VolTS: A Volatility-based Trading System to forecast Stock Markets Trend using Statistics and Machine Learning
Ivan Letteri

TL;DR
This paper introduces a novel volatility-based trading system that combines statistical analysis and machine learning to forecast stock market trends by analyzing volatility patterns and predictive relationships between stocks.
Contribution
It presents a new trading strategy that leverages volatility clustering and Granger causality to identify predictive stock relationships for improved trading decisions.
Findings
The strategy effectively captures profitable trading opportunities.
It demonstrates robustness through extensive backtesting.
The approach leverages volatility clusters and causality for trend prediction.
Abstract
Volatility-based trading strategies have attracted a lot of attention in financial markets due to their ability to capture opportunities for profit from market dynamics. In this article, we propose a new volatility-based trading strategy that combines statistical analysis with machine learning techniques to forecast stock markets trend. The method consists of several steps including, data exploration, correlation and autocorrelation analysis, technical indicator use, application of hypothesis tests and statistical models, and use of variable selection algorithms. In particular, we use the k-means++ clustering algorithm to group the mean volatility of the nine largest stocks in the NYSE and NasdaqGS markets. The resulting clusters are the basis for identifying relationships between stocks based on their volatility behaviour. Next, we use the Granger Causality Test on the clustered…
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Taxonomy
TopicsStock Market Forecasting Methods · Financial Markets and Investment Strategies · Market Dynamics and Volatility
