A reinforcement learning approach to adaptive remediation in online training

Author(s):  
Randall Spain ◽  
Jonathan Rowe ◽  
Andy Smith ◽  
Benjamin Goldberg ◽  
Robert Pokorny ◽  
...  

Advances in artificial intelligence (AI) and machine learning can be leveraged to tailor training based on the goals, learning needs, and preferences of learners. A key component of adaptive training systems is tutorial planning, which controls how scaffolding is structured and delivered to learners to create dynamically personalized learning experiences. The goal of this study was to induce data-driven policies for tutorial planning using reinforcement learning (RL) to provide adaptive scaffolding based on the Interactive, Constructive, Active, Passive framework for cognitive engagement. We describe a dataset that was collected to induce RL-based scaffolding policies, and we present the results of our policy analyses. Results showed that the best performing policies optimized learning gains by inducing an adaptive fading approach in which learners received less cognitively engaging forms of remediation as they advanced through the training course. This policy was consistent with preliminary analyses that showed constructive remediation became less effective as learners progressed through the training session. Results also showed that learners’ prior knowledge impacted the type of scaffold that was recommended, thus showing evidence of an aptitude–treatment interaction. We conclude with a discussion of how AI-based training can be leveraged to enhance training effectiveness as well as directions for future research.

2019 ◽  
Vol 2 (2) ◽  
pp. 336-364 ◽  
Author(s):  
Rebecca Sachs ◽  
Yuka Akiyama ◽  
Kimi Nakatsukasa

Abstract To explore the value of introspective measures in aptitude-treatment interaction (ATI) research, this study analyzed the cognitive profiles and concurrent think-alouds of six university learners of Japanese who were highly successful, moderately successful, or unsuccessful under two computer-mediated feedback conditions in a larger (N = 80) quantitative ATI investigation (Sachs, 2011). That study had made indirect inferences regarding relationships among individual differences (IDs), cognitive processes, and learning on the basis of correlational results. Using Leow’s (2015) depth-of-processing (DoP) framework as a lens, what we found in the qualitative verbalization data highlighted that learners in the same condition with similar strengths in the IDs that are statistically associated with performance at the group level may nonetheless engage in different cognitive processes and achieve different learning outcomes, and vice versa. The findings also pointed toward more complex ID-DoP and ID-ID interactions that future research could explore, such as the possibility that a weakness in memory might limit the benefits of metalinguistic knowledge and analytic processing in a condition where group-level correlations suggest analysis is relevant to success, or that analytic processing might enhance the value of memory in a condition where memory is relevant to success. In our conclusions, we argue for the value of mixed-methods research in this area.


2018 ◽  
Vol 40 (5) ◽  
pp. 289-297
Author(s):  
Kala L. H. Taylor ◽  
Christopher H. Skinner ◽  
Samantha S. Cazzell ◽  
Shelby D. Gibbons ◽  
Kyle Ryan ◽  
...  

Students with intellectual disability often have difficulty reading commonly used words. Researchers have found altering printed text from fluent, easy-to-read font, to disfluent, difficult-to-read font can enhance comprehension and recall. An adapted alternating treatments design was used to evaluate and compare sight-word acquisition and maintenance in three postsecondary students with intellectual disability when flashcards were presented in fluent (i.e., 14-point Arial) and disfluent (i.e., 14-point Juice ITC reduced to 70% transparency) fonts. Results showed all three students acquired and maintained both fluent and disfluent words, with two of the three students learning more fluent words. These findings suggest altering fonts to make them difficult to read can hinder, rather than enhance, word learning in students with intellectual disability. Directions for future research are provided with a focus on the need for aptitude-treatment interaction studies.


