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Composing user models through logic analysis.

机译:通过逻辑分析来构成用户模型。

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摘要

The evaluation of tutorial strategies, interface designs, and courseware content is an area of active research in the medical education community. Many of the evaluation techniques that have been developed (e.g., program instrumentation), commonly produce data that are difficult to decipher or to interpret effectively. We have explored the use of decision tables to automatically simplify and categorize data for the composition of user models--descriptions of student's learning styles and preferences. An approach to user modeling that is based on decision tables has numerous advantages compared with traditional manual techniques or methods that rely on rule-based expert systems or neural networks. Decision tables provide a mechanism whereby overwhelming quantities of data can be condensed into an easily interpreted and manipulated form. Compared with conventional rule-based expert systems, decision tables are more amenable to modification. Unlike classification systems based on neural networks, the entries in decision tables are readily available for inspection and manipulation. Decision tables, descriptions of observations of behavior, also provide automatic checks for ambiguity in the tracking data.
机译:对指导策略,界面设计和课件内容的评估是医学教育界积极研究的领域。已开发的许多评估技术(例如程序工具)通常会产生难以有效解读或解释的数据。我们已经探索了使用决策表来自动简化和分类数据以构成用户模型的过程-用户对学习风格和偏好的描述。与依赖于基于规则的专家系统或神经网络的传统手动技术或方法相比,基于决策表的用户建模方法具有许多优势。决策表提供了一种机制,通过该机制,可以将大量数据压缩为易于解释和操纵的形式。与传统的基于规则的专家系统相比,决策表更易于修改。与基于神经网络的分类系统不同,决策表中的条目易于检查和操作。决策表(行为观察的描述)还提供了自动检查跟踪数据中的歧义的功能。

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