26. Optimal model description of finance and human factor indices
Invited abstract in session MB-11: Optimal and stochastic optimal control 1, stream Optimal and stochastic optimal control.
Monday, 10:30-12:30Room: B100/5017
Authors (first author is the speaker)
| 1. | Betül Kalaycı
|
| Financial Mathematics, Institute of Applied Mathematics | |
| 2. | Vilda Purutcuoglu
|
| Statistics, Middle East Technical University | |
| 3. | Gerhard-Wilhelm Weber
|
| Faculty of Engineering Management, Poznan University of Technology |
Abstract
Economists have conducted research on several empirical phenomena regarding
the behavior of individual investors, such as how their emotions and opinions influence their decisions. All those emotions and opinions are described by the word Sentiment. In finance, stochastic changes might occur according to investors sentiment levels. In this study, our main goal is to apply several operational research techniques and analyze these techniques' accuracy. Firstly, we represent the mutual effects between some financial process and investors sentiment with multivariate adaptive regression splines (MARS) model. Furthermore, we consider to extend this model by using distinct data mining techniques and compare the gain in accuracy and computational time with its strong alternatives applied in the analyses of the financial data. Hence, the goal of this study is to compare the forecasting performance of sentiment index by using two-stage MARS-NN (neural network), MARS-RF (random forest), RF-MARS, RF-NN, NN-MARS, and NN-RF hybrid models. Furthermore, we aim to classify the peoples' feelings about economy according to their confidence levels. Moreover, to forecast the underlying state change of the consumer confidence index (CCI) and to observe the relationship with some macroeconomic data (CPI, GDP and currency rate) at a monthly interval, we apply hidden Markov model (HMM). The aim is to detect the switch between these states and to define a path of these states.
Keywords
- Data driven optimization
- Optimal control and applications
- Stochastic optimization
Status: accepted
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