ARTICLE
TITLE

Google Trends and Technical Indicator based Machine Learning for Stock Market Prediction

SUMMARY

The stock market often attracts investors to invest, but it is not uncommon for investors to experience losses when buying and selling shares. This causes investors to hesitate to determine when to sell or buy shares in the stock market. The accurate stock price prediction will help investors to decide when to buy or sell their shares. In this study, we propose a new approach to predicting stocks using machine learning with a combination of features from stock price features, technical indicators, and Google trends data. Three well-known machine learning algorithms such as Support Vector Regression (SVR), Multilayer Perceptron (MLP), and Multiple Linear regression are used to predict future stock prices. The test results show that the SVR outperformed the MLP and Multiple Linear Regression to predict stock prices for Indonesian stocks with an average MAPE is 0.50%. The SVR can predict the stock price close to the actual price.

 Articles related

Danielle Sharpe,Richard Hopkins,Robert L. Cook,Catherine W. Striley    

ObjectiveTo comparatively analyze Google, Twitter, and Wikipedia byevaluating how well change points detected in each web-based sourcecorrespond to change points detected in CDC ILI data.IntroductionTraditional influenza surveillance relies on reports of... see more


Helen K. Green,Obaghe Edeghere,Alex Elliot,Ingemar Cox,Rachel McKendry,Gillian Smith    

ObjectiveTo carry out an observational study to explore what added value Google search data can provide to existing routine syndromic surveillance systems in England for a range of conditions of public health importance and summarise lessons learned for ... see more


Rebecca T. Gluskin, Mauricio Santillana, John S. Brownstein    




Arminditya Fajri Akbar, Harry Budi Santoso, Panca O. Hadi Putra, Satrio Bhaskoro Yudhoatmojo    

Availability of access to online learning platforms is expected to support online learning activities amid the COVID-19 pandemic. There are several issues experienced by students in online learning activities. These issues are related to Internet access,... see more