synthesize-research
Synthesize user research from interviews, surveys, and feedback into structured insights. Use when you have a pile of interview notes, survey responses, or support tickets to make sense of, need to extract themes and rank findings by frequency and impact, or want to turn raw feedback into roadmap recommendations.
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o synthesize-research.zip https://jpskill.com/download/22735.zip && unzip -o synthesize-research.zip && rm synthesize-research.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/22735.zip -OutFile "$d\synthesize-research.zip"; Expand-Archive "$d\synthesize-research.zip" -DestinationPath $d -Force; ri "$d\synthesize-research.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
synthesize-research.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
synthesize-researchフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
⚠️ ダウンロード・利用は自己責任でお願いします。当サイトは内容・動作・安全性について責任を負いません。
🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-18
- 取得日時
- 2026-05-18
- 同梱ファイル
- 1
📖 Skill本文(日本語訳)
※ 原文(英語/中国語)を Gemini で日本語化したものです。Claude 自身は原文を読みます。誤訳がある場合は原文をご確認ください。
[スキル名] synthesize-research
見慣れないプレースホルダーが表示された場合や、どのツールが接続されているかを確認する必要がある場合は、CONNECTORS.mdをご覧ください。
複数の情報源からのユーザーリサーチを、構造化されたインサイトと推奨事項に統合します。
使用法
/synthesize-research $ARGUMENTS
ワークフロー
1. リサーチ入力の収集
以下の任意の組み合わせからリサーチを受け入れます。
- 貼り付けられたテキスト: インタビューメモ、議事録、アンケート回答、フィードバック
- アップロードされたファイル: リサーチ文書、スプレッドシート、録音の要約
- ~~ナレッジベース (接続されている場合): リサーチ文書、インタビューメモ、アンケート結果を検索します
- ~~ユーザーフィードバック (接続されている場合): 最近のサポートチケット、機能リクエスト、バグ報告を抽出します
- ~~プロダクトアナリティクス (接続されている場合): 利用状況データ、ファネル指標、行動データを抽出します
- ~~会議の文字起こし (接続されている場合): インタビュー録音、会議の要約、議論のメモを抽出します
ユーザーに何を持っているか尋ねます。
- どのような種類のリサーチですか?(インタビュー、アンケート、ユーザビリティテスト、アナリティクス、サポートチケット、営業電話メモ)
- ソース/参加者の数はどのくらいですか?
- 調査している特定の質問や仮説はありますか?
- このリサーチはどのような意思決定に役立ちますか?
2. リサーチの処理
各ソースから以下を抽出します。
- 主要な観察結果: ユーザーは何を言いましたか、しましたか、経験しましたか?
- 引用: 重要な点を説明する逐語的な引用
- 行動: ユーザーが実際に何をしたか(言ったことではなく)
- ペインポイント: 不満、回避策、満たされていないニーズ
- ポジティブなシグナル: うまくいっていること、喜びの瞬間
- コンテキスト: ユーザーセグメント、ユースケース、経験レベル
3. テーマとパターンの特定
テーマ分析を適用します。テーマ分析、アフィニティマッピング、三角測量手法の詳細なガイダンスについては、以下の「リサーチ統合方法論」をご覧ください。
