YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts

Earning via real-time predictions with the experience in the visible trend directions of an investment instrument in the past requires a different perspective on charts. Indicators and formations within the scope of technical analysis constitute the most significant basis of this perspective. Those...

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Main Authors: Serdar Birogul, Gunay Temur, Utku Kose
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9092995/
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spelling doaj-22c59d031aae4f608cf8aba2a88b80482021-03-30T02:42:27ZengIEEEIEEE Access2169-35362020-01-018918949191510.1109/ACCESS.2020.29942829092995YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick ChartsSerdar Birogul0Gunay Temur1https://orcid.org/0000-0002-7197-5804Utku Kose2Technology Faculty Department of Computer Engineering, Duzce University, Düzce, TurkeyDepartment of Electrical-Electronic and Computer Engineering, Institute of Science, Duzce University, Düzce, TurkeyDepartment of Computer Engineering, Engineering Faculty, Süleyman Demirel University, Isparta, TurkeyEarning via real-time predictions with the experience in the visible trend directions of an investment instrument in the past requires a different perspective on charts. Indicators and formations within the scope of technical analysis constitute the most significant basis of this perspective. Those who can generate a high income in financial markets and even be more successful than large companies are actually the ones interpreting the data in a different way. In this study, a model which had never been encountered in the literature before, was designed through a different perspective on the same data, enabling the movements of an investment element over the 2D candlestick chart to be recognized as a “Buy-Sell” object respectively and to decide on the trend direction as a result. The model is trained by state-of-the-art, real-time object detection system (You Only Look Once) YOLO; for the training, one-year candlestick charts belonging to the stocks traded on Borsa İstanbul (BIST) between 2000-2018 were used. The model, which can make a “Buy-Sell” decision without the need for an additional time series except for the views on the visual candlestick charts, is promising in terms of its successful predictions. Its ultimate aim is to provide a foresight strengthening the “Buy-Sell” decisions to be made in the decision-making process following the other basic and technical analyses in addition to its stand-alone use in making investment decisions. The effect of this foresight on the success can clearly be seen on the test results received. In the results, the model was found to be successful by 85% while a 100% profit was generated. Besides, the model can be used for all the time series for which candlestick charts can be created.https://ieeexplore.ieee.org/document/9092995/YOLOobject detection and classificationdecision support systemsdeep learningfinancetrend decision
collection DOAJ
language English
format Article
sources DOAJ
author Serdar Birogul
Gunay Temur
Utku Kose
spellingShingle Serdar Birogul
Gunay Temur
Utku Kose
YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts
IEEE Access
YOLO
object detection and classification
decision support systems
deep learning
finance
trend decision
author_facet Serdar Birogul
Gunay Temur
Utku Kose
author_sort Serdar Birogul
title YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts
title_short YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts
title_full YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts
title_fullStr YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts
title_full_unstemmed YOLO Object Recognition Algorithm and “Buy-Sell Decision” Model Over 2D Candlestick Charts
title_sort yolo object recognition algorithm and “buy-sell decision” model over 2d candlestick charts
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Earning via real-time predictions with the experience in the visible trend directions of an investment instrument in the past requires a different perspective on charts. Indicators and formations within the scope of technical analysis constitute the most significant basis of this perspective. Those who can generate a high income in financial markets and even be more successful than large companies are actually the ones interpreting the data in a different way. In this study, a model which had never been encountered in the literature before, was designed through a different perspective on the same data, enabling the movements of an investment element over the 2D candlestick chart to be recognized as a “Buy-Sell” object respectively and to decide on the trend direction as a result. The model is trained by state-of-the-art, real-time object detection system (You Only Look Once) YOLO; for the training, one-year candlestick charts belonging to the stocks traded on Borsa İstanbul (BIST) between 2000-2018 were used. The model, which can make a “Buy-Sell” decision without the need for an additional time series except for the views on the visual candlestick charts, is promising in terms of its successful predictions. Its ultimate aim is to provide a foresight strengthening the “Buy-Sell” decisions to be made in the decision-making process following the other basic and technical analyses in addition to its stand-alone use in making investment decisions. The effect of this foresight on the success can clearly be seen on the test results received. In the results, the model was found to be successful by 85% while a 100% profit was generated. Besides, the model can be used for all the time series for which candlestick charts can be created.
topic YOLO
object detection and classification
decision support systems
deep learning
finance
trend decision
url https://ieeexplore.ieee.org/document/9092995/
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