OYEBADE OLUWATOBILOBA MATRIC NO ; 170404103 DEEP LEARNING PREDICTION OF UNCERTAINTIES IN STOCK MARKET PRICES
METHODOLOGY
3.1 Methodology
3.1.2 Methodology Details The Random Forest ensemble approach is a learning algorithm used for classification, regression, and other tasks This study uses the algorithm as a base model to achieve the research objectives To ensure the successful execution of the study, the following steps are taken: Data collection: Relevant variables are gathered and evaluated in a methodical manner to address research questions, test hypotheses, and evaluate outcomes
3.2 Architectural Design
3.3 Methodology Procedure
3.3.1 Data Collection
3.3.2 Data Preprocessing
3.3.3 Training and Testing of Data
3.3.4 Prediction The model predicts future stock prices based on the trained data and the input variables
3.3.5 Evaluation
3.3.4 Building the Model using PyTorch
3.3.5 Training the Model
3.3.6 Model Evaluation
3.3.6 Model Evaluation
IMPLEMENTATION
4.1 Introduction
4.2 System Implementation
Creating the Agent
Define Basic Functions
Evaluation of the model
4.2 Model Training and Testing results
4.3 Details of Dataset
4.4 System Documentation
4.5 Confusion matrix plot for Prediction
4.6 Score Metrics
RESULTS AND ANALYSIS
Training the Agent Training Output at the end of the first episode
CHAPTER 4.5 Figure:
4.7 User’s Guide
Chapter 5: Results and Analysis
5.1 Model Architecture and Hyper-parameters: A Symphony of Design Decisions
5.2 Data Preprocessing and Feature Engineering: Refinement for Model Consumption
5.3 Training Process Details: The Art of Model Refinement