Integrating feature selection and regression methods with technical indicators for predicting Apple Inc. stock prices
Fatemeh Moodi, Amir Jahangard-Rafsanjani

TL;DR
This study demonstrates that combining feature selection with regression models and technical indicators significantly improves the accuracy of Apple stock price predictions over a 13-year period.
Contribution
It introduces an integrated approach of feature selection and regression modeling with technical indicators for enhanced stock price forecasting.
Findings
Feature selection improves model accuracy substantially.
Linear and Ridge Regression achieved the lowest error metrics.
Certain technical indicators like Squeeze_pro and Bollinger Bands are most predictive.
Abstract
Stock price prediction is influenced by a variety of factors, including technical indicators, which makes Feature selection crucial for identifying the most relevant predictors. This study examines the impact of feature selection on stock price prediction accuracy using technical indicators. A total of 123 technical indicators and 10 regression models were evaluated using 13 years of Apple Inc. data. The primary goal is to identify the best combination of indicators and models for improved forecasting. The results show that a 3-day time window provides the highest prediction accuracy. Model performance was assessed using five error-based metrics. Among the models, Linear Regression and Ridge Regression achieved the best overall performance, each with a Mean Squared Error (MSE) of 0.00025. Applying feature selection significantly improved model accuracy. For example, the Multi-layered…
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Taxonomy
TopicsStock Market Forecasting Methods
MethodsAdaptive Discriminator Augmentation · Masked autoencoder · Feature Selection
