Table of Contents
- 1. Why UX Research Insights Often Fail to Become Actionable
- 2. What Is an Affinity Diagram in UX Research?
- 3. When Affinity Diagramming Works Best
- 4. The Building Blocks of an Affinity Diagram
- 5. Good vs Bad Affinity Diagrams
- 6. Benefits of Affinity Diagrams Across Teams: Why Affinity Diagrams Matter Beyond Designers
- 7. Affinity Diagramming as a Thinking Skill
1. Why UX Research Insights Often Fail to Become Actionable
If you have ever wrapped up interviews, usability tests, support ticket reviews, or field observations and thought:
- “We have a lot of notes…”
- “We definitely learned something…”
- “But I’m not sure what we should do with this.”
You are not alone.
This “organized but ambiguous” outcome happens even in teams that are doing research frequently. The issue is rarely the amount of data. It is usually the gap between:
- Research results (what you collected)
- Shared understanding (what it means and what it implies)
1) Why Qualitative Research Data Stays Fragmented
Qualitative research produces high-context information:
- what someone said
- what they did
- what they avoided
- what confused them
- what they were trying to accomplish
When that information lives mainly in individual notes, recordings, or a single researcher’s memory, synthesis becomes fragile:
- The team remembers different moments.
- The loudest quote wins.
- Decisions lean toward intuition, not evidence.
Even if you write a “research summary,” this can still happen, because summaries are often linear. They are good for storytelling, but not always good for surfacing patterns across dozens of observations.
2) The Real Problem: Lack of Research Synthesis Structure
Many teams do some form of organization:
- they tag notes in a doc
- they group findings into a few bullet points
- they create a slide with “Top 5 insights”
But if the structure is imposed too early (top-down), the result often feels like:
- a list of themes that are too broad to act on
- insights that are hard to trace back to raw evidence
- disagreements like “I don’t interpret it that way”
Here is a useful way to frame it:
| What you have right after research | What you need to make decisions |
|---|---|
| Many specific moments | A small number of meaningful patterns |
| Individual quotes and behaviors | Shared language the team agrees on |
| “Interesting findings” | Decision-ready insights (what to change, why, and for whom) |
That transformation, from messy details to shared patterns, is exactly where teams get stuck.
3) Why Teams Skip Synthesis and Jump to Solutions
Another reason synthesis fails is speed. Once research is done, there is pressure to move into:
- feature brainstorming
- backlog updates
- design iterations
- roadmap conversations
That is understandable. But when a team skips synthesis, it often leads to:
- building fixes for symptoms, not causes
- prioritizing based on internal preference
- revisiting the same debates every quarter
The result is not “bad decisions.” It is decisions that are weakly grounded.
2. What Is an Affinity Diagram in UX Research?
If you search for “Affinity Diagram,” you will almost certainly see photos of walls covered in sticky notes. That visual is not wrong, but it is incomplete. When teams focus only on the surface form, they often miss what actually makes affinity diagramming useful.
1) Affinity Diagram Definition
An Affinity Diagram is a bottom-up synthesis method used to make sense of qualitative data by grouping observations based on natural relationships.
Instead of starting with predefined categories, you let meaning emerge from the data itself.
In practice, this means:
- starting with small, concrete pieces of data
- grouping them based on perceived similarity
- naming those groups in a way that explains why they belong together
- gradually forming higher-level themes that reflect real patterns
This process is fundamentally inductive. You are not testing a hypothesis. You are discovering structure.
An Affinity Diagram is a practical way to add structure after research, without forcing meaning too early.
It is especially helpful when:
- the data is messy and plentiful
- multiple people participated in research
- interpretation varies across the team
- you want to connect evidence to action without guessing
In other words: it is a method for converting raw qualitative data into patterns you can talk about, align on, and use.
2) Common Misconceptions About Affinity Diagrams
Before going further, it is worth clearing up a few common misunderstandings.
| Misconception | Why it falls short |
|---|---|
| “It’s just organizing sticky notes” | Organization without interpretation does not create insight |
| “It’s a brainstorming technique” | Brainstorming is generative; affinity diagramming is analytical. |
| “It’s only for designers” | Any role working with qualitative data can benefit |
| “The clusters should match our existing framework” | That turns a bottom-up method into a top-down one |
Sticky notes are a tool, not the method. The value comes from the thinking that happens while grouping and naming, not from the artifact itself.
