Jurnal Ilmiah FIFO
Vol 16, No 1 (2024)

Stock Prediction for Indonesia Stock Exchange with Long Short-Term Memory

Abdi Wahab (Universitas Mercu Buana)
Ali Herdian (Universitas Mercu Buana)
Dian Wirawan (Universitas Mercu Buana)
Yuwan Jumaryadi (Universitas Mercu Buana)
Syamsir Alam (Universitas Mercu Buana)
Andrew Fiade (UIN Syarif Hidayatullah)



Article Info

Publish Date
24 Jun 2024

Abstract

Predicting stock prices through different analyses and techniques is highly challenging. The task is complicated further by fluctuating market conditions and the impact of news, necessitating the consideration of numerous factors. The advancements in machine learning and deep learning have led many researchers to use algorithms like RNN with LSTM for predictions. In this study, we aim to predict stock prices on the Indonesia Stock Exchange using LSTM, focusing on optimizing the hidden layer and activation function. We focus on some stock data with good liquidation in the Indonesia Stock Exchange. The comparison performance between models proposed in this research will be the method in this research. The result showed that the LSTM model with hyperbolic tan activation method performed better than the LSTM model with sigmoid activation method. The future research based on this research, we can compare several other activation methods.

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Journal Info

Abbrev

fifio

Publisher

Subject

Computer Science & IT

Description

Jurnal Ilmiah FIFO UMB diterbitkan oleh program studi Sistem Informasi Fakultas Ilmu KOmputer merupakan hasil penelitian, penelitian konseptual dan ilmu terapan, yang mencakup dan berfokus pada bidang Rekayasa Perangkat Lunak, E-Business, E-Government, Mobile Computing, Data mining, data warehouse, ...