PREDICTION OF STOCK PRICE TRENDS USING SENTIMENT ANALYSIS OF NEWS AND HISTORICAL STOCK PRICE DATA ANALYSIS WITH THE KHEDR, SALAMA, AND YASEEN (2017) DATA MINING MODEL
The stock price trend prediction is one of the most challenging topics to predict due to its dependence on numerous variables. Several studies have explored various methods for forecasting stock price trends, but much of this research has been conducted on foreign stocks. Based on a review of lit...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/79557 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The stock price trend prediction is one of the most challenging topics to predict due to its
dependence on numerous variables. Several studies have explored various methods for
forecasting stock price trends, but much of this research has been conducted on foreign
stocks. Based on a review of literature from the past five years in the field of data mining, the
methodology proposed by Khedr, Salama, and Yaseen (2017), which combines sentiment
analysis of news with historical stock price attribute data, achieved the highest accuracy
(86.21%) in the training and testing phases compared to other studies. Therefore, the aim of
this Final Project is to integrate the methodology used by Khedr, Salama, and Yaseen (2017)
with stock data listed on the Indonesia Stock Exchange (BEI) to predict stock price trends
that exhibit different characteristics (BBCA, BUMI, ASII). Additionally, this Final Project
will also examine how the predictive model for stock price trends operates. The first step of
this Final Project involves determining the polarity of financial news using a Naive Bayes
classifier. This is followed by the second step, which involves combining the news polarity
with historical stock price data to predict stock price trends using a KNN classifier. The first
step of the Final Project, determining the polarity of financial news, successfully achieved
prediction accuracies ranging from 90.8% to 94.8% in the training and testing phases and
90.6% to 97.3% in the validation phase. The second step, predicting future stock price trends,
achieved prediction accuracies ranging from 71.9% to 90% in the training and testing phases
and 42.1% to 64.6% in the validation phase. |
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