Neural Network ,
- Short-term Memory ,
- Density Estimation ,
- Long Short-term Memory ,
- Recurrent Neural Network ,
- Inference Methods ,
- Financial Risk ,
- Market Risk ,
- Recurrent Neural Network Model ,
- Return Distribution ,
- Portfolio Returns ,
- Bayesian Network Model ,
- Metrics Of Interest ,
- Short-term Memory Model ,
- Portfolio Risk ,
- Volatility Index ,
- Low Volatility ,
- Validation Sample ,
- Asset Returns ,
- Lack Of Identification ,
- Past Returns ,
- Neural Network Parameters ,
- Test Samples ,
- High Volatility ,
- Maximum A Posteriori
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Bayesian Neural Network ,
- Estimation Method ,
- Network Model ,
- Bayesian Inference ,
- Artificial Neural Network ,
- Short-term Memory ,
- Density Estimation ,
- Long Short-term Memory ,
- Recurrent Neural Network ,
- Inference Methods ,
- Financial Risk ,
- Market Risk ,
- Recurrent Neural Network Model ,
- Return Distribution ,
- Portfolio Returns ,
- Bayesian Network Model ,
- Metrics Of Interest ,
- Short-term Memory Model ,
- Portfolio Risk ,
- Volatility Index ,
- Low Volatility ,
- Validation Sample ,
- Asset Returns ,
- Lack Of Identification ,
- Past Returns ,
- Neural Network Parameters ,
- Test Samples ,
- High Volatility ,
- Maximum A Posteriori
- Author Keywords