観察結果をテーマにグループ化し、参加者全体での頻度を数え、影響の深刻度を評価します。矛盾点や驚きに注意します。
優先順位マトリックスを作成します。
- 高頻度 + 高影響: 最優先の発見事項
- 低頻度 + 高影響: 特定のセグメントにとって重要
- 高頻度 + 低影響: 生活の質の向上
- 低頻度 + 低影響: 留意するが優先順位を下げる
4. 統合の生成
構造化されたリサーチ統合を作成します。
リサーチ概要
- 方法論: どのような種類のリサーチ、参加者/ソースの数
- リサーチ質問: 何を学ぶことを目的としたか
- 期間: リサーチが実施された時期
主要な発見事項
主要な発見事項(5〜8つを目指す)ごとに:
- 発見事項の記述: インサイトを説明する明確な1文
- 証拠: 裏付けとなる引用、データポイント、または観察結果(ソースの帰属表示付き)
- 頻度: この発見事項を裏付ける参加者/ソースの数
- 影響: これがユーザーエクスペリエンスまたはビジネスにどの程度大きく影響するか
- 信頼度: 高(強力な証拠)、中(示唆的)、低(初期の兆候)
発見事項を優先順位(頻度 x 影響)で並べます。
ユーザーセグメント / ペルソナ
リサーチが明確なユーザーセグメントを明らかにした場合:
- セグメント名と説明
- 主要な特性と行動
- 独自のニーズとペインポイント
- データがある場合はサイズの見積もり
機会領域
発見事項に基づいて、機会領域を特定します。
- どのようなユーザーニーズが満たされていないか、または十分に満たされていないか
- 現在のソリューションはどこが不十分か
- どのような新しい機能が価値を解き放つか
- 潜在的な影響によって優先順位付け
推奨事項
具体的で実行可能な推奨事項:
- 何を構築するか、変更するか、さらに調査するか
- 特定の発見事項に結びつける
- 影響と実現可能性によって優先順位付け
未解決の質問
リサーチが答えなかったこと:
- 理解のギャップ
- さらに調査が必要な領域
- 提案されるフォローアップリサーチ方法
5. レビューと拡張
統合を生成した後:
- 発見事項に詳細が必要か、または異なるフレーミングが必要か尋ねます
- 特定の成果物(ペルソナ文書、機会マップ、リサーチプレゼンテーション)の生成を提案します
- 未解決の質問に対するフォローアップリサーチ計画の作成を提案します
- 製品への影響(発見事項がロードマップにどのように影響すべきか)の草案作成を提案します
リサーチ統合方法論
テーマ分析
定性リサーチを統合するための主要な方法:
- 慣れ親しむ: すべてのデータを読み通します。コーディングする前に、全体像を把握します。
- 初期コーディング: データを体系的に確認します。各観察結果、引用、またはデータポイントに記述的なコードをタグ付けします。コードは惜しみなく付けます。後で分割するよりも結合する方が簡単です。
- テーマの展開: 関連するコードを候補テーマにグループ化します。テーマは、リサーチ質問に関連するデータに関する重要な何かを捉えます。
- テーマのレビュー: データとテーマを照合します。各テーマには十分な証拠がありますか?テーマは互いに明確に区別されていますか?一貫したストーリーを語っていますか?
- テーマの洗練: 各テーマを明確に定義し、名前を付けます。各テーマが何を捉えているかを1〜2文で記述します。
- レポート: 裏付けとなる証拠とともに、テーマを発見事項として記述します。
アフィニティマッピング
観察結果をグループ化するための共同作業方法:
- 観察結果の収集: 各明確な観察結果、引用、またはデータポイントを個別のメモとして書き出します
- クラスター化: 類似性に基づいて関連するメモをグループ化します。事前にカテゴリを定義せず、データから自然に現れるようにします。
- クラスターのラベル付け: 各クラスターに共通の要素を捉える記述的な名前を付けます
- クラスターの整理: パターンが現れた場合、クラスターをより高レベルのグループに配置します
- テーマの特定: クラスターとその関係が主要なテーマを明らかにします
アフィニティマッピングのヒント:
- 1つのメモにつき1つの観察結果。複数のインサイトを結合しないでください。
- メモはクラスター間で自由に移動させます。最初のグループ分けが最善であることはめったにありません。
- クラスターが大きくなりすぎた場合、おそらく複数のテーマが含まれています。分割してください。
- 外れ値は興味深いものです。すべての観察結果をクラスターに無理やり押し込まないでください。
- プロセス
(原文がここで切り詰められています)
📜 原文 SKILL.md(Claudeが読む英語/中国語)を展開
Synthesize Research
If you see unfamiliar placeholders or need to check which tools are connected, see CONNECTORS.md.
