E-Book, Englisch, 243 Seiten, eBook
Reihe: Springer Finance
E-Book, Englisch, 243 Seiten, eBook
Reihe: Springer Finance
ISBN: 978-3-540-27642-5
Verlag: Springer
Format: PDF
Kopierschutz: 1 - PDF Watermark
Zielgruppe
Research
Autoren/Hrsg.
Weitere Infos & Material
Basic Probability Theory and Markov Chains.- Estimation Techniques.- Non-Parametric Method of Estimation.- Unit Root, Cointegration and Related Issues.- VAR Modeling.- Time Varying Volatility Models.- State-Space Models (I).- State-Space Models (II).- Discrete Time Real Asset Valuation Model.- Discrete Time Model of Interest Rate.- Global Bubbles in Stock Markets and Linkages.- Forward FX Market and the Risk Premium.- Equity Risk Premia from Derivative Prices.
4 Non-Parametric Method of Estimation (p.31)
4.1 Background
In some financial applications we may face a functional relationship between two variables Y and X without the benefit of a structural model to restrict the parametric form of the relation. In these situations, we can apply nonparametric estimation techniques to capture a wide variety of non- Hnearities without recourse to any one particular specification of the nonUnear relation. In contrast to a highly structured or parametric approach to estimating non-linearities, nonparametric estimation requires few assumptions about the nature of the non-linearities.
This is not to say that the approach is free of drawbacks. To begin with, the highly data-intensive nature of the process can make it somewhat costly. Further, nonparametric estimation is poorly suited to small samples and has been found to over fit the data. A regression curve describes the general relationship between an explanatory variable X and a response variable Y. Having observed X, the average value of Y is given by the regression function. The form of the regression function may teil us where higher Y-values are to be expected for certain values of X or where a special sort of dependence is indicated. A pre-selected parametric model might be too restricted to fit unexpected features of the data. The term "non-parametric" refers to the flexible functional form of the regression curve.
The non-parametric approach to a regression curve serves four main functions. First, it provides a versatile method for exploring a general relationship between two variables. Second, it gives predictions of observations yet to be made without reference to a fixed parametric model. Third, it provides a tool for finding spurious observations by studying the influence of isolated points. Fourth, it constitutes a flexible method for substituting missing values or interpolating between adjacent X values. The flexibility of the method is extremely helpful in a preliminary and exploratory Statistical analysis of a data set. When no a priori model Information about the regression curve is available, non-parametric analysis can help in providing simple parametric formulations of the regression relationship.