ISSN: 0186-1042 ISSN-e: 2448-8410
OLS versus quantile regression in extreme distributions
PDF

Keywords

Quantile regression
decision making
factor models
Value effect

How to Cite

Maiti, M. (2018). OLS versus quantile regression in extreme distributions. Accounting & Management, 64(2), e102. https://doi.org/10.22201/fca.24488410e.2018.1702

Abstract

Financial data mostly have fat tail and an analyst is much concerned about the tail part. Most of the study in finance extensible uses linear regression but when it comes to tail analysis it becomes ineffective. So, the present study tries to address the same by using Quantile regression in the tail analysis to study the value effect in 10 portfolios formed from BSE 500 stocks based on P/B ratio. The study result clearly indicates that Quantile regression estimates give more comprehensive and vibrant picture of the unpredictable effect of the predictors on the response variables.

https://doi.org/10.22201/fca.24488410e.2018.1702
PDF

© 2018, Facultad de Contaduría y Administración, Universidad Nacional Autónoma de México. All rights reserved. Publication of the article implies full assignment of property rights (copyright) in Journal of Contaduría y Administración. The publication mreserves the right to total or partial reproduction of the work in other print, electronic or any other alternative means, but always recognizing its responsibility.

 

License for Published Content

Unless otherwise stated, all contents of the electronic edition of the journal are distributed under a license and distribution "Creative Commons Attribution-Noncommercial 4.0 International" (CC-by). You can see from here the version of the license information. This circumstance must be expressly stated in this way when necessary.

Metadata License

The metadata of papers published by Contaduría y Administración are in the public domain, through the publisher's waiver of all rights to the work under copyright law worldwide, including all rights and related rights, to the extent permitted by law. You may copy, modify, and distribute the metadata, even for commercial purposes, without requesting permission.

Downloads

Download data is not yet available.