This thesis is a comparative study where the question is whether a neural network approach can outperform the principal component analysis (PCA) approach for predicting changes of interest rate curves. Today PCA is the industry standard model for predicting interest rate curves. Specifically the goal is to better understand the correlation structure between Swedish and European swap rates. The disadvantage with the PCA approach is that only the information contained in the covariance matrix can be used and not for example whether or not the curve might behave different depending on the current state. In other words, some information that might be quite important to the curve dynamic is lost in the PCA approach. This raises the question whet...
A nonlinear principal component analysis (NLPCA) represents an extension of the standard principal c...
Calculating the price of an option commonly uses numerical methods and can becomputationally heavy. ...
This thesis investigates the use of Artificial Neural Networks (ANNs)for calculating present values,...
This thesis is a comparative study where the question is whether a neural network approach can outpe...
This paper compares neural networks and linear regression models in interest rate forecasting using ...
Yield curves are of great importance within the financial sector and are, among other things, used a...
This thesis investigates how well artificial neural networks perform when analyzing mutual funds to...
This study is about prediction of the stockmarket through a comparison of neural networks and statis...
Inflation affects many economic processes, and it is therefor crucial for economic agents to have re...
This thesis examines the statistical and economic performance of modeling and predicting equity inde...
This study investigates a neural networks approach to portfolio choice. Linear regression models are...
In this bachelor thesis we investigate the importance of feature selection when making predictions o...
A well functioning economy requires a stable credit market. Computational intelligence methods could...
Denna rapport fokuserar på jämförelsen av några olika klassificeringsmetoder applicerade på bilddata...
The idea of predicting the stock market has existed for hundreds of years. From the pre-industrial a...
A nonlinear principal component analysis (NLPCA) represents an extension of the standard principal c...
Calculating the price of an option commonly uses numerical methods and can becomputationally heavy. ...
This thesis investigates the use of Artificial Neural Networks (ANNs)for calculating present values,...
This thesis is a comparative study where the question is whether a neural network approach can outpe...
This paper compares neural networks and linear regression models in interest rate forecasting using ...
Yield curves are of great importance within the financial sector and are, among other things, used a...
This thesis investigates how well artificial neural networks perform when analyzing mutual funds to...
This study is about prediction of the stockmarket through a comparison of neural networks and statis...
Inflation affects many economic processes, and it is therefor crucial for economic agents to have re...
This thesis examines the statistical and economic performance of modeling and predicting equity inde...
This study investigates a neural networks approach to portfolio choice. Linear regression models are...
In this bachelor thesis we investigate the importance of feature selection when making predictions o...
A well functioning economy requires a stable credit market. Computational intelligence methods could...
Denna rapport fokuserar på jämförelsen av några olika klassificeringsmetoder applicerade på bilddata...
The idea of predicting the stock market has existed for hundreds of years. From the pre-industrial a...
A nonlinear principal component analysis (NLPCA) represents an extension of the standard principal c...
Calculating the price of an option commonly uses numerical methods and can becomputationally heavy. ...
This thesis investigates the use of Artificial Neural Networks (ANNs)for calculating present values,...