Stevens R H, Najafi K
Dept. of Microbiology & Immunology UCLA School of Medicine.
Proc Annu Symp Comput Appl Med Care. 1992:179-83.
Artificial neural networks were trained to recognize the test selection patterns of students' successful solutions to seven immunology computer based simulations. When new student's test selections were presented to the trained neural network, their problem solutions were correctly classified as successful or non-successful > 90% of the time. Examination of the neural networks output weights after each test selection revealed a progressive increase for the relevant problem suggesting that a successful solution was represented by the neural network as the accumulation of relevant tests. Unsuccessful problem solutions revealed two patterns of students performances. The first pattern was characterized by low neural network output weights for all seven problems reflecting extensive searching and lack of recognition of relevant information. In the second pattern, the output weights from the neural network were biased towards one of the remaining six incorrect problems suggesting that the student mis-represented the current problem as an instance of a previous problem.
人工神经网络经过训练,以识别学生在七个基于计算机的免疫学模拟中成功解决方案的测试选择模式。当将新学生的测试选择呈现给经过训练的神经网络时,他们的问题解决方案在90%以上的时间里被正确分类为成功或不成功。每次测试选择后对神经网络输出权重的检查显示,相关问题的权重逐渐增加,这表明神经网络将成功的解决方案表示为相关测试的积累。不成功的问题解决方案揭示了学生表现的两种模式。第一种模式的特征是,所有七个问题的神经网络输出权重都很低,这反映出广泛的搜索以及对相关信息的识别不足。在第二种模式中,神经网络的输出权重偏向于其余六个错误问题中的一个,这表明学生将当前问题错误地表示为先前问题的一个实例。