Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations

Despite widespread recognition by science educators, researchers and K-12 frameworks that scientific inquiry should be an essential part of science education, typical classrooms and assessments still emphasize rote vocabulary, facts, and formulas. One of several reasons for this is that the rigorous...

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Main Author: Sao Pedro, Michael A.
Other Authors: Wouter van Joolingen, Committee Member
Format: Others
Published: Digital WPI 2013
Subjects:
Online Access:https://digitalcommons.wpi.edu/etd-dissertations/168
https://digitalcommons.wpi.edu/cgi/viewcontent.cgi?article=1167&context=etd-dissertations
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spelling ndltd-wpi.edu-oai-digitalcommons.wpi.edu-etd-dissertations-11672019-03-22T05:42:39Z Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations Sao Pedro, Michael A. Despite widespread recognition by science educators, researchers and K-12 frameworks that scientific inquiry should be an essential part of science education, typical classrooms and assessments still emphasize rote vocabulary, facts, and formulas. One of several reasons for this is that the rigorous assessment of complex inquiry skills is still in its infancy. Though progress has been made, there are still many challenges that hinder inquiry from being assessed in a meaningful, scalable, reliable and timely manner. To address some of these challenges and to realize the possibility of formative assessment of inquiry, we describe a novel approach for evaluating, tracking, and scaffolding inquiry process skills. These skills are demonstrated as students experiment with computer-based simulations. In this work, we focus on two skills related to data collection, designing controlled experiments and testing stated hypotheses. Central to this approach is the use and extension of techniques developed in the Intelligent Tutoring Systems and Educational Data Mining communities to handle the variety of ways in which students can demonstrate skills. To evaluate students' skills, we iteratively developed data-mined models (detectors) that can discern when students test their articulated hypotheses and design controlled experiments. To aggregate and track students' developing latent skill across activities, we use and extend the Bayesian Knowledge-Tracing framework (Corbett & Anderson, 1995). As part of this work, we directly address the scalability and reliability of these models' predictions because we tested how well they predict for student data not used to build them. When doing so, we found that these models demonstrate the potential to scale because they can correctly evaluate and track students' inquiry skills. The ability to evaluate students' inquiry also enables the system to provide automated, individualized feedback to students as they experiment. As part of this work, we also describe an approach to provide such scaffolding to students. We also tested the efficacy of these scaffolds by conducting a study to determine how scaffolding impacts acquisition and transfer of skill across science topics. When doing so, we found that students who received scaffolding versus students who did not were better able to acquire skills in the topic in which they practiced, and also transfer skills to a second topic when was scaffolding removed. Our overall findings suggest that computer-based simulations augmented with real-time feedback can be used to reliably measure the inquiry skills of interest and can help students learn how to demonstrate these skills. As such, our assessment approach and system as a whole shows promise as a way to formatively assess students' inquiry. 2013-04-25T07:00:00Z text application/pdf https://digitalcommons.wpi.edu/etd-dissertations/168 https://digitalcommons.wpi.edu/cgi/viewcontent.cgi?article=1167&context=etd-dissertations Doctoral Dissertations (All Dissertations, All Years) Digital WPI Wouter van Joolingen, Committee Member Neil T. Heffernan, Committee Member Janice D. Gobert, Advisor Ryan S.J.d. Baker, Committee Member Behavior Detection Skill Prediction User Modeling Validation Inquiry Learning Environment Science Education Computer-Based Assessment Inquiry Assessment Performance Assessment Science Simulations Science Microworlds Educational Data Mining Formative Assessment Exploratory Learning Environment Open-Ended Learning Environment Science Inquiry Science Assessment Designing and Conducting Experiments Construct Validity Generalizability Text Replay Tagging J48 Decision Trees Bayesian Knowledge Tracing
collection NDLTD
format Others
sources NDLTD
topic Behavior Detection
Skill Prediction
User Modeling
Validation
Inquiry Learning Environment
Science Education
Computer-Based Assessment
Inquiry Assessment
Performance Assessment
Science Simulations
Science Microworlds
Educational Data Mining
Formative Assessment
Exploratory Learning Environment
Open-Ended Learning Environment
Science Inquiry
Science Assessment
Designing and Conducting Experiments
Construct Validity
Generalizability
Text Replay Tagging
J48 Decision Trees
Bayesian Knowledge Tracing
spellingShingle Behavior Detection
Skill Prediction
User Modeling
Validation
Inquiry Learning Environment
Science Education
Computer-Based Assessment
Inquiry Assessment
Performance Assessment
Science Simulations
Science Microworlds
Educational Data Mining
Formative Assessment
Exploratory Learning Environment
Open-Ended Learning Environment
Science Inquiry
Science Assessment
Designing and Conducting Experiments
Construct Validity
Generalizability
Text Replay Tagging
J48 Decision Trees
Bayesian Knowledge Tracing
Sao Pedro, Michael A.
Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations
description Despite widespread recognition by science educators, researchers and K-12 frameworks that scientific inquiry should be an essential part of science education, typical classrooms and assessments still emphasize rote vocabulary, facts, and formulas. One of several reasons for this is that the rigorous assessment of complex inquiry skills is still in its infancy. Though progress has been made, there are still many challenges that hinder inquiry from being assessed in a meaningful, scalable, reliable and timely manner. To address some of these challenges and to realize the possibility of formative assessment of inquiry, we describe a novel approach for evaluating, tracking, and scaffolding inquiry process skills. These skills are demonstrated as students experiment with computer-based simulations. In this work, we focus on two skills related to data collection, designing controlled experiments and testing stated hypotheses. Central to this approach is the use and extension of techniques developed in the Intelligent Tutoring Systems and Educational Data Mining communities to handle the variety of ways in which students can demonstrate skills. To evaluate students' skills, we iteratively developed data-mined models (detectors) that can discern when students test their articulated hypotheses and design controlled experiments. To aggregate and track students' developing latent skill across activities, we use and extend the Bayesian Knowledge-Tracing framework (Corbett & Anderson, 1995). As part of this work, we directly address the scalability and reliability of these models' predictions because we tested how well they predict for student data not used to build them. When doing so, we found that these models demonstrate the potential to scale because they can correctly evaluate and track students' inquiry skills. The ability to evaluate students' inquiry also enables the system to provide automated, individualized feedback to students as they experiment. As part of this work, we also describe an approach to provide such scaffolding to students. We also tested the efficacy of these scaffolds by conducting a study to determine how scaffolding impacts acquisition and transfer of skill across science topics. When doing so, we found that students who received scaffolding versus students who did not were better able to acquire skills in the topic in which they practiced, and also transfer skills to a second topic when was scaffolding removed. Our overall findings suggest that computer-based simulations augmented with real-time feedback can be used to reliably measure the inquiry skills of interest and can help students learn how to demonstrate these skills. As such, our assessment approach and system as a whole shows promise as a way to formatively assess students' inquiry.
author2 Wouter van Joolingen, Committee Member
author_facet Wouter van Joolingen, Committee Member
Sao Pedro, Michael A.
author Sao Pedro, Michael A.
author_sort Sao Pedro, Michael A.
title Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations
title_short Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations
title_full Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations
title_fullStr Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations
title_full_unstemmed Real-time Assessment, Prediction, and Scaffolding of Middle School Students’ Data Collection Skills within Physical Science Simulations
title_sort real-time assessment, prediction, and scaffolding of middle school students’ data collection skills within physical science simulations
publisher Digital WPI
publishDate 2013
url https://digitalcommons.wpi.edu/etd-dissertations/168
https://digitalcommons.wpi.edu/cgi/viewcontent.cgi?article=1167&context=etd-dissertations
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