Machine Learning For Market Volatility Prediction
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Date
2023-03-01
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
جامعة الوادي - University of Eloued
Abstract
Market volatility prediction is one of the most commonly used terms in the trading
market today. Price movements, market volatility, and trading risks are all represented by
realized volatility. A small change in volatility affects the expected return on all assets.
In this research, To predict volatility, we will use the dataset provided by the Kaggle
platform. Optiver is a leading global electronic market maker and is committed to
continuously improving financial markets. improving access and prices for options.
Exchange traded funds(ETFs), On numerous exchanges around the world, cash equities,
bonds, and foreign currencies are traded. The prediction models we used in our study are
LightGBM and XGBoost and CatBoost and Linear Regression, and we concluded some
related works on forecasting volatility. Then we ran our models. The results show
that the LightGBM model is the best among these models, as it achieved the
lowest root mean square error percentage (RMSPE) score of: 0.286, And the
highest score in the coefficient of determination
is: 0.817, and the RMSPE for
other models: XGBoost, CatBoost and Linear regression is, respectively: 0.303,
0.302 and 0.347, and the score of
is also: 0.791, 0.784, 0.766.
Description
مقال
Keywords
Machine learning ; prediction market volatility
Citation
Atallah ، Amor. Machine Learning For Market Volatility Prediction. مجلة الاقتصاد والتنمية المستدامة.مج 06. العدد01. 2022/03/01 . جامعة الوادي [اكتب تاريخ الاطلاع] متاح على الرابط [انسخ رابط التحميل]