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Identifying Learning Conditions that Minimize Mind Wandering by Modeling Individual Attributes

机译:通过建模个别属性来识别最小化心灵徘徊的学习条件

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The propensity to involuntarily disengage by zoning out or mind wandering (MW) is a common phenomenon that has negative effects on learning. The ability to stay focused while learning from instructional texts involves factors related to the text, to the task, and to the individual. This study explored the possibility that learners could be placed in optimal conditions (task and text) to reduce MW based on an analysis of individual attributes. Students studied four texts which varied along dimensions of value and difficulty while reporting instances of MW. Supervised machine learning techniques based on a small set of individual difference attributes determined the optimal condition for each participant with some success when considering value and difficulty separately (kappas of .16 and .24; accuracy of 59% and 64% respectively). Results are discussed in terms of creating a learning system that prospectively places learners in the optimal condition to increase learning by minimizing MW.
机译:通过分区或思绪徘徊(MW)不由自主地脱离(MW)是对学习产生负面影响的常见现象。从教学文本学习的同时保持专注的能力涉及与文本相关的因素,以及任务以及个人。本研究探讨了学习者可以在最佳条件(任务和文本)中放置的可能性,以减少基于个人属性的分析的MW。学生研究了四个文本,沿着价值和困难的尺寸而变化,同时报告了MW的情况。基于一小组单个差异属性的监督机器学习技术确定了在考虑价值和难度分别时的成功(kappas的难度)确定了每个参与者的最佳条件(kappas .24;准确度分别为59%和64%)。结果是根据创建一个学习系统,前瞻性地将学习者置于最佳状态,以通过最小化MW来增加学习。

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