Jump-Diffusion Modeling

Algorithm

Jump-diffusion modeling extends the Black-Scholes framework by incorporating both continuous price movements, modeled by Brownian motion, and sudden, discontinuous jumps representing unforeseen market events; this is particularly relevant in cryptocurrency markets given their inherent volatility and susceptibility to news-driven price shocks. The model’s parameters, jump frequency and jump size distribution, are calibrated using historical options data and implied volatility surfaces, providing a more nuanced assessment of derivative pricing than traditional models. Consequently, it allows for a more accurate valuation of options, especially those with short maturities or those significantly out-of-the-money, where jump risk is more pronounced.