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Daily Stock Price Forecasting Using Deep Neural Network Model

심층 신경회로망 모델을 이용한 일별 주가 예측

  • Hwang, Heesoo (Department of Electrical and Electronic Engineering, Halla University)
  • 황희수 (한라대학교 전기전자공학과)
  • Received : 2018.04.04
  • Accepted : 2018.06.20
  • Published : 2018.06.28

Abstract

The application of deep neural networks to finance has received a great deal of attention from researchers because no assumption about a suitable mathematical model has to be made prior to forecasting and they are capable of extracting useful information from large sets of data, which is required to describe nonlinear input-output relations of financial time series. The paper presents a new deep neural network model where single layered autoencoder and 4 layered neural network are serially coupled for stock price forecasting. The autoencoder extracts deep features, which are fed into multi-layer neural networks to predict the next day's stock closing prices. The proposed deep neural network is progressively learned layer by layer ahead of the final learning of the total network. The proposed model to predict daily close prices of KOrea composite Stock Price Index (KOSPI) is built, and its performance is demonstrated.

심층 신경회로망은 적합한 수학적 모델에 대한 어떠한 가정 없이 데이터로부터 유용한 정보를 추출해서 예측에 필요한 입출력 관계를 정의할 수 있기 때문에 최근 시계열 예측 분야에서 주목 받고 있다. 본 논문에서는 주가의 일별 종가를 예측하기 위한 심층 신경회로망 모델을 제안한다. 제안된 심층 신경회로망은 예측 정밀도를 높이기 위해 단일 층의 오토인코더와 4층의 신경회로망이 결합된 구조를 갖는다. 오토인코더 층은 주가 예측에 필요한 최적의 입력 특징을 추출하고 4층의 신경회로망은 추출된 특징을 사용해 주가 예측에 필요한 동특성을 반영하여 주가를 출력한다. 제안된 심층 신경회로망의 학습은 층별로 단계적으로 이뤄지며 최종 단계에서 전체 심층 신경회로망에 대해 한 번 더 학습이 실행된다. 본 논문에 제안된 방법으로 KOrea composite Stock Price Index (KOSPI) 일별 종가를 예측하는 심층 신경회로망을 구현하고 기존 방법과 예측 정확도를 비교, 평가한다.

Keywords

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