This paper develops a method for modelling binary response data in a regression model with highly unbalanced class sizes. When the class sizes are highly unbalanced and the minority class represents a rare event, conventional regression analysis, i.e. logistic regression models, could underestimate the probability of the rare event. To overcome this drawback, we introduce a flexible skewed link function based on the quantile function of the generalized extreme value (GEV) distribution in a generalized additive model (GAM). The proposed model is known as generalized extreme value additive (GEVA) regression model, and a modified version of the local scoring algorithm is suggested to estimate it. We apply the proposed model to a dataset on Italian small and medium enterprises (SMEs) to estimate the default probability of SMEs. Our proposal performs better than the logistic (linear or additive) model in terms of predictive accuracy

Calabrese, R., Osmetti, S. A., Improving Forecast of Binary Rare Events Data: A GAM-Based Approach, <<JOURNAL OF FORECASTING>>, 2015; 34 (3): 230-239. [doi:10.1002/for.2335] [http://hdl.handle.net/10807/66139]

Improving Forecast of Binary Rare Events Data: A GAM-Based Approach

Osmetti, Silvia Angela
2015

Abstract

This paper develops a method for modelling binary response data in a regression model with highly unbalanced class sizes. When the class sizes are highly unbalanced and the minority class represents a rare event, conventional regression analysis, i.e. logistic regression models, could underestimate the probability of the rare event. To overcome this drawback, we introduce a flexible skewed link function based on the quantile function of the generalized extreme value (GEV) distribution in a generalized additive model (GAM). The proposed model is known as generalized extreme value additive (GEVA) regression model, and a modified version of the local scoring algorithm is suggested to estimate it. We apply the proposed model to a dataset on Italian small and medium enterprises (SMEs) to estimate the default probability of SMEs. Our proposal performs better than the logistic (linear or additive) model in terms of predictive accuracy
2015
Inglese
Calabrese, R., Osmetti, S. A., Improving Forecast of Binary Rare Events Data: A GAM-Based Approach, <<JOURNAL OF FORECASTING>>, 2015; 34 (3): 230-239. [doi:10.1002/for.2335] [http://hdl.handle.net/10807/66139]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/66139
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