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Modeling Insect-Egg Data With Excess Zeros Using Zero-Inflated Regression Models

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Date

2010

Journal Title

Journal ISSN

Volume Title

Publisher

Hacettepe Univ, Fac Sci

Abstract

As zero-inflated observations occur very often in studies on plant protection, models taking into account zero-inflated observations are frequently required. Especially, zero-inflated observations occur in large numbers for insects whose post-oviposition period lasts long, or that generally lay their eggs during the first clays of the oviposition period. For the data used in this study, 1114 (43.84%) of the 2541 observations were zero. In the selection of an appropriate regression model, zero-inflated negative binomial regression was chosen as the best model. In all regression models, the day of laying and the three different hosts were seen to have a significant effect on daily egg numbers (p < 0.01).

Description

Kaydan, Mehmet Bora/0000-0002-0677-255X

Keywords

Zero-Inflated Count Data, Overdispersion, Zero-Inflated Models, Hurdle Models

Turkish CoHE Thesis Center URL

WoS Q

Q3

Scopus Q

Q3

Source

Volume

39

Issue

2

Start Page

273

End Page

282