Spelling suggestions: "subject:"time series analysis anda prediction"" "subject:"time series analysis ando prediction""
1 |
Computational approaches for time series analysis and prediction : data-driven methods for pseudo-periodical sequencesLan, Yang January 2009 (has links)
Time series data mining is one branch of data mining. Time series analysis and prediction have always played an important role in human activities and natural sciences. A Pseudo-Periodical time series has a complex structure, with fluctuations and frequencies of the times series changing over time. Currently, Pseudo-Periodicity of time series brings new properties and challenges to time series analysis and prediction. This thesis proposes two original computational approaches for time series analysis and prediction: Moving Average of nth-order Difference (MANoD) and Series Features Extraction (SFE). Based on data-driven methods, the two original approaches open new insights in time series analysis and prediction contributing with new feature detection techniques. The proposed algorithms can reveal hidden patterns based on the characteristics of time series, and they can be applied for predicting forthcoming events. This thesis also presents the evaluation results of proposed algorithms on various pseudo-periodical time series, and compares the predicting results with classical time series prediction methods. The results of the original approaches applied to real world and synthetic time series are very good and show that the contributions open promising research directions.
|
2 |
Computational Approaches for Time Series Analysis and Prediction. Data-Driven Methods for Pseudo-Periodical Sequences.Lan, Yang January 2009 (has links)
Time series data mining is one branch of data mining. Time series analysis
and prediction have always played an important role in human activities and
natural sciences. A Pseudo-Periodical time series has a complex structure,
with fluctuations and frequencies of the times series changing over time. Currently,
Pseudo-Periodicity of time series brings new properties and challenges
to time series analysis and prediction.
This thesis proposes two original computational approaches for time series
analysis and prediction: Moving Average of nth-order Difference (MANoD)
and Series Features Extraction (SFE). Based on data-driven methods, the
two original approaches open new insights in time series analysis and prediction
contributing with new feature detection techniques. The proposed
algorithms can reveal hidden patterns based on the characteristics of time
series, and they can be applied for predicting forthcoming events.
This thesis also presents the evaluation results of proposed algorithms on
various pseudo-periodical time series, and compares the predicting results
with classical time series prediction methods. The results of the original
approaches applied to real world and synthetic time series are very good and
show that the contributions open promising research directions.
|
3 |
Posouzení vybraných ukazatelů společnosti pomocí statistických metod / Assessment of Selected Indicators of a Company Using Statistical MethodsRešková, Petra January 2020 (has links)
Master´s thesis deals with the assessment of selected financial indicators of the company using a statistical methods. The first part is focused on the theoretical description of financial indicators, time series analysis as well as regression and correlation analysis. The practical part contains a statistical analysis of selected indicators with subsequent prediction of indicators for the next two years. The practical part also contains a comparison of selected indicators with the industry average and a correlation analysis to determine the dependence of selected indicators. The last part contains suggestions to improve the situation of the company.
|
Page generated in 0.1273 seconds