Synthesize user research from multiple sources into structured insights and recommendations.
Usage
/synthesize-research $ARGUMENTS
Workflow
1. Gather Research Inputs
Accept research from any combination of:
- Pasted text: Interview notes, transcripts, survey responses, feedback
- Uploaded files: Research documents, spreadsheets, recordings summaries
- ~~knowledge base (if connected): Search for research documents, interview notes, survey results
- ~~user feedback (if connected): Pull recent support tickets, feature requests, bug reports
- ~~product analytics (if connected): Pull usage data, funnel metrics, behavioral data
- ~~meeting transcription (if connected): Pull interview recordings, meeting summaries, and discussion notes
Ask the user what they have:
- What type of research? (interviews, surveys, usability tests, analytics, support tickets, sales call notes)
- How many sources / participants?
- Is there a specific question or hypothesis they are investigating?
- What decisions will this research inform?
2. Process the Research
For each source, extract:
- Key observations: What did users say, do, or experience?
- Quotes: Verbatim quotes that illustrate important points
- Behaviors: What users actually did (vs what they said they do)
- Pain points: Frustrations, workarounds, and unmet needs
- Positive signals: What works well, moments of delight
- Context: User segment, use case, experience level
3. Identify Themes and Patterns
Apply thematic analysis — see Research Synthesis Methodology below for detailed guidance on thematic analysis, affinity mapping, and triangulation techniques.
Group observations into themes, count frequency across participants, and assess impact severity. Note contradictions and surprises.
Create a priority matrix:
- High frequency + High impact: Top priority findings
- Low frequency + High impact: Important for specific segments
- High frequency + Low impact: Quality-of-life improvements
- Low frequency + Low impact: Note but deprioritize
4. Generate the Synthesis
Produce a structured research synthesis:
Research Overview
- Methodology: what types of research, how many participants/sources
- Research question(s): what we set out to learn
- Timeframe: when the research was conducted
Key Findings
For each major finding (aim for 5-8):
- Finding statement: One clear sentence describing the insight
- Evidence: Supporting quotes, data points, or observations (with source attribution)
- Frequency: How many participants/sources support this finding
- Impact: How significantly this affects the user experience or business
- Confidence level: High (strong evidence), Medium (suggestive), Low (early signal)
Order findings by priority (frequency x impact).
User Segments / Personas
If the research reveals distinct user segments:
- Segment name and description
- Key characteristics and behaviors
- Unique needs and pain points
- Size estimate if data is available
Opportunity Areas
Based on the findings, identify opportunity areas:
- What user needs are unmet or underserved
- Where do current solutions fall short
- What new capabilities would unlock value
- Prioritized by potential impact
Recommendations
Specific, actionable recommendations:
- What to build, change, or investigate further
- Tied back to specific findings
- Prioritized by impact and feasibility
Open Questions
What the research did not answer:
- Gaps in understanding
- Areas needing further investigation
- Suggested follow-up research methods
5. Review and Extend
After generating the synthesis:
- Ask if any findings need more detail or different framing
- Offer to generate specific artifacts: persona documents, opportunity maps, research presentations
- Offer to create follow-up research plans for open questions
- Offer to draft product implications (how findings should influence the roadmap)
Research Synthesis Methodology
Thematic Analysis
The core method for synthesizing qualitative research:
- Familiarization: Read through all the data. Get a feel for the overall landscape before coding anything.
- Initial coding: Go through the data systematically. Tag each observation, quote, or data point with descriptive codes. Be generous with codes — it is easier to merge than to split later.
- Theme development: Group related codes into candidate themes. A theme captures something important about the data in relation to the research question.
- Theme review: Check themes against the data. Does each theme have sufficient evidence? Are themes distinct from each other? Do they tell a coherent story?
- Theme refinement: Define and name each theme clearly. Write a 1-2 sentence description of what each theme captures.
- Report: Write up the themes as findings with supporting evidence.