3) Affinity Diagrams and Inductive Thinking
The core mental shift behind affinity diagramming is simple:
You move from specific observations to general meaning
For example, imagine you are reviewing notes from customer onboarding sessions:
- “User paused for a long time on the permissions screen”
- “User asked if they could skip setup and come back later”
- “User said they were worried about ‘breaking something’”
Individually, these are just moments. When grouped together, they might point to something like:
“Early setup feels risky and irreversible to new users”
That sentence did not exist in the raw data. It emerged through grouping and interpretation.
This is why affinity diagramming is often described as a thinking tool, not a documentation step.
4) Bottom-Up vs Top-Down Research Synthesis
Many teams are already familiar with top-down categorization:
- predefined personas
- fixed journey stages
- existing frameworks like AARRR or JTBD
Those can be useful, but they answer a different question.
| Approach | Main question it answers |
|---|---|
| Top-down frameworks | “How does this data fit into what we already believe?” |
| Bottom-up frameworks | “What patterns are actually present here?” |
Affinity diagramming deliberately delays judgment. You resist naming things too early. You allow ambiguity. This can feel uncomfortable, especially for teams used to fast decisions, but it is where much of the value lies.
5) Affinity Diagrams vs Concept Mapping
Affinity diagrams are closely related to concept mapping, but they are not the same.
A simple way to think about the difference:
- Affinity Diagram focuses on grouping based on similarity
- Concept Mapping focuses on relationships between concepts (cause, sequence, dependency)
Affinity diagramming is often the first step. Once patterns are clear, concept mapping can help explore how those patterns connect.
If you want to dig concept mapping deeper, read this article: 👉 https://productwithmustache.com/concept-mapping/
3. When Affinity Diagramming Works Best
Not every research moment requires an affinity diagram. But when it does fit, it tends to unlock clarity faster than most alternatives. This section focuses on the situations where affinity diagramming provides the most leverage, both in practice and in search intent.
If you have ever wondered “when should I use an affinity diagram?”, these are the patterns to look for.
1) Right After Qualitative Research
The most obvious moment is immediately after qualitative research, when you are sitting on a pile of raw material:
- interview notes
- observation logs
- usability test recordings
- survey open-ended responses
- support tickets or call transcripts
At this stage, teams often feel a mix of confidence and confusion. You know there is signal in the data, but it is hard to articulate what that signal is.
Affinity diagramming works well here because it:
- prevents premature conclusions
- keeps the team grounded in evidence
- creates a shared view of the data before interpretation diverges
Instead of one person “summarizing,” the team builds meaning together.
2) When Teams Disagree on Research Interpretation
Another strong signal is disagreement that sounds like this:
- “That was just one edge case”
- “I don’t think users actually care about that”
- “My takeaway was completely different”
These disagreements are not a problem. They are a sign that the data is rich. The issue is when they remain implicit.
Affinity diagramming externalizes interpretation:
- observations are visible to everyone
- groupings make assumptions explicit
- naming clusters forces clarity
This often reveals that people are not disagreeing about facts, but about patterns.
3) When Solution Discussions Start Too Early
Many product and delivery teams are solution-oriented by default. After research, conversations quickly shift to:
- “So should we add a new setting?”
- “We probably need a redesign here”
- “This sounds like a roadmap item”
Affinity diagramming slows this down in a productive way.
By staying with the data longer, teams can ask better questions:
- What problem does this actually represent?
- Is this a one-off or a recurring pattern?
- What is the underlying cause, not just the visible pain?
This makes downstream decisions more intentional, not slower.
4) When Qualitative Data Becomes Overwhelming
A single interview rarely requires affinity diagramming. But volume changes everything.
As a rough guideline, affinity diagramming becomes especially useful when:
- you have more than 5 to 6 interviews
- each session produces dozens of observations
- multiple researchers contributed notes
At that point, mental synthesis breaks down. No one can reliably “hold it all” in their head.
Affinity diagrams act as a cognitive offloading mechanism, allowing the team to reason about complexity without being overwhelmed.
5) When Teams Need Shared Understanding
One underrated benefit of affinity diagramming is vocabulary alignment.
As clusters and themes emerge, teams start to use consistent phrases:
- “setup anxiety”
- “hidden dependencies”
- “fear of irreversible actions”
These phrases become shorthand in later conversations. They reduce re-explanation and increase precision.
