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Just the other Side of coin? From error to
insight analysis
Author: Micheal Smuc
Presented by: Venkat Mudhigonda
Contents
Introduction
Three levels of Errors
Three levels of insights
Interaction and Learning
Case Study
Results
Conclusion
Introduction
• Evaluation methods and information
visualization that count errors have been
criticized in recent years
• We encounter the errors as part of exploration
and sense-making processes
• This Paper demonstrates and outline a
methodology to get insights from the error
Errors Insights
• There are three separable views based on
cognition theory
• Micro View-it is about the perceptive
principles and processes like pattern encoding
and cognitive integration of graphical
components
• Macro View –this view track the procedures
which consists of sense-making theories,
problem solving activities and making
judgements
• Meso View –it provides insights and
interpretation into the data and the higher
level graph comprehension.
Three Levels of Errors
• There processing of data can be categorized into three
• Skills based Processing-The operations at this stage
are schematic there will be not much problems for
visual analysts to find the highest values and well-
scaled visualizations like bar-chat
• Rules-based processing-In this processing the rules are
generated by heuristics
• Knowledge based processing-in this processing the
classic reasonal and problem solving activities are
done by applying analyst knowledge and mental
models under abstract analysis.
• Skill based processing errors-The errors are caused in
skill based processing mainly because of memory
deficits. So there is need to switch them into higher
level of processing if there is a mismatch in the schema
• Rules based processing error- cause for errors here are
two types
1. The user might have applied bad or wrong
rules
2. Good rules worked in do not fit in to the
current situation
• Knowledge based processing error-The errors might be
due to user bias or they may only selcet subset of
problems which generates wrong decisions.
Three Levels of insights
• Data is categorized into three types of insights
1. Skill-based insight : It is result of trivial insights
such as finding the highest value in simple line
diagram or finding the pecularitites in a pattern,
this insights are highly routinized and automatic
2. Rule-based insights: Local signs and cues are
scaned to select a rule and then implemented.
This evaluation provides the outcome.
3. Knowledge based insight: The stored stack of
problem-solving routines are work using slow
and laborious resources.
Interaction and Learning
• Visual analysts need to have high skilled in graphic perception and
tool handling in order to generate the complex interactions.
Applicability
and
Challenges
Advantage: The model
provides a integral approach
for visual exploration and
they are seperable due to
the hierarchical structure
Challenges:
There exists no generally
accepted insight taxonomy
and additionally verbal
information is required to
decide the occurrence of
insights.
The data errors from written
reports, observation and
think-aloud data may not be
errors to the true insights.
Case Study
Mental Difficulty vs Visual Difficulty
• Pupil size increases based on themental effort
spent on the visualization.
• Visual Difficulty is based on the number of
fixations
• High number of fixations make the eye move
involuntarily towards many things increasing
time to fixate and the visual difficulty.
• Pupil Diameter and fixation duration both
indicates cognitive effort spent on making
sense out of novel visualizations.
Juxtaposition view vs Comet Plot
• Juxat position view shows the nodes and
connections between them with edges
undirectional and two networks visualizations
for fall and winter.
• Comet Plot shows nodes with the-directed
edges and color encoding for fall and winter.
• The comet plot is more efficient so, it takes
more cognitive effort to understand the
visualization
Evaluation
• While the users given task to analyze the think
aloud data was collected from them
• The verbal information from the users are
visualized in the time series
• The Following Visualization provides
comments, pupil diameter and Fixation at
various points.
First
Insight
Results
• Whenever there is a insight
the size of pupil increases .
• pupil is at peak when the
user founds interesting
questions.
• Fixation is high right before
making suggestions.
Conclusion
• This model clearly differentiates three levels of insights
• The Meso view is an intermediate view but it is rarely used for the
novel visualizations.
• Verbal information should have lighter comments while building a
lower level model
• Visual analyst must decide prior the amount of cognitive level to
develop model
• Most of users have prior knowledge in the evaluation of visualization,
The pupil diameter may vary at different point for different users
Questions?

