TY - JOUR
T1 - Peramalan Harga Saham Menggunakan Metode Support Vector Machine (SVM)
AU - Chalid, Dony abdul
AU - Cokrodiharjo, Vincentius ryan
PY - 2021/2/5
Y1 - 2021/2/5
N2 - This study aims to analyze the accuracy of the Support Vertor Machine (SVM) model to predict stocks price. A combination of 28 forecasting periods and 30 input period technical indicators was used. Stock transaction data from 31 companies listed on the Indonesian stock exchange and actively traded between March, 2006 and February, 2018 were used. Results show that the highest system performance does not occur when the input period technical indicator is approximately equal to the forecast period. Although, the performance results differ among company stocks. However, the SVM prediction model provides greater profit than buy and hold strategy.
AB - This study aims to analyze the accuracy of the Support Vertor Machine (SVM) model to predict stocks price. A combination of 28 forecasting periods and 30 input period technical indicators was used. Stock transaction data from 31 companies listed on the Indonesian stock exchange and actively traded between March, 2006 and February, 2018 were used. Results show that the highest system performance does not occur when the input period technical indicator is approximately equal to the forecast period. Although, the performance results differ among company stocks. However, the SVM prediction model provides greater profit than buy and hold strategy.
KW - Stock prices
KW - Prediction
KW - Support Vector Machine
KW - Capital Market
KW - Indonesia
UR - http://jurnal.ticmi.co.id/index.php/jpmb/article/view/59
U2 - 10.37194/jpmb.v3i1.59
DO - 10.37194/jpmb.v3i1.59
M3 - Article
SN - 2715-5595
VL - 3
SP - 61
EP - 74
JO - Jurnal Pasar Modal dan Bisnis
JF - Jurnal Pasar Modal dan Bisnis
IS - 1
ER -