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首页> 外文期刊>The international journal of engineering education >White-Box Decision Tree Algorithms: A Pilot Study on Perceived Usefulness, Perceived Ease of Use, and Perceived Understanding
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White-Box Decision Tree Algorithms: A Pilot Study on Perceived Usefulness, Perceived Ease of Use, and Perceived Understanding

机译:白盒决策树算法:感知有用性,感知易用性和感知理解性的初步研究

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The mainstream in undergraduate data mining algorithm education is using algorithms as black-boxes with known inputs and outputs, while students have the possibility to adjust parameters. Newly proposed white-box algorithms provide students a deeper insight into the structure of an algorithm, and allow them to assemble algorithms from algorithm design components. In this paper a recently proposed data mining framework for white-box decision tree algorithms design will be evaluated. As the white-box approach has been experimentally proven very useful for producing algorithms that perform better on data, in this paper it is reported how students perceive the white-box approach. An open source data mining platform for white-box algorithm design will be evaluated as technologically enhanced learning tool for teaching decision tree algorithms. An experiment on 51 students was conducted. A repeated measures experiment was done: the students first worked with the black-box approach, and then with the white box approach on the same data mining platform. Student's accuracy and time efficiency were measured. Constructs from the technology acceptance model (TAM) were used to measure the acceptance of the proposed platform. It was concluded that, in comparison to the black-box algorithm approach, there is no difference in perceived usefulness, as well as in the accuracy of produced decision tree models. On the other hand, the black-box approach is easier for users than the white-box approach. However, perceived understanding of white-box algorithms is significantly higher. Evidence is given that the proposed platform could be very useful for student's education in learning data mining algorithms.
机译:本科生进行数据挖掘算法教育的主流是将算法用作具有已知输入和输出的黑匣子,而学生则可以调整参数。最新提出的白盒算法为学生提供了对算法结构的更深入了解,并允许他们从算法设计组件中组装算法。本文将评估最近提出的用于白盒决策树算法设计的数据挖掘框架。由于实验已证明白盒方法对于产生对数据表现更好的算法非常有用,因此本文报道了学生如何看待白盒方法。一个用于白盒算法设计的开源数据挖掘平台将被评估为用于教学决策树算法的技术增强型学习工具。对51名学生进行了实验。进行了重复测量实验:学生首先在相同的数据挖掘平台上使用黑盒方法,然后使用白盒方法。测量学生的准确性和时间效率。技术验收模型(TAM)的构造用于衡量所提出平台的接受程度。结论是,与黑盒算法方法相比,感知到的有用性以及所生成决策树模型的准确性没有差异。另一方面,黑盒方法对用户来说比白盒方法更容易。但是,人们对白盒算法的理解要高得多。有证据表明,该平台对于学习数据挖掘算法的学生的教育非常有用。

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