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Master's Dissertation
DOI
https://doi.org/10.11606/D.104.2017.tde-13092017-083037
Document
Author
Full name
Natália Lombardi de Oliveira
E-mail
Institute/School/College
Knowledge Area
Date of Defense
Published
São Carlos, 2017
Supervisor
Committee
Campos, Adriano Polpo de (President)
Lopez, Veronica Andrea Gonzalez
Takada, Hellinton Hatsuo
Title in Portuguese
Distribuição preditiva do preço de um ativo financeiro: abordagens via modelo de série de tempo Bayesiano e densidade implícita de Black & Scholes
Keywords in Portuguese
Função densidade de probabilidade implícita
Função densidade de probabilidade preditiva
Modelo autorregressivo Bayesiano
Smile da volatilidade
Volatilidade implícita
Abstract in Portuguese
Apresentamos duas abordagens para obter uma densidade de probabilidades para o preço futuro de um ativo: uma densidade preditiva, baseada em um modelo Bayesiano para série de tempo e uma densidade implícita, baseada na fórmula de precificação de opções de Black & Scholes. Considerando o modelo de Black & Scholes, derivamos as condições necessárias para obter a densidade implícita do preço do ativo na data de vencimento. Baseando-­se nas densidades de previsão, comparamos o modelo implícito com a abordagem histórica do modelo Bayesiano. A partir destas densidades, calculamos probabilidades de ordem e tomamos decisões de vender/comprar um ativo. Como exemplo, apresentamos como utilizar estas distribuições para construir uma fórmula de precificação.
Title in English
Predictive distribution of a stock price: Bayesian time series model and Black & Scholes implied density approaches
Keywords in English
Auto regressive Bayesian model
Implied probability density funcion
Implied volatility,Volatility smile
Predictive probability density function
Abstract in English
We present two different approaches to obtain a probability density function for the stocks future price: a predictive distribution, based on a Bayesian time series model, and the implied distribution, based on Black & Scholes option pricing formula. Considering the Black & Scholes model, we derive the necessary conditions to obtain the implied distribution of the stock price on the exercise date. Based on predictive densities, we compare the market implied model (Black & Scholes) with a historical based approach (Bayesian time series model). After obtaining the density functions, it is simple to evaluate probabilities of one being bigger than the other and to make a decision of selling/buying a stock. Also, as an example, we present how to use these distributions to build an option pricing formula.
 
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Publishing Date
2017-09-13
 
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