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Improving Internal Consistency inConditionalProbability Estimation With an Intelligent Tutoring System and Web-based Tutorials

机译:使用智能辅导系统和基于Web的教程来提高条件概率估计的内部一致性

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Three web-based laboratory experiments explored the efficacy of three different web-based tutorials designed to improve performance on Bayesian conditional probability estimation problems. In each experiment, participants estimated the probability of two events, and two conditional probabilities P(A|B) and P(B|A). Problems reflected five distinct relationships between two sets: identical sets, mutually exclusive sets, subsets, overlapping sets, and independent sets. Performance was measured against two benchmarks: internal inconsistency, a type of fallacy, and semantic coherence, a constellation of estimates of P(A), P(B), P(A|B), and P(B|A) that are consistent with the relationship among sets presented in the problem statement. As predicted by Fuzzy-Trace Theory, in all three experiments, problems depicting identical sets, mutually exclusive sets, and independent sets yielded superior performance with respect to inconsistency and semantic coherence than problems depicting subsets and overlapping sets. In Experiment 1, a web-based tutorial teaching the logic of the 2x2 table reduced internal inconsistency for overlapping sets problems. In Experiment 2 a web-based tutorial using Euler diagrams was effective in reducing inconsistency and increasing semantic coherence for overlapping sets and subsets problems. Experiment 3 employed AutoTutor Lite, the first web-based Intelligent Tutoring System with two-way interactions with people in natural language (English). AutoTutor Lite is cross-platform enabled with talking animated agents that converse with learners using Latent Semantic Analysis to "understand" natural language. AutoTutor Lite elicits verbal responses from the learner through a textbox and encourages them to further elaborate their understanding. AutoTutor Lite tutorial significantly reduced internal inconsistency on overlapping sets and subsets problems.
机译:三个基于Web的实验室实验探索了三种不同的基于Web的教程的功效,这些教程旨在提高贝叶斯条件概率估计问题的性能。在每个实验中,参与者估计两个事件的概率以及两个条件概率P(A | B)和P(B | A)。问题反映了两个集合之间的五个截然不同的关系:相同集合,互斥集合,子集,重叠集合和独立集合。绩效是根据两个基准进行衡量的:内部不一致,谬论和语义连贯性,P(A),P(B),P(A | B)和P(B | A)的估计星座图。与问题陈述中提出的集合之间的关系一致。正如模糊跟踪理论所预测的那样,在所有三个实验中,描述相同集合,互斥集合和独立集合的问题在一致性和语义连贯性方面都比描述子集和重叠集合的问题表现出更好的性能。在实验1中,一个基于Web的教程讲授了2x2表的逻辑,从而减少了重叠集问题的内部不一致。在实验2中,使用欧拉图的基于Web的教程有效地减少了重叠集和子集问题的不一致并增加了语义一致性。实验3使用了AutoTutor Lite,这是第一个基于Web的智能辅导系统,该系统与人们以自然语言(英语)进行双向交互。 AutoTutor Lite具有跨平台的功能,具有说话的动画代理,可以使用潜在语义分析与学生进行对话,以“理解”自然语言。 AutoTutor Lite通过文本框引起学习者的口头反馈,并鼓励他们进一步阐述自己的理解。 AutoTutor Lite教程极大地减少了重叠集和子集问题的内部不一致。

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