Inferring Option Movements Through Residual Transactions: A Quantitative Model
Carl von Havighorst, Vincil Bishop III

TL;DR
This paper introduces a novel quantitative model that predicts option movements by analyzing residual transactions, revealing early market signals and institutional behaviors through machine learning techniques on high-frequency trading data.
Contribution
It presents a new approach that leverages residual transaction analysis combined with machine learning to improve early detection of market trends in options trading.
Findings
Residual transactions reveal institutional sentiment.
Model predicts option movements with improved accuracy.
Real-time data enhances early detection capabilities.
Abstract
This research presents a novel approach to predicting option movements by analyzing residual transactions, which are trades that deviate from standard hedging activities. Unlike traditional methods that primarily focus on open interest and trading volume, this study argues that residuals can reveal nuanced insights into institutional sentiment and strategic positioning. By examining these deviations, the model identifies early indicators of market trends, providing a refined framework for forecasting option prices. The proposed model integrates classical machine learning and regression techniques to analyze patterns in high frequency trading data, capturing complex, non linear relationships. This predictive framework allows traders to anticipate shifts in option values, enhancing strategies for better market timing, risk management, and portfolio optimization. The model's adaptability,…
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Taxonomy
TopicsCapital Investment and Risk Analysis
MethodsNetwork On Network · Focus
