Can we imitate the principal investor's behavior to learn option price?
Xin Jin

TL;DR
This paper introduces a novel framework that imitates principal investor behavior using Bayesian neural networks and reinforcement learning to determine optimal option prices without relying on traditional stochastic models.
Contribution
It proposes a new approach combining imitation learning, Bayesian neural networks, and reinforcement learning for option pricing, bypassing conventional stochastic process assumptions.
Findings
Imitates investor decision-making to generate stock price paths.
Learns option prices through reinforcement learning on simulated paths.
Avoids reliance on preset probability distributions.
Abstract
This paper presents a framework of imitating the principal investor's behavior for optimal pricing and hedging options. We construct a non-deterministic Markov decision process for modeling stock price change driven by the principal investor's decision making. However, low signal-to-noise ratio and instability that are inherent in equity markets pose challenges to determine the state transition (stock price change) after executing an action (the principal investor's decision) as well as decide an action based on current state (spot price). In order to conquer these challenges, we resort to a Bayesian deep neural network for computing the predictive distribution of the state transition led by an action. Additionally, instead of exploring a state-action relationship to formulate a policy, we seek for an episode based visible-hidden state-action relationship to probabilistically imitate…
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Taxonomy
TopicsStock Market Forecasting Methods · Energy Load and Power Forecasting · Forecasting Techniques and Applications
