Sökning: "Diebold-Mariano"
Visar resultat 1 - 5 av 15 uppsatser innehållade ordet Diebold-Mariano.
1. Volatility Forecasting - A comparative study of different forecasting models.
Kandidat-uppsats,Sammanfattning : This study evaluates the out-of-sample forecasting performance of different volatility mod- els. When applied to XACT OMXS30, we use GARCH(1,1), EGARCH(1,1), and t- GAS(1,1) to forecast squared daily returns while Realized GARCH(1,1) and HAR-RV are used to forecast Realized Variance. LÄS MER
2. Forecasting Volatility of Ether- An empirical evaluation of volatility models and their capacity to forecast one-day-ahead volatility of Ether
Master-uppsats, Göteborgs universitet/Graduate SchoolSammanfattning : This study evaluates the performance of volatility models in forecasting one-day-ahead volatility of the cryptocurrency Ether. The selected models are: GARCH, EGARCH, GJR-GARCH, SMA9, SMA20, and EWMA. We investigate both in-sample performance and out-of-sample performance. LÄS MER
3. NOWCASTING THE SWEDISH UNEMPLOYMENT RATE USING GOOGLE SEARCH DATA
Magister-uppsats, Uppsala universitet/Statistiska institutionenSammanfattning : In this thesis, the usefulness of search engine data to nowcast the unemployment rate of Sweden is evaluated. Four different indices from Google Trends based on keywords related to unemployment are used in the analysis and six different regARIMA models are estimated and evaluated. LÄS MER
4. A comparison of forecasting techniques: Predicting the S&P500
Kandidat-uppsats, Uppsala universitet/Statistiska institutionenSammanfattning : Accurately predicting the S\&P 500 index means knowing where the US economy is heading. If there was a model that could predict the S\&P 500 with even some accuracy, this would be extremely valuable. Machine learning techniques such as neural network and Random forest have become more popular in forecasting. LÄS MER
5. Using Machine Learning to Predict Aggregate Excess Returns
D-uppsats, Handelshögskolan i Stockholm/Institutionen för finansiell ekonomiSammanfattning : In this paper we examine whether standard linear regression and machine learning tools can be used to predict the time series of total returns in excess of the risk-free rate on the S&P500 and FTSE100 indices. We have virtually no success in predicting monthly returns. However, we do have some success in predicting annual returns. LÄS MER