Generalised Partially Linear Regression with Misclassified Data and an Application to Labour Market Transitions

ZEW Discussion Paper Nr. 15-043 // 2015
ZEW Discussion Paper Nr. 15-043 // 2015

Generalised Partially Linear Regression with Misclassified Data and an Application to Labour Market Transitions

We consider the semiparametric generalised linear regression model which has mainstream empirical models such as the (partially) linear mean regression, logistic and multinomial regression as special cases. As an extension to related literature we allow a misclassified covariate to be interacted with a nonparametric function of a continuous covariate. This model is tailormade to address known data quality issues of administrative labour market data. Using a sample of 20m observations from Germany we estimate the determinants of labour market transitions and illustrate the role of considerable misclassification in the educational status on estimated transition probabilities and marginal effects.

Dlugosz, Stephan, Enno Mammen und Ralf Wilke (2015), Generalised Partially Linear Regression with Misclassified Data and an Application to Labour Market Transitions, ZEW Discussion Paper Nr. 15-043, Mannheim.

Autoren/-innen Stephan Dlugosz // Enno Mammen // Ralf Wilke