This thesis examines the statistical and economic performance of modeling and predicting equity index returns by application of various statistical models on a set of macroeconomic and financial variables. By combining linear principal component regression, vector autoregressive models, and LSTM neural networks, the authors find that while a majority of the models display high statistical significance, virtually none of them successfully outperform classic portfolio theory on efficient markets in terms of risk-adjusted returns. Several implications are also discussed based on the results.Detta examensarbete undersöker den statistiska och ekonomiska prestationen i att modellera och prognostisera aktieindexavkastning via applikation av flerta...
Every investor place his or her investment with the desire of maximum return with lowest possible ri...
Synthetic short positions constructed by equity options and stock loan short sells are linked by arb...
Interpreting time varying phenomena is a key challenge in the capital markets. Time series analysis ...
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...
The stock market is a non-linear field, but many of the best-known portfolio optimization algorithms...
The idea of predicting the stock market has existed for hundreds of years. From the pre-industrial a...
This study investigates the predictive performance of two different machine learning (ML) models on ...
Within the quantitative financial community there are a lot of different approaches in forming profi...
Stock market prediction has been a hot topic lately due to advances in computer technology and econo...
This thesis is a comparative study where the question is whether a neural network approach can outpe...
This study aims to investigate whether Swedish economic indicators can be used to predict stock mark...
Partial Least Squares is both a regression method and a tool for variable selection, that is especia...
Being successful at stock trading requires good analytic skills combined with some luck and understa...
Every investor place his or her investment with the desire of maximum return with lowest possible ri...
Synthetic short positions constructed by equity options and stock loan short sells are linked by arb...
Interpreting time varying phenomena is a key challenge in the capital markets. Time series analysis ...
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...
The stock market is a non-linear field, but many of the best-known portfolio optimization algorithms...
The idea of predicting the stock market has existed for hundreds of years. From the pre-industrial a...
This study investigates the predictive performance of two different machine learning (ML) models on ...
Within the quantitative financial community there are a lot of different approaches in forming profi...
Stock market prediction has been a hot topic lately due to advances in computer technology and econo...
This thesis is a comparative study where the question is whether a neural network approach can outpe...
This study aims to investigate whether Swedish economic indicators can be used to predict stock mark...
Partial Least Squares is both a regression method and a tool for variable selection, that is especia...
Being successful at stock trading requires good analytic skills combined with some luck and understa...
Every investor place his or her investment with the desire of maximum return with lowest possible ri...
Synthetic short positions constructed by equity options and stock loan short sells are linked by arb...
Interpreting time varying phenomena is a key challenge in the capital markets. Time series analysis ...