1999 ◽  
Vol 15 (1) ◽  
pp. 3-13 ◽  
Author(s):  
Robert J. Sternberg ◽  
Elena L. Grigorenko ◽  
Michel Ferrari ◽  
Pamela Clinkenbeard

Summary: This article describes a triarchic analysis of an aptitude-treatment interaction in a college-level introductory-psychology course given to selected high-school students. Of the 326 total participants, 199 were selected to be high in analytical, creative, or practical abilities, or in all three abilities, or in none of the three abilities. The selected students were placed in a course that either well matched or did not match their pattern of analytical, creative, and practical abilities. All students were assessed for memory, analytical, creative, and practical achievement. The data showed an aptitude-treatment interaction between students' varied ability patterns and the match or mismatch of these abilities to the different instructional groups.


2015 ◽  
Vol 4 (1) ◽  
pp. 79
Author(s):  
Herlina '

This research intent to see how big influence of approaching aptitude treatment interaction (ATI) to mathematics concept grasp student brazes VIII SMP Country 25 Pekanbaru. This research constitute my research experiment attention. Subjec in observational it is student braze VIII4 as agglomerate as experiment by totals student 40 person and VIII3'S classes as agglomerate as controls by totals students 40. Base analisis data to pretes's score to know student startup ability on agglomerate experiment and control group. On student experiment group that will study by ATI'S approaching has average early learned result mathematics (pretes) as big as 17,15. Meanwhile on group controls student who will study by ordinary learning (conventional) have average early learned result mathematics (pretes) as big as 13,85. Analisis is data to postes's score on agglomerate learned student experiment with ATI'S approaching has average final learned result mathematics (postes) as big as 74,63. Meanwhile on group controls learned student with ordinary learning (conventional) have average final learned result mathematics (postes) as big as 62,93. Of quiz result distinctive both of average usufruct to study mathematics finals (postes) that points out that there is difference which signifikan among both of experiment class with control class.Keywords: aptitude treatment interaction (ATI), mathematics concept


2020 ◽  
Vol 2 (1) ◽  
pp. 117-149
Author(s):  
Mary B. Ziskin

<?page nr="117"?>Abstract Calls for higher education institutions to implement improvements guided by “data-driven” processes are prevalent and widespread. Despite the pervasiveness of this turn toward data, research on how data-use works on the ground in postsecondary institutions—that is, how individuals within institutions make sense of education data and use it to inform practice—is still developing.Drawing on Habermas’ Theory of Communicative Action (TCA), critical-race theory, and methodological guidance on critical-qualitative research methods, this paper synthesizes methodological and substantive insights from P–12 data-use research, with an eye to applying these insights to critical questions on postsecondary educational equity. The result of the review and analysis is a theoretical framework and a set of methodological recommendations for future research on the perceptions and experiences of college faculty, administrators, and practitioners, regarding their data-use and its implications for equity.


Machines ◽  
2021 ◽  
Vol 9 (1) ◽  
pp. 13
Author(s):  
Yuhang Yang ◽  
Zhiqiao Dong ◽  
Yuquan Meng ◽  
Chenhui Shao

High-fidelity characterization and effective monitoring of spatial and spatiotemporal processes are crucial for high-performance quality control of many manufacturing processes and systems in the era of smart manufacturing. Although the recent development in measurement technologies has made it possible to acquire high-resolution three-dimensional (3D) surface measurement data, it is generally expensive and time-consuming to use such technologies in real-world production settings. Data-driven approaches that stem from statistics and machine learning can potentially enable intelligent, cost-effective surface measurement and thus allow manufacturers to use high-resolution surface data for better decision-making without introducing substantial production cost induced by data acquisition. Among these methods, spatial and spatiotemporal interpolation techniques can draw inferences about unmeasured locations on a surface using the measurement of other locations, thus decreasing the measurement cost and time. However, interpolation methods are very sensitive to the availability of measurement data, and their performances largely depend on the measurement scheme or the sampling design, i.e., how to allocate measurement efforts. As such, sampling design is considered to be another important field that enables intelligent surface measurement. This paper reviews and summarizes the state-of-the-art research in interpolation and sampling design for surface measurement in varied manufacturing applications. Research gaps and future research directions are also identified and can serve as a fundamental guideline to industrial practitioners and researchers for future studies in these areas.


Sign in / Sign up

Export Citation Format

Share Document