Abstract

In Korea, because of the high interest in stock investment, many researchers have attempted to predict stock prices using deep learning. Studies to predict stock prices have been continuously conducted. However, the type of stock data that is suitable for deep learning has not been established, and it has not been confirmed that the developed stock prediction model can actually result in a profit. To date, designing a good deep learning model depends on how well the user can extract the features that represent all the characteristics of the training data. Among the various available features for training and test data, we determined that the use of event binary features can make stock price prediction models perform better. An event binary feature refers to a 0 or 1 value describing whether an indicator is satisfied (1) or not (0) for any given day and stock. We proposed and compared a stock price prediction model with three different feature combinations to verify the importance of binary features. As a result, we derived a prediction model that defeated the market (KOSPI and KODAQ (KOSPI (Korea Composite Stock Price Index) and KOSDAQ (Korean Securities Dealers Automated Quotations) is Korean stock indices)). The results suggest that deep learning is suitable for stock price prediction.

Highlights

  • The development of artificial intelligence has had a significant impact on predictive research regarding uncertainty in the financial sector

  • We developed three stock price prediction models to determine the importance of input feature selection using input features with different characteristics

  • We found that there were calculated in the form of a histogram to determine the value distributions

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Summary

Introduction

The development of artificial intelligence has had a significant impact on predictive research regarding uncertainty in the financial sector. A robo-advisor is a way to manage personal assets and is gaining popularity around the world It helps users make various investment decisions [1]. This renders Koreans in the private sector. This renders Koreans in the private who notare wealthy unable unable to collect lend or money. The increased interest in stock investments boosting researchononstock stockprice priceprediction If such such research can lead to suitable prediction of stock prices, the low interest rates of saving accounts cancan be research can lead to suitable prediction of stock prices, the low interest rates of saving accounts overcome, creating opportunities for investors to expand their assets.

Nineteen‐year
Recent Stock Price Prediction Studies Using Various Prediction Models
Related Studies with Approaches Similar to Ours
Our Previous Studies on Stock Price Prediction
Design and Development of the Stock Price Prediction Model
Model 2
Model 3
Target Vector
Feature Normalization
Experimental Results
Performance Evaluation through Fund Simulation
Conclusions

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