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Singelmann, Lauren Nichole – ProQuest LLC, 2022
To meet the national and international call for creative and innovative engineers, many engineering departments and classrooms are striving to create more authentic learning spaces where students are actively engaging with design and innovation activities. For example, one model for teaching innovation is Innovation-Based Learning (IBL) where…
Descriptors: Engineering Education, Design, Educational Innovation, Models
Joshua Beemer – ProQuest LLC, 2020
Student success efficacy studies are aimed at assessing instructional practices and learning environments by evaluating the success of and characterizing student subgroups that may benefit from such modalities. We develop an ensemble learning approach to perform these analytics tasks with specific focus on estimating individualized treatment…
Descriptors: Information Retrieval, Data Analysis, State Universities, Learning Analytics
McKinley, Geoffrey L. – ProQuest LLC, 2018
Retrieval is a potent method of learning, with a variety of indirect and direct benefits. The "testing effect" describes the finding that retrieving information enhances long-term retention of that information, relative to restudying. Learners appear to be unaware of this benefit, and in turn, underutilize retrieval. As technology has…
Descriptors: Long Term Memory, Information Seeking, Learning Processes, Memory
Guo, Zhen – ProQuest LLC, 2010
A basic and classical assumption in the machine learning research area is "randomness assumption" (also known as i.i.d assumption), which states that data are assumed to be independent and identically generated by some known or unknown distribution. This assumption, which is the foundation of most existing approaches in the literature, simplifies…
Descriptors: Artificial Intelligence, Man Machine Systems, Probability, Data