Credit default swap (CDS) prediction model & trading strategy


Autoria(s): Dutra, Tiago Mota
Contribuinte(s)

Pereira, João Pedro

Data(s)

25/08/2015

25/08/2015

01/01/2015

Resumo

This project focuses on the study of different explanatory models for the behavior of CDS security, such as Fixed-Effect Model, GLS Random-Effect Model, Pooled OLS and Quantile Regression Model. After determining the best fitness model, trading strategies with long and short positions in CDS have been developed. Due to some specifications of CDS, I conclude that the quantile regression is the most efficient model to estimate the data. The P&L and Sharpe Ratio of the strategy are analyzed using a backtesting analogy, where I conclude that, mainly for non-financial companies, the model allows traders to take advantage of and profit from arbitrages.

UNL - NSBE

Identificador

http://hdl.handle.net/10362/15345

201473437

Idioma(s)

eng

Direitos

openAccess

Palavras-Chave #Credit default swap #Econometric prediction model #Quantile regression #Trading strategy
Tipo

masterThesis