### Browsing by Author "Hanslo, Monique"

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- ItemOpen AccessThe design and use of 'alternate'assessments of academic literacy as selection mechanisms in higher education(Taylor & Francis, 2009) Cliff, Alan; Hanslo, MoniqueIn a context where applicants to higher education study vary widely in terms of their prior educational, linguistic and socio-economic backgrounds, it becomes extremely important to assess the extent to which these applicants might be said to be ready to cope with the typical academic reading and writing demands of higher education study. This assessment becomes even more crucial in a country like South Africa, where issues of equity of access, selection and redress remain a central challenge. Put simply, the challenge is to identify academically talented students from educationally diverse backgrounds, especially in cases where the educational backgrounds of these applicants may have militated against them, fully demonstrating their talent in conventional (e.g. school-leaving) examinations. This article describes the theoretical basis for the development of tests of academic literacy that downplay the role of prior learning in the assessment of academic readiness. The uses of these tests as selection mechanisms complementary to conventional academic assessments are also outlined. Empirical data are presented that demonstrate associations between these tests and academic performance in higher education. Issues and challenges regarding the validity and reliability of these tests are presented, and the implications of major research findings on the tests debated and deliberated upon.
- ItemOpen AccessTechniques for handling clustered binary data(2002) Hanslo, Monique; Juritz, JuneOver the past few decades there has been increasing interest in clustered studies and hence much research has gone into the analysis of data arising from these studies. It is erroneous to treat clustered data, where observations within a cluster are correlated with each other, as one would treat independent data. It has been found that point estimates are not as greatly affected by clustering as are the standard deviations of the estimates. But as a consequence, confidence intervals and hypothesis testing are severely affected. Therefore one has to approach the analysis of clustered data with caution. Methods that specifically deal with correlated data have been developed. Analysis may be further complicated when the outcome variable of interest is binary rather than continuous. Methods for estimation of proportions, their variances, calculation of confidence intervals and a variety of techniques for testing the homogeneity of proportions have been developed over the years (Donner and Klar, 1993; Donner, 1989, and Rao and Scott, 1992). The methods developed within the context of experimental design generally involve incorporating the effect of clustering in the analysis. This cluster effect is quantified by the intracluster correlation and needs to be taken into account when estimating proportions, comparing proportions and in sample size calculations. In the context of observational studies, the effect of clustering is expressed by the design effect which is the inflation in the variance of an estimate that is due to selecting a cluster sample rather than an independent sample. Another important aspect of the analysis of complex sample data that is often neglected is sampling weights. One needs to recognise that each individual may not have the same probability of being selected. These weights adjust for this fact (Little et al, 1997). Methods for modelling correlated binary data have also been discussed quite extensively. Among the many models which have been proposed for analyzing binary clustered data are two approaches which have been studied and compared: the population-averaged and cluster-specific approach. The population-averaged model focuses on estimating the effect of a set of covariates on the marginal expectation of the response. One example of the population-averaged approach for parameter estimation is known as generalized estimating equations, proposed by Liang and Zeger (1986). It involves assuming that elements within a cluster are independent and then imposing a correlation structure on the set of responses. This is a useful application in longitudinal studies where a subject is regarded as a cluster. Then the parameters describe how the population-averaged response rather than a specific subject's response depends on the covariates of interest. On the other hand, cluster specific models introduce cluster to cluster variability in the model by including random effects terms, which are specific to the cluster, as linear predictors in the regression model (Neuhaus et al, 1991). Unlike the special case of correlated Gaussian responses, the parameters for the cluster specific model obtained for binary data describe different effects on the responses compared to that obtained from the population-averaged model. For longitudinal data, the parameters of a cluster-specific model describe how a specific individuals probability of a response depends on the covariates. The decision to use either of these modelling methods depends on the questions of interest. Cluster-specific models are useful for studying the effects of cluster-varying covariates and when an individual's response rather than an average population's response is the focus. The population-averaged model is useful when interest lies in how the average response across clusters changes with covariates. A criticism of this approach is that there may be no individual with the characteristics of the population-averaged model.