The purpose of this study was to develop a logistic regression model for the prediction of school enrolment of Kenyan children with intellectual disabilities. The initial set of predictors included three demographic variables (child's gender, child's level of intellectual disability, and parents' level of education) and six factors of parents' expectations and beliefs about future outcomes and education of children with intellectual disabilities. Previous research implicated some of these concepts in school enrolment of children with disabilities in African countries without providing a particular prediction model. The hypothesised factor structure of the instrument developed in this study was tested by using a confirmatory maximum likelihood factor analysis. A stepwise logistic regression was conducted with the initial model including all nine predictors of school enrolment of children with intellectual disabilities in Kenya. Significant predictors in the final logistic regression model were (a) parents' expectations about social acceptance of the child, (b) parents' bias against educating children with intellectual disabilities, (c) parents' beliefs about a segregated school option, (d) parents' beliefs about the appropriateness of the child's school education, and (e) parents' level of education.
Prediction of School Enrolment of Children with Intellectual Disabilities in Kenya: The role of parents' expectations, beliefs, and education
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