International Journal of System and Software Engineering

1. Apoorva Uday Nayak

2. Megha Ugalmugale

3. Vishwanjali Gaikwad

4. Vahida Z. Attar

Received
04-Sep-2014
Accepted
-
Published
04-Sep-2014
Abstract
The stock market is one of the most important sources for companies to raise money. The prediction of stock prices has always been a challenging task. Investors are always in search of profitable trading strategies which provide accurate trading signals. Pair trading is an investment strategy of matching a long position (buy) with a short position (sell) in two historically correlated stocks. In pair trading, the use of correlation or co-integration as a dependence measure is central. Some traditional techniques also assume symmetric distribution of data along the mean zero. However, in case of financial assets the occurrence of symmetric distributions is very rare and, hence, the use of these techniques may lead to erroneous results. Copula is a relatively new pair trading technique which describes dependence structures for linear and non-linear distributions without making rigid assumptions. Copula, thus, overcomes the shortcomings of traditional pair trading techniques and gives accurate trading signals. This paper is a study of different types of copulas and their application in finance to fit different types of data.
Locked
Subscribed
Open Access