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Read Between The Lines
Daniele DI MITRI^, Jan SCHNEIDER*, Roland KLEMKE^,
Marcus SPECHT^, Hendrik DRACHSLER^*
SafePAT CM - 20180206
an Annotation Tool for Multimodal Data for Learning
^
Open University of The Netherlands
*
DIPF — German Institute for International Educational Research
LAK’19 March 6th 2019, Tempe, Arizona, U.S.A.
Learning Analytics focus on online learning
How people actually learn?
Learning with mouse and keyboard
Most of LA tools and studies use
Learner-to-computer events
user clicked a page
user watched a video
user comments a post
easy to distinguish <who did what?>
Typical settings desktop/laptop
based learning
LA technologies are shaped around this
e.g. Experience API
Technologies without mouse and keyboard
Multimodal Learning Analytics (MMLA)
LA approach
Measurement, collection, analysis and
reporting of data about learners
+
Data from multiple modalities
=
More accurate representation of
the learning process!
Problem: MMLA is expensive!
• Sensor data pose much bigger challenges
• e.g. identify “who does what” is not straight-forward
• Creating sensor architectures is complex task
• Tailor-made solution are chosen over scalable solutions
• They cannot be re-used, they don’t scale
• Limit the research power
Theoretical
Framework
MMLA
Model
Di Mitri D, Schneider J, Specht M, Drachsler H. From signals to knowledge: A conceptual model for multimodal
learning analytics. J Comput Assist Learn. 2018;1–12. https://doi.org/10.1111/jcal.12288
Five Big Challenges for MMLA
D Di Mitri, J Schneider, M Specht, H Drachsler - 2018 The Big Five: Addressing Recurrent Multimodal Learning Data
Challenges
Feedback
loop
Classification
Framework
MMLA
Feedback loop
Methodology
4. Validation
Validation of VIT with 3 ITSs
3. Development
Developed components to address FR's
2. Functional Requirements
Derived 6 Functional Requirements
1. Review tools
Reviewed 7 existing MMLA tools
Tool Collection Storing Annotation Processing Exploitation Main purpose
1. Social Signal
Interpretation
(Wagner, 2013)
Multisource,
Synchronised
streams
No custom
format
Using NovA
Custom
pipelines,
various ML
algorithms
n.a. Human activity recognition
2. Lab Streaming
Layer (Kothe, 2018)
Multisource,
streaming,
synchronised streams
Custom data
format (XDF)
n.a. n.a. n.a.
Physiological data
synchronisation
3. Data Curation
Framework
(Amin, 2016)
Multisource,
synchronised batches
n.a. n.a.
Anomaly
detection
n.a.
Pervasive healthcare
monitoring
4. ChronoViz
(Fouse, 2011)
n.a. n.a.
Text based
annotations
n.a. n.a.
Video coding
human interactions
5. RepoViz
(Mayor et al., 2013)
n.a.
Custom data
format
(repoVizz
struct)
Text based
annotations
n.a. n.a.
Visual analysis of multi-user
orchestration
6. GIFT
(Sottilare, 2012)
Multisource, batches
Store in csv
format
n.a.
Can be
linked with
external
processing
tools
Corrective and
personalised feedback
Designing ITS
7. Multimodal
Learning Hub
(Schneider, 2018)
Multisource,
synchronised batches
Custom data
format (MLT)
n.a. n.a. Corrective feedback Intelligent Learning Feedback
Step 1) Reviewing existing tools
Multimodal Learning Hub
The LearningHub is a software in C# which to
collect and synchronise data from multiple
sensor applications.
Schneider, J., Di Mitri, D., Limbu, B., & Drachsler, H. (2018) Multimodal Learning Hub: A Tool for Capturing
Customizable Multimodal Learning Experiences, 1, 45–58
• DATA COLLECTION
data from multiple sensor applications
• DATA STORING
sensor data saved into MLT session
• DATA EXPLOITATION
it is possible to push simple feedback strings
6 Functional requirements (FR’s)
(FR1) the user can plot and visualise a multimodal recording file, featuring
multiple synchronised data streams;
(FR2) the user can view video of the session synchronised with the
multimodal data;
(FR3) the user can add annotations to single time intervals in attribute-
value form;
(FR4) the user can add custom annotations;
(FR5) the user can download the annotations or attach them to the session
file;
(FR6) the tool should be compatible with cloud-based solutions for
scalability and shared access.
The Visual Inspection Tool
COMPONENTS
a) Loading session file
b) Attribute listing
c) Loading annotation files
d) Edit intervals
e) Edit annotations
f) Plot attributes
g) Show video recordings
Visual Inspection Tool
Output of the VIT
Input of the VIT Output of the VIT
MLT session MLT session annotated
Transforming the annotated session
Machine learning idea
Tensor
(samples, bins, attributes)
t1,t2,tn
• Each sample is an array a smaller
time-series
• Each sample has different length
• Resample all samples into equal
number of bins
• Would lead to a tensor (sample,
bins, attributes)
• Can be used with Neural
Networks
What to do next? Data exploitation
a) Corrective non-adaptive feedback
b) Predictive adaptive feedback
c) Pattern identification
d) Historical reports
e) Diagnostic analysis of factors
f) Learner-Expert Comparison
Validation of VIT in 3 ITS
3. CPR Tutor
2. Presentation Trainer1. Calligraphy trainer
Available on GitHub
https://github.com/dimstudio/visual-inspection-tool/
Conclusions
We created the VISUAL INSPECTION TOOL for
• Visual inspection and annotation of learning
experiences
• Export data for machine learning analysis
• LearningHub + VIT are useful tools
• Scientists will not reinvent the wheel
Come to our Demo! (ID Demo 1)
Multimodal Tutor Builder Kit
SafePAT CM - 20180206

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Read Between The Lines: an Annotation Tool for Multimodal Data

  • 1. Read Between The Lines Daniele DI MITRI^, Jan SCHNEIDER*, Roland KLEMKE^, Marcus SPECHT^, Hendrik DRACHSLER^* SafePAT CM - 20180206 an Annotation Tool for Multimodal Data for Learning ^ Open University of The Netherlands * DIPF — German Institute for International Educational Research LAK’19 March 6th 2019, Tempe, Arizona, U.S.A.
