Implementasi Long Short-Term Memory (LSTM) dan Integer Sequence Matching pada Sistem Chatbot Informasi Saham Indonesia
Implementation of Long Short-Terms Memorys (LSTM) and Integer Sequence Matching in Indonesian Stock Information Chatbot System

Date
2023Author
Michael, Michael
Advisor(s)
Nababan, Erna Budhiarti
Sitompul, Opim Salim
Metadata
Show full item recordAbstract
The percentage of Indonesians investing in the Indonesian stock market is still relatively
low compared to other countries. This is due to a lack of information about stocks
among the Indonesian population. This problem is a key reason for the need for
accessible stock information tools, one of which is a chatbot. Besides being accessible
anytime and anywhere, a chatbot also serves as a two-way question-and-answer
platform, making the distribution of information much easier. The development of a
stock chatbot using Long Short-Term Memory (LSTM) methods and Integer Sequence
Matching can help address this issue by providing answers to user queries about stocks.
It also includes supporting features such as a stock learning module, information on
stock sectors, information on stock types per sector, and real-time stock prices, all of
which can attract the interest of Indonesian investors. The data used is obtained from
OJK-certified securities to ensure high-quality answers. Evaluation shows that the
resulting chatbot has an accuracy rate of 90% with an average response time of around
0.89 seconds. The chatbot is positively assessed by the general public, including 30
persons who have never invested in Indonesian stocks, 30 persons who have invested
in Indonesian stocks, and 4 Indonesian stock experts. It is considered to be easy to
understand and bring benefit. It is assessed to enhance interest of 24 out of 30 persons
who have never invested in Indonesian stocks to invest stock in Indonesia stock market.
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- Undergraduate Theses [765]