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IES 2008: Adaptive Tutoring seminar. 2. Goals of our work. Learn Science through principles that apply across domainsProcesses, Entities, Relations, Interdependence, and BalancePreparation for Future LearningStudents should become independent learners, even when they move away from the computer e
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1. IES 2008: Adaptive Tutoring seminar Building Students Metacognitive Skills through Interactions with Computer-based Teachable Agents Gautam Biswas
gautam.biswas@vanderbilt.edu
Dept of EECS & ISIS
Vanderbilt University
Collaborators: Dan Schwartz, Kefyn Catley
Postdoc, Students (at Vanderbilt): Rod Roscoe, John Wagster, Hogyeong Jeong, Nancy Morabito, Jim Segedy, Garrett Linn
Supported by Dept. of Education IES, and NSF REESE Awards
2. IES 2008: Adaptive Tutoring seminar 2 Goals of our work Learn Science through principles that apply across domains
Processes, Entities, Relations, Interdependence, and Balance
Preparation for Future Learning
Students should become independent learners, even when they move away from the computer environment
Learning for oneself – ability to assess one’s learning progress
Learning is never a one step process
Cognitive tasks and Metacognitive strategies
3. IES 2008: Adaptive Tutoring seminar 3 Outline of Talk Our Approach to Learning by Teaching
Betty’s Brain, a Teachable Agent
Learning Science by creating Causal Concept Maps
Assessment through self-other monitoring
Adaptive Tutoring
Providing Metacognitive support in support of Preparation for future learning
Experimental Studies
Current/Future Work
4. IES 2008: Adaptive Tutoring seminar 4 Betty’s Brain
5. IES 2008: Adaptive Tutoring seminar 5 Teachable Agents Students teach computer agent using visual representations
Agent’s performance based on what she is taught
Students re-teach agent so that they may do better, (and in that process they learn)
6. Learning Science By creating visual concept map structures
Entities
e.g., fish, macroinvertebrates, dissolved oxygen
Relations
causal: fish consume macroinvertebrates
increase decrease effects
Causal Reasoning
Cause-effect relations extended to chain of events
Fish ? waste ? bacteria ? nutrients ? algae
Interdependence
Multiple dependencies: everything depends on each other IES 2008: Adaptive Tutoring seminar 6
7. IES 2008: Adaptive Tutoring seminar 7 Metacognition to aid Learning Metacognition describes two component processes
Ability to monitor one’s cognitive activities
Ability to take appropriate regulatory steps when problem is detected
Implemented as Self-regulated learning strategies
Involves multiple aspects when learning
Setting goals
Planning
Seeking help
Monitoring one’s own learning
….
8. Monitoring when Problem Solving Self monitoring (cf. to self explanation) requires two coordinated processes
Ability to generate solution steps
Analyze and correct for discrepancies
Our approach: Self-other monitoring while teaching (& learning for oneself)
Provide support to help student’s organize their own learning
Betty: demonstrates self-regulated learning behaviors by example
Mentor: provides additional support and hints IES 2008: Adaptive Tutoring seminar 8
9. IES 2008: Adaptive Tutoring seminar 9 Example regulation strategies
10. IES 2008: Adaptive Tutoring seminar 10 Example regulation strategies
11. IES 2008: Adaptive Tutoring seminar 11 Mentor: other forms of help On-Demand Help: Students select which kind of helps they need
Pedagogical examples
“What should I teach Betty?”
“How can I be sure that Betty learns what I have taught?”
Learning examples
“How do I know that I know enough to teach?”
Domain-content examples
General – What domain content is relevant, chains of reasoning
Specific: “I need help on the quiz.”
Help after quiz taken: Adaptive
ICS & LBT systems – where errors have occurred in concept map and possible fixes
SRL groups – what to read so as to do generate a more correct map Contrasting to the situation in ITSs where the tutor determines when students need help, in our environment, asking for help is a part of the learning process. Students need to be able to evaluate their learning progress as the development of metacognitive strategies. However, the mentor agent can refuse to give help at all or give help in a different category than that the user asks for.Contrasting to the situation in ITSs where the tutor determines when students need help, in our environment, asking for help is a part of the learning process. Students need to be able to evaluate their learning progress as the development of metacognitive strategies. However, the mentor agent can refuse to give help at all or give help in a different category than that the user asks for.
12. IES 2008: Adaptive Tutoring seminar 12 Experimental Studies
13. IES 2008: Adaptive Tutoring seminar 13 Betty’s Brain: Experimental Studies Fifth-grade students teach and learn about river ecosystems in several 45-min. sessions, and complete written pre/post tests
Domain: River ecosystems: interdependence and balance involving: (i) Food Chain, (ii) Photosynthesis and Respiration, and (iii) Waste cycle
They later participate in a transfer (PFL) phase where they learn a new domain (e.g., nitrogen cycle on land, or global warming).
We have compared several versions of the system:
ICS – create a map(no teach) with content feedback
LBT – teach Betty with content feedback
T-SRL – teach Betty with SRL feedback
M-SRL – create a map (no teaching) with SRL feedback
14. IES 2008: Adaptive Tutoring seminar 14 Data Analysis
Performance – learning of domain content
Number of correct concepts + links in students’ final concept maps
Behaviors – sequence of activities
Key student actions are logged
Edit map (EM)
Ask query (AQ)
Request quiz (RQ)
Access resources (RA)
Request explanations (RE/CE)
Betty could sometimes take (QT) or refuse (QD) the quiz
15. IES 2008: Adaptive Tutoring seminar 15 Results – Learning Performance
16. IES 2008: Adaptive Tutoring seminar 16 Behavior Analysis Roscoe, et al. (2008): ICS, LBT, and T-SRL in main study
Map quality was associated with AQ and RE/CE activities
AQ & RE/CE may indicate students’ attempts to regulate their own knowledge
17. Behavior Analysis using HMMs Jeong, et al. (2008): ICS, LBT, and T-SRL in main and transfer
Used hidden Markov models (HMMs) to model learning patterns
States hidden, output observer
Three patterns related to SRL differed by condition
Map Building: EM-RA-RQ
Map Probing: AQ-RA
Map Tracing: AQ-RE-CE
Interpreted models on right
IES 2008: Adaptive Tutoring seminar 17
18. Behavior Analysis with HMMs Stationary probabilities show the likelihood of exhibiting a given state IES 2008: Adaptive Tutoring seminar 18
19. Pre-Post Test Analysis Detailed analyses of students’ written responses to examine learning of five river ecosystem principles
balance, interdependence, microscopic entities, photosynthesis and cellular respiration, pollution
Learning about “microscopic” entities (e.g., oxygen, bacteria, and macroinvertebrates) was strongest
Perhaps, because concept map representations make normally “invisible” concepts explicit.
IES 2008: Adaptive Tutoring seminar 19
20. IES 2008: Adaptive Tutoring seminar 20 Current and Future Work Adaptive Tutoring through Interactive metacognition
Betty emulates aspects of self-regulated learner
Mentor provides additional metacognitive support to remind students of important cognitive learning tasks and to help organize these tasks
Further study of self vs self-other monitoring
Mentor SRL versus Betty SRL
Increased dose of self-other monitoring
Front-of-class (FOC) Betty
Moving TA system into classroom – strong links to science curriculum
Adaptive teaching by the classroom teacher(s)
Learning science
From concepts and their relations to causal reasoning about chain of events (interdependence)
Aggregate Processes and Balance