首页> 外文会议>ASME international design engineering technical conferences and computers and information in engineering conference 2013 >CORRELATING PROBLEM/PROCESS EXAM QUESTION COMPLEXITY TO ANTICIPATED EFFORT: A MODELING PROTOCOL
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CORRELATING PROBLEM/PROCESS EXAM QUESTION COMPLEXITY TO ANTICIPATED EFFORT: A MODELING PROTOCOL

机译:使问题/过程考试的复杂性与预期的努力相关:一种建模协议

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This paper presents the initial investigation of the use of complexity as a surrogate for problem difficulty in predicting the effort or point value of an exam problem. In previous research, complexity of graph-based models has been used to predict market value of products using function models and to predict assembly time from connectivity graphs. This research investigates the potential of applying graphical representations and complexity metrics for exam problem solutions using expert assigned values as an appropriate method to offer point values for new exam questions. The factors and sources of problem difficulty are examined and compared to the structural complexity of a graphical representation of the problem solution. Specifically, this paper presents a protocol for developing the graphical representation. Multiple participants used the protocol to create graphical models of three exam questions to test and validate the usability of the protocol. A secondary protocol was tested to improve the rater agreement for use of the protocol. This protocol will be used for transforming exam problems into graphical models that can be analyzed with the connectivity complexity metrics. These metrics will be used to create predictive models for point assignments based on historical data.
机译:本文介绍了使用复杂性作为问题难度替代指标的初步调查,以预测考试问题的工作量或分数。在先前的研究中,基于图的模型的复杂性已用于使用功能模型预测产品的市场价值,并根据连接图预测组装时间。这项研究调查了使用专家分配的值作为为新的考试题提供点值的适当方法,将图形表示和复杂性度量应用于考试题解决方案的潜力。检查问题难度的因素和来源,并将其与问题解决方案的图形表示的结构复杂度进行比较。具体来说,本文提出了开发图形表示的协议。多个参与者使用该协议创建了三个考试题的图形模型,以测试和验证协议的可用性。测试了辅助协议,以改进使用该协议的评估者协议。该协议将用于将考试问题转换为可以使用连接复杂性指标进行分析的图形模型。这些度量将用于基于历史数据为点分配创建预测模型。

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