Python implementation of pricing analytics and Monte Carlo simulations for stochastic volatility models including log-normal SV model, Heston
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Updated
Nov 17, 2024 - Python
Python implementation of pricing analytics and Monte Carlo simulations for stochastic volatility models including log-normal SV model, Heston
Pricing and Analysis of Financial Derivative by Credit Suisse using Monte Carlo, Geometric Brownian Motion, Heston Model, CIR model, estimating greeks such as delta, gamma etc, Local volatility model incorporated with variance reduction.(For MH4518 Project)
Python code of commonly used stochastic models for Monte-Carlo simulations
Implementation of option pricing models using Numba that performs better. This entire project has utilized as little libraries as possible, even though certain models have their own Machine Learning Model with assessment and performance.
Quantification of risk metrics (VaR, ES, Loss Distribution, Hedging Error) via Monte Carlo simulation of stochastic models (GBM, Heston) with parameter estimation (MLE) on historical data.
Tool for pricing exotic options in the Heston model
The project aims to compare the effectiveness of the Heston model and WGAN-GP in modeling financial time series data.
Simulation of Affine Jump Diffusions Using Kyriakou-Brignone-Fusai Method
My Master's Thesis Project : MC LRV and ANNs for Financial Derivative Pricing
Simulation of Affine Jump Diffusions Using Broadie-Kaya Method
Portfolio Optimization with Feedback Strategies Based on Artificial Neural Networks
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