Abstract

Analysis of risk measures associated with price series datamovements and its predictions are of strategic importance in the financial markets as well as to policy makers in particular for short- and longterm planning for setting up economic growth targets. For example, oilprice risk-management focuses primarily on when and how an organization can best prevent the costly exposure to price risk. Value-at-Risk (VaR) is the commonly practised instrument to measure risk and is evaluated by analysing the negative/positive tail of the probability distributions of the returns (profit or loss). In modelling applications, least-squares estimation (LSE)-based linear regression models are often employed for modeling and analyzing correlated data. These linear models are optimal and perform relatively well under conditions such as errorsfollowing normal or approximately normal distributions, being free of large size outliers and satisfyingthe Gauss-Markov assumptions. However, often in practical situations, the LSE-based linear regressionmodels fail to provide optimal results, for instance, in non-Gaussian situations especially when the errorsfollow distributions with fat tails and error terms possess a finite variance. This is the situation in case of risk analysis which involves analyzing tail distributions.Thus, applications of the LSE-based regression models may be questioned for appropriateness and may have limited applicability. We have carried out the risk analysis of Iranian crude oil price databased on the Lp-norm regression models and have noted that the LSE-based models do not alwaysperform the best. We discuss results from the L1, L2 and L∞-norm based linear regression models.ACM Computing Classification System (1998): B.1.2, F.1.3, F.2.3, G.3, J.2.

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