Literature DB >> 30631705

ElectronixTutor: an intelligent tutoring system with multiple learning resources for electronics.

Arthur C Graesser1,2, Xiangen Hu1, Benjamin D Nye3, Kurt VanLehn4, Rohit Kumar1, Cristina Heffernan5, Neil Heffernan6, Beverly Woolf7, Andrew M Olney1, Vasile Rus1, Frank Andrasik1, Philip Pavlik1, Zhiqiang Cai1, Jon Wetzel4, Brent Morgan1, Andrew J Hampton1, Anne M Lippert1, Lijia Wang1, Qinyu Cheng1, Joseph E Vinson1, Craig N Kelly1, Cadarrius McGlown1, Charvi A Majmudar1, Bashir Morshed8, Whitney Baer1.   

Abstract

BACKGROUND: The Office of Naval Research (ONR) organized a STEM Challenge initiative to explore how intelligent tutoring systems (ITSs) can be developed in a reasonable amount of time to help students learn STEM topics. This competitive initiative sponsored four teams that separately developed systems that covered topics in mathematics, electronics, and dynamical systems. After the teams shared their progress at the conclusion of an 18-month period, the ONR decided to fund a joint applied project in the Navy that integrated those systems on the subject matter of electronic circuits. The University of Memphis took the lead in integrating these systems in an intelligent tutoring system called ElectronixTutor. This article describes the architecture of ElectronixTutor, the learning resources that feed into it, and the empirical findings that support the effectiveness of its constituent ITS learning resources.
RESULTS: A fully integrated ElectronixTutor was developed that included several intelligent learning resources (AutoTutor, Dragoon, LearnForm, ASSISTments, BEETLE-II) as well as texts and videos. The architecture includes a student model that has (a) a common set of knowledge components on electronic circuits to which individual learning resources contribute and (b) a record of student performance on the knowledge components as well as a set of cognitive and non-cognitive attributes. There is a recommender system that uses the student model to guide the student on a small set of sensible next steps in their training. The individual components of ElectronixTutor have shown learning gains in previous decades of research.
CONCLUSIONS: The ElectronixTutor system successfully combines multiple empirically based components into one system to teach a STEM topic (electronics) to students. A prototype of this intelligent tutoring system has been developed and is currently being tested. ElectronixTutor is unique in its assembling a group of well-tested intelligent tutoring systems into a single integrated learning environment.

Entities:  

Keywords:  ASSISTments; AutoTutor; Dragoon; Electronics; Intelligent tutoring systems; System integration

Year:  2018        PMID: 30631705      PMCID: PMC6310412          DOI: 10.1186/s40594-018-0110-y

Source DB:  PubMed          Journal:  Int J STEM Educ        ISSN: 2196-7822


  7 in total

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Review 2.  AutoTutor: a tutor with dialogue in natural language.

Authors:  Arthur C Graesser; Shulan Lu; George Tanner Jackson; Heather Hite Mitchell; Mathew Ventura; Andrew Olney; Max M Louwerse
Journal:  Behav Res Methods Instrum Comput       Date:  2004-05

3.  The knowledge-learning-instruction framework: bridging the science-practice chasm to enhance robust student learning.

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Journal:  Med Educ       Date:  2012-07       Impact factor: 6.251

5.  Cognitive tutor: applied research in mathematics education.

Authors:  Steven Ritter; John R Anderson; Kenneth R Koedinger; Albert Corbett
Journal:  Psychon Bull Rev       Date:  2007-04

6.  Active-constructive-interactive: a conceptual framework for differentiating learning activities.

Authors:  Michelene T H Chi
Journal:  Top Cogn Sci       Date:  2009-01

7.  Learning Styles: Concepts and Evidence.

Authors:  Harold Pashler; Mark McDaniel; Doug Rohrer; Robert Bjork
Journal:  Psychol Sci Public Interest       Date:  2008-12-01
  7 in total
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Journal:  Behav Res Methods       Date:  2022-01-11

2.  The impacts of learning analytics and A/B testing research: a case study in differential scientometrics.

Authors:  Ryan S Baker; Nidhi Nasiar; Weiyi Gong; Chelsea Porter
Journal:  Int J STEM Educ       Date:  2022-02-14
  2 in total

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