This is particularly valuable when:
- working across functions
- onboarding new team members
- presenting research to stakeholders
4. The Building Blocks of an Affinity Diagram
Before walking through the steps of creating an affinity diagram, it helps to understand what it is actually made of. Many teams struggle not because they skip steps, but because the building blocks themselves are fuzzy.
An effective affinity diagram is composed of three distinct layers. Each layer plays a different role in turning raw research into something a team can reason about together.
1) Raw Qualitative Data: The Smallest Meaningful Units
(1) Definition
Everything starts with raw data.
Raw data refers to the most concrete pieces of information you captured during research:
- direct quotes
- observed behaviors
- notable pauses or hesitations
- workarounds or mistakes
- emotional reactions tied to a moment
A useful rule of thumb is this:
If it still feels like an interpretation, it is not raw data yet.
For example:
| Too abstract | Better raw data |
|---|---|
| “Users found onboarding confusing” | “User reread the same instruction three times before clicking ‘Next’” |
| “People don’t trust the system” | “User said, ‘I’m afraid this will overwrite my existing data’” |
Keeping raw data granular matters because grouping only works when the inputs are comparable.
(2) Example: Cloud-based Document Collaboration Tool
A product team is studying first-time onboarding for a cloud-based document collaboration tool. They want to understand why many new users create an account but do not create or share a document on day one.
The team decided to focus on three data sources from the first 10 minutes of use:
- moderated usability test recordings (screen + audio)
- session replays from new users who dropped off during onboarding
- verbatim quotes from post-session interviews
Two researchers independently reviewed recordings and transcripts.
They paused whenever they saw a specific action, hesitation, or spoken reaction, and copied it verbatim into a working document.
Examples pulled directly from recordings and transcripts:
- “User stops moving the mouse for 8 seconds on the ‘Create Workspace’ screen”
- “User says: ‘Can I change this name later?’”
- “User opens a new tab and searches ‘rename workspace later’”
- “User hovers over ‘Invite teammates’ field, then clicks ‘Skip’”
- “User says quietly: ‘I don’t want to mess this up’”
- “User deletes the default document within 3 seconds of it opening”
- “User exhales loudly and leans back after clicking ‘Finish setup’”
Nothing was rewritten or summarized. Each item reflects a single moment observed in the data.
2) Externalization: Getting Data Out of Your Head
(1) Definition
Raw data that lives in documents or recordings still carries hidden context. Affinity diagramming requires externalization:
- one observation per card or note
- no summarizing multiple ideas into one
- minimal interpretation in wording
Whether you use physical sticky notes or digital tools, the goal is the same. You want each piece of data to be:
- movable
- visible
- equally weighted at the start
This prevents early hierarchy from distorting patterns.
(2) Example: Cloud-based Document Collaboration Tool
The team took the extracted raw data and converted it into individual notes in a digital whiteboard.
Rules they followed:
- one observation per note
- original wording preserved
- no combining or explaining
Each note became a separate object:
- Note 1: “Paused 8 seconds on ‘Create Workspace’ screen”
- Note 2: “Said: ‘Can I change this later?’”
- Note 3: “Opened Google search: ‘rename workspace later’”
- Note 4: “Hovered over ‘Invite teammates’ → clicked ‘Skip’”
- Note 5: “Said: ‘I don’t want to mess this up’”
- Note 6: “Deleted default document immediately”
- Note 7: “Sighed and leaned back after clicking Finish setup”
At this point, all notes were placed randomly on the board.
Nothing was grouped or labeled yet.
3) Clustering: Grouping by Perceived Similarity
(1) Definition
Once raw data is externalized, you begin forming clusters.
Clusters are groups of observations that feel related, even if the reason is not fully clear yet. At this stage:
- there is no single “correct” grouping
- intuition is allowed
- discussion is intentionally minimal
Teams often find it helpful to group in silence first. This reduces anchoring and allows multiple perspectives to surface through action rather than debate.
Clusters are not themes yet. They are hypotheses-in-progress.
(2) Example: Cloud-based Document Collaboration Tool
The team silently began moving notes closer together based on perceived similarity.
They noticed that several notes seemed to share a sense of hesitation before committing:
- “Paused 8 seconds on ‘Create Workspace’ screen”
- “Said: ‘Can I change this later?’”
