APPLICATION OF RESTRICTED BOLTZMANN MACHINES AS FEATURE EXTRACTING IN PREDICTION OF INDONESIA STOCK PRICE TRENDS
Econophysics is an interdisciplinary science that applies physics in solving economic phenomena. One of the focuses of econophysics is the study of the stock market. Making predictions for the stock market is very important because it can provide financial decisions to investors. Many approaches...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/76675 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Econophysics is an interdisciplinary science that applies physics in solving
economic phenomena. One of the focuses of econophysics is the study of the stock
market. Making predictions for the stock market is very important because it can
provide financial decisions to investors. Many approaches have been done in
predicting stock prices such as statistical models, machine learning, and deep
learning. However, the use of high-dimensional data such as stock prices allows a
reduction in computational performance so that a deep learning model, Restricted
Boltzmann Machine (RBM), is proposed as a feature extracting. The purpose of this
study is to analyze the effect of RBM in predicting stock price trends and compare
Gaussian RBM with Bernoulli RBM. This research was conducted by adding RBM
in the prediction of stock price trends carried out for three stock prices namely ASII,
BMRI, and TLKM using Support Vector Machine (SVM), Random Forest, NaïveBayes Classifier, and Multi Layer Perceptrons Classifier. The results of the
prediction are in the form of accuracy values that are evaluated using matrix
evaluation. From this research, it is concluded that the use of RBM has an influence
on the resulting accuracy value and the use of Bernoulli RBM is better than
Gaussian RBM. Even so, there are some stock data and prediction classification
models that do not show the influence of RBM. This can be caused by many factors
such as data characteristics, classification model selection, and RBM
hyperparameter selection.
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