The quality of assessment determines the quality of learning, and is characterized by validity, reliability and difficulty. Mastery of learning is generally represented by the difficulty levels of assessment items. A very large number of variables are identified in the literature to measure the difficulty level. These variables, which are not completely independent of one another, are categorized into learner dependent, learner independent, generic, non-generic and score based. This research proposes a model for predicting the difficulty level of assessment items in engineering courses using learner independent and generic variables. An ordinal regression model is developed for predicting the difficulty level, and uses six variables including three stimuli variables (item presentation, usage of technical notations and number of resources), two content related variables (number of concepts and procedures) and one task variable (number of conditions). Experimental results from three engineering courses provide around 80% accuracy in classification of items using the proposed model.
翻译:评估的质量决定了学习的质量,其特点是有效性、可靠性和难度。学习的熟练程度一般以评估项目的难度水平为代表。文献中查明了大量变量以衡量困难程度。这些变量并非完全独立于不同的变量,被归类为学习者依赖、学习者独立、通用、非遗传和得分。这项研究提出了一个模型,用以预测工程课程中评估项目的困难程度,使用学习者独立和通用变量。开发了一种正统回归模型,用于预测困难程度,并使用六个变量,包括三个刺激变量(项目列报、技术说明的使用和资源数量)、两个内容相关变量(概念和程序的数量)和一个任务变量(条件的数量)。三个工程课程的实验结果提供了使用拟议模型对项目的分类的大约80%的准确性。