Redirigiendo al acceso original de articulo en 15 segundos...
ARTÍCULO
TITULO

Model Selection Test for the Heavy-Tailed Distributions under Censored Samples with Application in Financial Data

Hanieh Panahi    

Resumen

Numerous heavy-tailed distributions are used for modeling financial data and in problems related to the modeling of economics processes. These distributions have higher peaks and heavier tails than normal distributions. Moreover, in some situations, we cannot observe complete information about the data. Employing the efficient estimation method and then choosing the best model in this situation are very important. Thus, the purpose of this article is to propose a new interval for comparing the two heavy-tailed candidate models and examine its suitability in the financial data under complete and censored samples. This interval is equivalent to encapsulating the results of many hypotheses tests. A maximum likelihood estimator (MLE) is used for evaluating the parameters of the proposed heavy-tailed distribution. A real dataset representing the top 30 companies of the Tehran Stock Exchange indices is used to illustrate the derived results.

 Artículos similares

       
 
Apichat Chaweewanchon and Rujira Chaysiri    
With the advances in time-series prediction, several recent developments in machine learning have shown that integrating prediction methods into portfolio selection is a great opportunity. In this paper, we propose a novel approach to portfolio formation... ver más

 
Yixuan Li, Charalampos Stasinakis and Wee Meng Yeo    
Supply Chain Finance (SCF) has gradually taken on digital characteristics with the rapid development of electronic information technology. Business audit information has become more abundant and complex, which has increased the efficiency and increased t... ver más
Revista: Forecasting

 
Philippe St-Aubin and Bruno Agard    
The selection of an accurate performance metric is highly important to evaluate the quality of a forecasting method. This evaluation may help to select between different forecasting tools of forecasting outputs, and then support many decisions within a c... ver más
Revista: Forecasting

 
Pieter Cawood and Terence Van Zyl    
The techniques of hybridisation and ensemble learning are popular model fusion techniques for improving the predictive power of forecasting methods. With limited research that instigates combining these two promising approaches, this paper focuses on the... ver más
Revista: Forecasting

 
Abas Omar Mohamed    
The study investigated the empirical role of past values of Somalia?s GDP growth rates in its future realizations. Using the Box?Jenkins modeling method, the study utilized 250 in-sample quarterly time series data to forecast out-of-the-sample Somali GDP... ver más
Revista: Forecasting