Data representation
Data representation is the use of visual or structured formats to organize, summarize, and communicate information for shared understanding and decision-making. It includes charts, diagrams, matrices, and maps chosen to fit the purpose and audience.
Key Points
- It is an umbrella technique that turns raw data into visuals such as charts, diagrams, matrices, and maps.
- The choice of representation depends on the question being answered and the needs of the audience.
- Common formats include affinity diagrams, mind maps, stakeholder maps, matrices, histograms, heat maps, and dashboards.
- Effective visuals reduce cognitive load and support collaborative discussion and decisions.
- Representation should be accurate, current, traceable to source data, and clearly labeled.
- It complements data gathering and analysis techniques by making insights visible and actionable.
Purpose
- Reveal patterns, relationships, and trends that are hard to see in raw text or numbers.
- Align stakeholders around a shared view of information and insights.
- Enable faster, evidence-based decisions and prioritization.
- Facilitate workshops by focusing attention and structuring conversations.
Facilitation Steps
- Clarify the objective and audience: define the question to answer and who will use the visual.
- Select an appropriate format: choose diagrams or charts that best fit the purpose (e.g., affinity for themes, matrix for trade-offs).
- Prepare and validate data: gather sources, clean entries, and confirm definitions and scales.
- Draft the visual: apply clear titles, labels, legends, and consistent units and colors.
- Facilitate a review or working session: populate, discuss, and refine the representation with stakeholders.
- Capture assumptions and insights: note key takeaways, thresholds, and unanswered questions.
- Test for usability: check that the audience can interpret the visual correctly and quickly.
- Publish and maintain: version, store, and update the artifact as data or decisions change.
Inputs Needed
- Objective or decision to be supported.
- Source data and references, including definitions and timing.
- Stakeholder list and audience needs or preferences.
- Criteria, thresholds, or categories to apply.
- Templates, tools, and style guidelines.
- Governance rules for data quality and version control.
Outputs Produced
- Completed visual artifacts (e.g., affinity diagram, matrix, heat map, dashboard).
- Summarized insights, themes, and patterns.
- Agreed classifications, priorities, or decisions.
- Documented assumptions, data sources, and update cadence.
- Follow-up actions or backlog items derived from the discussion.
Tips
- Start simple and add complexity only when needed.
- Use consistent scales, colors, and labels to avoid misinterpretation.
- Annotate outliers and key thresholds so meaning is obvious.
- Include source and date to reinforce trust and recency.
- Design for accessibility: sufficient contrast, readable fonts, and alt text where applicable.
- Pilot the visual with a small group to check clarity before broad use.
Example
A project team conducts interviews and collects open-ended feedback from stakeholders. To synthesize results, the facilitator uses an affinity diagram to group similar comments into themes, then creates a priority matrix plotting impact versus effort. The combined visuals guide the team to select high-impact, low-effort actions for the next iteration and to document higher-effort items in the backlog.
Pitfalls
- Choosing a format that does not match the question or data type.
- Overloading the visual with too much information and clutter.
- Using biased scales or inconsistent categories that skew interpretation.
- Letting visuals go stale without update dates or version control.
- Assuming stakeholders can interpret the visual without a legend or guidance.
- Skipping data cleaning or validation, leading to misleading conclusions.
PMP Example Question
After a workshop, the team has dozens of sticky notes with qualitative feedback. Which data representation should the project manager use first to organize the information into meaningful themes?
- Histogram.
- Affinity diagram.
- Burndown chart.
- Control chart.
Correct Answer: B — Affinity diagram.
Explanation: An affinity diagram groups qualitative ideas into themes for sense-making. Histograms, burndown charts, and control charts are quantitative and not suited to initial clustering of text feedback.
HKSM