- “Opened Google search: ‘rename workspace later’”
- “Said: ‘I don’t want to mess this up’”
These were grouped together because they all happened before a decisive action and involved uncertainty about reversibility.
Another group began to form around avoiding visible or shared actions:
- “Hovered over ‘Invite teammates’ → clicked ‘Skip’”
- “Deleted default document immediately”
- “Sighed and leaned back after clicking Finish setup”
These behaviors occurred after setup, but showed reluctance to engage further.
The clusters were adjusted slightly as notes were moved, but no labels were added yet.
4) Themes: Naming What the Cluster Is Really About
(1) Definition
Themes sit one level above clusters.
This is where interpretation becomes explicit. A strong theme:
- explains why these items belong together
- is phrased as a short, clear statement
- reflects user intent, tension, or context
Compare these two theme names:
| Weak theme | Stronger theme |
|---|---|
| “Onboarding issues” | “Early setup creates fear of irreversible mistakes” |
| “Performance problems” | “Slow feedback breaks users’ sense of progress” |
The stronger version gives the team something to discuss and act on.
(2) Example: Cloud-based Document Collaboration Tool
The team reviewed each cluster and asked what the grouped behaviors had in common.
For the first cluster, they wrote a theme card:
“Early setup decisions feel irreversible”
This theme connected:
- hesitation
- reassurance-seeking
- leaving the product to check externally
For the second cluster, they created another theme:
“Users avoid actions that feel publicly visible too early”
This theme connected:
- skipping invitations
- deleting default content
- emotional release after setup completion
Each theme was explicitly tied to one cluster, not the entire board.
5) Insight: From Clusters to Insight Statements
(1) Definition
A useful way to pressure-test a theme is to turn it into a sentence:
“Because ___, users tend to ___, which leads to ___.”
If the sentence feels vague or forced, the theme may still be too abstract.
This step is where affinity diagramming begins to connect to decision-making, without jumping straight to solutions.
(2) Example: Cloud-based Document Collaboration Tool
The team then turned each theme into an insight statement.
From “Early setup decisions feel irreversible”:
Because workspace creation appears permanent, users tend to pause, seek reassurance, or leave the product to confirm safety, which leads to disrupted onboarding flow.
From “Users avoid actions that feel publicly visible too early”:
Because early actions feel socially exposed, users tend to delay inviting others or creating content, which leads to weaker first-day engagement.
These insights were reviewed against the original notes to ensure they still held up.
6) How these layers map to sense-making models
If you are familiar with other synthesis frameworks, you may notice parallels.
| Affinity diagram layer | Comparable concept |
|---|---|
| Raw data | Observations / notes |
| Clusters | Concepts |
| Themes | Propositions or higher-level meaning |
This similarity is not accidental. Many sense-making methods follow a pattern of moving from detail to meaning. Affinity diagramming is one of the most accessible versions of that pattern.
5. Good vs Bad Affinity Diagrams
By the time a team finishes affinity diagramming, the wall (or board) often looks impressive. But visual density does not guarantee insight. Two affinity diagrams can look similar and still differ massively in usefulness.
This section focuses on how to tell the difference, not to judge work, but to improve outcomes.
1) What a Poor Affinity Diagram Looks Like
A “bad” affinity diagram usually fails quietly. It does not feel wrong in the moment, but it produces little leverage afterward.
Common symptoms include:
- clusters labeled with vague nouns
- themes that restate the problem domain
- insights that cannot be traced back to data
- diagrams that no one refers to a week later
Here are some concrete examples.
| Pattern | Why it breaks down |
|---|---|
| Keyword lists (“Navigation,” “Performance”) | They describe areas, not meaning |
| Overly broad themes (“UX issues”) | They hide differences instead of explaining them |
| Premature conclusions (“Users hate X”) | They over-interpret limited evidence |
| Decorative diagrams | They look neat but do not guide decisions |
These diagrams often become dead artifacts. They are documented, then forgotten.
2) Why Affinity Diagrams Fail
Weak affinity diagrams are rarely the result of laziness. More often, they happen because teams:
- feel pressure to move quickly
- want consensus too early
- default to existing mental models
- confuse labeling with understanding
When naming clusters feels uncomfortable, teams sometimes reach for safe, generic terms. Unfortunately, those terms drain the diagram of its explanatory power.
