Modelling the breeding of Aedes Albopictus species in an urban area in Pulau Pinang using polynomial regression

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Abstract

Polynomial regression is used to model a curvilinear relationship between a response variable and one or more predictor variables. It is a form of a least squares linear regression model that predicts a single response variable by decomposing the predictor variables into an nth order polynomial. In a curvilinear relationship, each curve has a number of extreme points equal to the highest order term in the polynomial. A quadratic model will have either a single maximum or minimum, whereas a cubic model has both a relative maximum and a minimum. This study used quadratic modeling techniques to analyze the effects of environmental factors: temperature, relative humidity, and rainfall distribution on the breeding of Aedes albopictus, a type of Aedes mosquito. Data were collected at an urban area in south-west Penang from September 2010 until January 2011. The results indicated that the breeding of Aedes albopictus in the urban area is influenced by all three environmental characteristics. The number of mosquito eggs is estimated to reach a maximum value at a medium temperature, a medium relative humidity and a high rainfall distribution. © 2014 AIP Publishing LLC.

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Salleh, N. H. M., Ali, Z., Noor, N. M., Baharum, A., Saad, A. R., Sulaiman, H. M., & Ahmad, W. M. A. W. (2014). Modelling the breeding of Aedes Albopictus species in an urban area in Pulau Pinang using polynomial regression. In AIP Conference Proceedings (Vol. 1605, pp. 844–849). American Institute of Physics Inc. https://doi.org/10.1063/1.4887700

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