Article ID Journal Published Year Pages File Type
7408681 International Journal of Forecasting 2012 12 Pages PDF
Abstract
A time-varying probability density function, or the corresponding cumulative distribution function, may be estimated nonparametrically by using a kernel and weighting the observations using schemes derived from time series modelling. The parameters, including the bandwidth, may be estimated by maximum likelihood or cross-validation. Diagnostic checks may be carried out directly on residuals given by the predictive cumulative distribution function. Since tracking the distribution is only viable if it changes relatively slowly, the technique may need to be combined with a filter for scale and/or location. The methods are applied to data on the NASDAQ index and the Hong Kong and Korean stock market indices.
Related Topics
Social Sciences and Humanities Business, Management and Accounting Business and International Management
Authors
, ,