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Just the other side of coin

  • 1. Just the other Side of coin? From error to insight analysis Author: Micheal Smuc Presented by: Venkat Mudhigonda
  • 2. Contents Introduction Three levels of Errors Three levels of insights Interaction and Learning Case Study Results Conclusion
  • 3. Introduction • Evaluation methods and information visualization that count errors have been criticized in recent years • We encounter the errors as part of exploration and sense-making processes • This Paper demonstrates and outline a methodology to get insights from the error Errors Insights
  • 4. • There are three separable views based on cognition theory • Micro View-it is about the perceptive principles and processes like pattern encoding and cognitive integration of graphical components • Macro View –this view track the procedures which consists of sense-making theories, problem solving activities and making judgements • Meso View –it provides insights and interpretation into the data and the higher level graph comprehension.
  • 5. Three Levels of Errors • There processing of data can be categorized into three • Skills based Processing-The operations at this stage are schematic there will be not much problems for visual analysts to find the highest values and well- scaled visualizations like bar-chat • Rules-based processing-In this processing the rules are generated by heuristics • Knowledge based processing-in this processing the classic reasonal and problem solving activities are done by applying analyst knowledge and mental models under abstract analysis.
  • 6. • Skill based processing errors-The errors are caused in skill based processing mainly because of memory deficits. So there is need to switch them into higher level of processing if there is a mismatch in the schema • Rules based processing error- cause for errors here are two types 1. The user might have applied bad or wrong rules 2. Good rules worked in do not fit in to the current situation • Knowledge based processing error-The errors might be due to user bias or they may only selcet subset of problems which generates wrong decisions.
  • 7. Three Levels of insights • Data is categorized into three types of insights 1. Skill-based insight : It is result of trivial insights such as finding the highest value in simple line diagram or finding the pecularitites in a pattern, this insights are highly routinized and automatic 2. Rule-based insights: Local signs and cues are scaned to select a rule and then implemented. This evaluation provides the outcome. 3. Knowledge based insight: The stored stack of problem-solving routines are work using slow and laborious resources.
  • 8. Interaction and Learning • Visual analysts need to have high skilled in graphic perception and tool handling in order to generate the complex interactions.
  • 9. Applicability and Challenges Advantage: The model provides a integral approach for visual exploration and they are seperable due to the hierarchical structure Challenges: There exists no generally accepted insight taxonomy and additionally verbal information is required to decide the occurrence of insights. The data errors from written reports, observation and think-aloud data may not be errors to the true insights.
  • 10. Case Study Mental Difficulty vs Visual Difficulty • Pupil size increases based on themental effort spent on the visualization. • Visual Difficulty is based on the number of fixations • High number of fixations make the eye move involuntarily towards many things increasing time to fixate and the visual difficulty. • Pupil Diameter and fixation duration both indicates cognitive effort spent on making sense out of novel visualizations.
  • 11. Juxtaposition view vs Comet Plot • Juxat position view shows the nodes and connections between them with edges undirectional and two networks visualizations for fall and winter. • Comet Plot shows nodes with the-directed edges and color encoding for fall and winter. • The comet plot is more efficient so, it takes more cognitive effort to understand the visualization
  • 12. Evaluation • While the users given task to analyze the think aloud data was collected from them • The verbal information from the users are visualized in the time series • The Following Visualization provides comments, pupil diameter and Fixation at various points. First Insight
  • 13. Results • Whenever there is a insight the size of pupil increases . • pupil is at peak when the user founds interesting questions. • Fixation is high right before making suggestions.
  • 14. Conclusion • This model clearly differentiates three levels of insights • The Meso view is an intermediate view but it is rarely used for the novel visualizations. • Verbal information should have lighter comments while building a lower level model • Visual analyst must decide prior the amount of cognitive level to develop model • Most of users have prior knowledge in the evaluation of visualization, The pupil diameter may vary at different point for different users