摘要: The aim of this last chapter is threefold. First, we want to give the reader further insights into estimation methods for models presented in volume. Second, discuss available software We will not sketch all possibilities software, but only those directly relevant item response modeling as seen Third, illustrate use various programs a basic model, Rasch verbal aggression data.

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