Quantitative Financial Modeling in Microsoft Excel
Offered By: Udemy
Course Description
Overview
What you'll learn:
- Build a Black-Scholes-Merton option pricing model in MS Excel
- Build a Binomial option pricing model in MS Excel
- Estimate the implied volatility of options using Goal Seek
- Using the Solver function to optimize a portfolio of stocks
- Build a spreadsheet to run a Monte Carlo Simulation for wealth planning
- Build a spreadsheet to compute Value at Risk and Conditional VaR (Historical, Gaussian, Cornish Fisher)
- How to optimize the liquidation of a trading position based on VaR and Trading Liquidity
Excel is an excellent tool for understanding the intricacies involved in financial modeling. The aim in each section of the course is to explain the implementation of the models using Excel.
The models discussed in this course:
1)Black-Scholes-Merton (BSM)Option Pricing Model
You will learn to calculate the price of a European-style call and put option using the Black-Scholes-Merton option pricing model. This includes cases where the underlying stock pays dividend.
After that, you will compute the Option Greeks:Delta, Gamma, Vega, Theta, and Rho for the call and put options.
2) Binomial Option Pricing Model
Using VBA, you will learn to create the calculator for a European-style call and put option using the binomial option pricing model, based on Cox-Ross-Rubinstein (CRR) model.
3) Portfolio Optimization
You will learn to use the Solver function to find the optimal asset allocation for a portfolio of stocks. You will learn to download the stock data and import into Excel, calculate the returns, variance, covariance and Sharpe ratios.
4) Option Implied Volatility
You will learn to use the Goal Seek function to find the implied volatility of a call and put option based on the market price of the options.
5) Value-at-Risk (VaR)and Conditional Value-at-Risk (CVar):Historical, Gaussian and Cornish-Fisher (NEW! Added on 4th June 2020)
Using a selected stock, you will learn to compute the value-at-risk (VaR) and conditional value-at-risk (CVaR) using the historical VaR and historical CVaR, Gaussian VaR and Gaussian CVaR, and Cornish-Fisher VaR and Cornish-Fisher CVaR.
6)Optimization of VaR and Trading Liquidity Risk:Unwinding a Position Optimally (NEW! Added on 4th June 2020)
First, you will learn to calculate the cost of unwinding a position by considering the market risk exposure (measured by VaR) and the cost of liquidating the position (measured by the bid-ask spread). Then, you will determine the optimal liquidation period to minimize the market risk and cost of liquidation.
To benefit from this course, it is advisable that you try building the models as you go through the videos.
Taught by
FM x FM
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