3) What Makes an Effective Affinity Diagram
Good affinity diagrams behave like thinking scaffolds. They help teams reason more clearly, even after the session ends.
You can usually recognize them by these traits:
- themes are phrased as explainable statements
- clusters reflect behavior, intent, or tension
- disagreements are visible and documented
- raw data remains attached and referenced
Strong diagrams invite conversation instead of closing it.
4) How to Evaluate the Quality of an Affinity Diagram: Can You Explain It to Someone New?
One of the most reliable tests is this:
Could a teammate who did not attend the research session understand what this diagram means?
If the answer is no, the diagram likely needs refinement.
Strong affinity diagrams work even without narration because:
- the language carries meaning
- examples ground abstraction
- structure mirrors how insights were derived
5) How to Document Affinity Diagrams Without Losing Insight
Another common failure is over-documentation.
If teams freeze the diagram too early, they lose the chance to:
- refine theme language
- split or merge clusters
- revisit assumptions as new data arrives
A healthier approach is to treat the diagram as versioned thinking:
- capture it
- reuse it
- evolve it
This keeps insights alive rather than archived.
6. Benefits of Affinity Diagrams Across Teams: Why Affinity Diagrams Matter Beyond Designers
Affinity diagrams are often introduced in design contexts, but their impact is not limited to design work. The real value shows up when teams with different roles use the same evidence to reason about a problem together.
At its core, affinity diagramming is not a design method. It is a shared sense-making method.
1) Affinity Diagrams for Strategy and Decision-Making
When teams skip synthesis, strategy discussions tend to start with solutions. Affinity diagrams create a pause that improves the quality of problem framing.
They help teams:
- distinguish symptoms from underlying causes
- separate isolated feedback from recurring patterns
- articulate problems in user language, not internal jargon
This leads to better questions, such as:
- “Which of these patterns, if unresolved, would block adoption?”
- “What assumptions are we making about user intent?”
- “What tradeoffs are users already making today?”
These questions shape strategy without locking teams into premature answers.
2) Affinity Diagrams for Engineers and Technical Teams
Engineers are often handed requirements without enough context. Affinity diagrams reconnect solutions to the original evidence.
When engineers can see:
- what users were trying to do
- where they hesitated or worked around the system
- how often a pattern appeared
they gain a clearer understanding of why something matters. This often results in:
- better implementation decisions
- fewer edge cases missed
- more meaningful technical tradeoffs
It also reduces rework caused by misaligned assumptions.
3) Using Affinity Diagrams for Cross-Functional Alignment
In cross-functional discussions, disagreements are inevitable. The problem is not disagreement itself, but how it is resolved.
Affinity diagrams shift conversations from:
- “I think” to
- “This pattern shows up repeatedly here”
This creates a common reference point. Marketing, operations, support, and leadership can all engage with the same underlying evidence, even if their interpretations differ.
That shared grounding changes the tone of decision-making from persuasion to reasoning.
4) Organizational Benefits of Affinity Diagramming
Over time, teams that regularly use affinity diagramming start to develop healthier research habits:
- insights are expected to be traceable
- assumptions are surfaced earlier
- user language influences internal language
The diagram itself may not persist, but the behavior does.
This is especially valuable in growing organizations where:
- team members change
- context is lost quickly
- decisions compound over time
Affinity diagrams help preserve why decisions were made, not just what was decided.
Perhaps the most important impact is subtle.
When teams practice affinity diagramming consistently, they become more comfortable with ambiguity. They learn to sit with evidence before resolving it. That patience often leads to better outcomes, even outside of formal research work.
7. Affinity Diagramming as a Thinking Skill
Most product work eventually turns into tangible decisions:
- screens
- features
- workflows
- technical architectures
Affinity diagramming deliberately sits before all of that.
It asks the team to slow down and focus on:
- what people are actually doing
- what they are trying to avoid
- what feels risky, confusing, or valuable to them
By the time solutions enter the conversation, the problem space has shape. Decisions feel less like guesses and more like responses.
You do not need a formal workshop every time.
Many teams use lighter versions:
- quick clustering after a few interviews
- mini affinity sessions in retros
- informal grouping of feedback in planning meetings
The goal is not ceremony. It is intentional sense-making.
Affinity diagramming is a reminder that insight does not appear automatically just because research was done. Meaning has to be constructed, collaboratively and carefully.
Design the meaning first.