  • 2. Learning Analytics focus on online learning
  • 4. Learning with mouse and keyboard Most of LA tools and studies use Learner-to-computer events user clicked a page user watched a video user comments a post easy to distinguish <who did what?> Typical settings desktop/laptop based learning LA technologies are shaped around this e.g. Experience API
  • 6. Multimodal Learning Analytics (MMLA) LA approach Measurement, collection, analysis and reporting of data about learners + Data from multiple modalities = More accurate representation of the learning process!
  • 7. Problem: MMLA is expensive! • Sensor data pose much bigger challenges • e.g. identify “who does what” is not straight-forward • Creating sensor architectures is complex task • Tailor-made solution are chosen over scalable solutions • They cannot be re-used, they don’t scale • Limit the research power
  • 8. Theoretical Framework MMLA Model Di Mitri D, Schneider J, Specht M, Drachsler H. From signals to knowledge: A conceptual model for multimodal learning analytics. J Comput Assist Learn. 2018;1–12. https://doi.org/10.1111/jcal.12288
  • 9. Five Big Challenges for MMLA D Di Mitri, J Schneider, M Specht, H Drachsler - 2018 The Big Five: Addressing Recurrent Multimodal Learning Data Challenges Feedback loop Classification Framework MMLA Feedback loop
  • 10. Methodology 4. Validation Validation of VIT with 3 ITSs 3. Development Developed components to address FR's 2. Functional Requirements Derived 6 Functional Requirements 1. Review tools Reviewed 7 existing MMLA tools
  • 11. Tool Collection Storing Annotation Processing Exploitation Main purpose 1. Social Signal Interpretation (Wagner, 2013) Multisource, Synchronised streams No custom format Using NovA Custom pipelines, various ML algorithms n.a. Human activity recognition 2. Lab Streaming Layer (Kothe, 2018) Multisource, streaming, synchronised streams Custom data format (XDF) n.a. n.a. n.a. Physiological data synchronisation 3. Data Curation Framework (Amin, 2016) Multisource, synchronised batches n.a. n.a. Anomaly detection n.a. Pervasive healthcare monitoring 4. ChronoViz (Fouse, 2011) n.a. n.a. Text based annotations n.a. n.a. Video coding human interactions 5. RepoViz (Mayor et al., 2013) n.a. Custom data format (repoVizz struct) Text based annotations n.a. n.a. Visual analysis of multi-user orchestration 6. GIFT (Sottilare, 2012) Multisource, batches Store in csv format n.a. Can be linked with external processing tools Corrective and personalised feedback Designing ITS 7. Multimodal Learning Hub (Schneider, 2018) Multisource, synchronised batches Custom data format (MLT) n.a. n.a. Corrective feedback Intelligent Learning Feedback Step 1) Reviewing existing tools
  • 12. Multimodal Learning Hub The LearningHub is a software in C# which to collect and synchronise data from multiple sensor applications. Schneider, J., Di Mitri, D., Limbu, B., & Drachsler, H. (2018) Multimodal Learning Hub: A Tool for Capturing Customizable Multimodal Learning Experiences, 1, 45–58 • DATA COLLECTION data from multiple sensor applications • DATA STORING sensor data saved into MLT session • DATA EXPLOITATION it is possible to push simple feedback strings
  • 13. 6 Functional requirements (FR’s) (FR1) the user can plot and visualise a multimodal recording file, featuring multiple synchronised data streams; (FR2) the user can view video of the session synchronised with the multimodal data; (FR3) the user can add annotations to single time intervals in attribute- value form; (FR4) the user can add custom annotations; (FR5) the user can download the annotations or attach them to the session file; (FR6) the tool should be compatible with cloud-based solutions for scalability and shared access.
  • 14. The Visual Inspection Tool COMPONENTS a) Loading session file b) Attribute listing c) Loading annotation files d) Edit intervals e) Edit annotations f) Plot attributes g) Show video recordings
  • 16. Output of the VIT Input of the VIT Output of the VIT MLT session MLT session annotated
  • 18. Machine learning idea Tensor (samples, bins, attributes) t1,t2,tn • Each sample is an array a smaller time-series • Each sample has different length • Resample all samples into equal number of bins • Would lead to a tensor (sample, bins, attributes) • Can be used with Neural Networks
  • 19. What to do next? Data exploitation a) Corrective non-adaptive feedback b) Predictive adaptive feedback c) Pattern identification d) Historical reports e) Diagnostic analysis of factors f) Learner-Expert Comparison
  • 20. Validation of VIT in 3 ITS 3. CPR Tutor 2. Presentation Trainer1. Calligraphy trainer
  • 22. Conclusions We created the VISUAL INSPECTION TOOL for • Visual inspection and annotation of learning experiences • Export data for machine learning analysis • LearningHub + VIT are useful tools • Scientists will not reinvent the wheel
  • 23. Come to our Demo! (ID Demo 1) Multimodal Tutor Builder Kit
  • 24. SafePAT CM - 20180206