An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations

We apply a latent class tobit framework to the analysis of panel data on charitable donations at the household level where the latent class aspect of the model splits households into two groups, which we subsequently interpret as “low” donators and “high” donators. The tobit part of the model explor...

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Main Authors: Brown, S., Greene, W., Harris, Mark N., Taylor, K.
Format: Journal Article
Published: Elsevier BV * North-Holland 2015
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/15937
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author Brown, S.
Greene, W.
Harris, Mark N.
Taylor, K.
author_facet Brown, S.
Greene, W.
Harris, Mark N.
Taylor, K.
author_sort Brown, S.
building Curtin Institutional Repository
collection Online Access
description We apply a latent class tobit framework to the analysis of panel data on charitable donations at the household level where the latent class aspect of the model splits households into two groups, which we subsequently interpret as “low” donators and “high” donators. The tobit part of the model explores the determinants of the amount donated by each household conditional on being in that class. We extend the standard latent class tobit panel approach to simultaneously include random effects, to allow for heteroskedasticity and to incorporate the inverse hyperbolic sine (IHS) transformation of the dependent variable. Our findings, which are based on U.S. panel data drawn from five waves of the Panel Study of Income Dynamics, suggest two distinct classes of donators. There is a clear disparity between the probabilities of zero donations across these classes, with one class dominated by the observed zero givers and associated with relatively low levels of predicted giving. We find clear evidence of both heteroskedasticity and random effects. In addition, all IHS parameters were significantly different from zero and different across classes. In combination, these findings endorse the importance of our three modelling extensions and suggest that treating the population as a single homogeneous group of donors, as is common in the existing literature, may lead to biased parameter estimates and erroneous policy inference. Although we use this model to explain charitable donations, we note that it has wide applicability for researchers across the social sciences.
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institution Curtin University Malaysia
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publishDate 2015
publisher Elsevier BV * North-Holland
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spelling curtin-20.500.11937-159372018-07-19T07:32:45Z An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations Brown, S. Greene, W. Harris, Mark N. Taylor, K. Tobit Donations Latent class Panel data Charity We apply a latent class tobit framework to the analysis of panel data on charitable donations at the household level where the latent class aspect of the model splits households into two groups, which we subsequently interpret as “low” donators and “high” donators. The tobit part of the model explores the determinants of the amount donated by each household conditional on being in that class. We extend the standard latent class tobit panel approach to simultaneously include random effects, to allow for heteroskedasticity and to incorporate the inverse hyperbolic sine (IHS) transformation of the dependent variable. Our findings, which are based on U.S. panel data drawn from five waves of the Panel Study of Income Dynamics, suggest two distinct classes of donators. There is a clear disparity between the probabilities of zero donations across these classes, with one class dominated by the observed zero givers and associated with relatively low levels of predicted giving. We find clear evidence of both heteroskedasticity and random effects. In addition, all IHS parameters were significantly different from zero and different across classes. In combination, these findings endorse the importance of our three modelling extensions and suggest that treating the population as a single homogeneous group of donors, as is common in the existing literature, may lead to biased parameter estimates and erroneous policy inference. Although we use this model to explain charitable donations, we note that it has wide applicability for researchers across the social sciences. 2015 Journal Article http://hdl.handle.net/20.500.11937/15937 10.1016/j.econmod.2015.06.018 Elsevier BV * North-Holland fulltext
spellingShingle Tobit
Donations
Latent class
Panel data
Charity
Brown, S.
Greene, W.
Harris, Mark N.
Taylor, K.
An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations
title An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations
title_full An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations
title_fullStr An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations
title_full_unstemmed An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations
title_short An inverse hyperbolic sine heteroskedastic latent class panel tobit model: An application to modelling charitable donations
title_sort inverse hyperbolic sine heteroskedastic latent class panel tobit model: an application to modelling charitable donations
topic Tobit
Donations
Latent class
Panel data
Charity
url http://hdl.handle.net/20.500.11937/15937