Affinity Mapping
A collaborative method for grouping observations:
- Capture observations: Write each distinct observation, quote, or data point as a separate note
- Cluster: Group related notes together based on similarity. Do not pre-define categories — let them emerge from the data.
- Label clusters: Give each cluster a descriptive name that captures the common thread
- Organize clusters: Arrange clusters into higher-level groups if patterns emerge
- Identify themes: The clusters and their relationships reveal the key themes
Tips for affinity mapping:
- One observation per note. Do not combine multiple insights.
- Move notes between clusters freely. The first grouping is rarely the best.
- If a cluster gets too large, it probably contains multiple themes. Split it.
- Outliers are interesting. Do not force every observation into a cluster.
- The process of grouping is as valuable as the output. It builds shared understanding.
Triangulation
Strengthen findings by combining multiple data sources:
- Methodological triangulation: Same question, different methods (interviews + survey + analytics)
- Source triangulation: Same method, different participants or segments
- Temporal triangulation: Same observation at different points in time
A finding supported by multiple sources and methods is much stronger than one supported by a single source. When sources disagree, that is interesting — it may reveal different user segments or contexts.
Interview Note Analysis
Extracting Insights from Interview Notes
For each interview, identify:
Observations: What did the participant describe doing, experiencing, or feeling?
- Distinguish between behaviors (what they do) and attitudes (what they think/feel)
- Note context: when, where, with whom, how often
- Flag workarounds — these are unmet needs in disguise
Direct quotes: Verbatim statements that powerfully illustrate a point
- Good quotes are specific and vivid, not generic
- Attribute to participant type, not name: "Enterprise admin, 200-person team" not "Sarah"
- A quote is evidence, not a finding. The finding is your interpretation of what the quote means.
Behaviors vs stated preferences: What people DO often differs from what they SAY they want
- Behavioral observations are stronger evidence than stated preferences
- If a participant says "I want feature X" but their workflow shows they never use similar features, note the contradiction
- Look for revealed preferences through actual behavior
Signals of intensity: How much does this matter to the participant?
- Emotional language: frustration, excitement, resignation
- Frequency: how often do they encounter this issue
- Workarounds: how much effort do they expend working around the problem
- Impact: what is the consequence when things go wrong
Cross-Interview Analysis
After processing individual interviews:
- Look for patterns: which observations appear across multiple participants?
- Note frequency: how many participants mentioned each theme?
- Identify segments: do different types of users have different patterns?
- Surface contradictions: where do participants disagree? This often reveals meaningful segments.
- Find surprises: what challenged your prior assumptions?
Survey Data Interpretation
Quantitative Survey Analysis
- Response rate: How representative is the sample? Low response rates may introduce bias.
- Distribution: Look at the shape of responses, not just averages. A bimodal distribution (lots of 1s and 5s) tells a different story than a normal distribution (lots of 3s).
- Segmentation: Break down responses by user segment. Aggregates can mask important differences.
- Statistical significance: For small samples, be cautious about drawing conclusions from small differences.
- Benchmark comparison: How do scores compare to industry benchmarks or previous surveys?
Open-Ended Survey Response Analysis
- Treat open-ended responses like mini interview notes
- Code each response with themes
- Count frequency of themes across responses
- Pull representative quotes for each theme
- Look for themes that appear in open-ended responses but not in structured questions — these are things you did not think to ask about
Common Survey Analysis Mistakes
- Reporting averages without distributions. A 3.5 average could mean everyone is lukewarm or half love it and half hate it.
- Ignoring non-response bias. The people who did not respond may be systematically different.
- Over-interpreting small differences. A 0.1 point change in NPS is noise, not signal.
- Treating Likert scales as interval data. The difference between "Strongly Agree" and "Agree" is not necessarily the same as between "Agree" and "Neutral."
- Confusing correlation with causation in cross-tabulations.
Combining Qualitative and Quantitative Insights
The Qual-Quant Feedback Loop
- Qualitative first: Interviews and observation reveal WHAT is happening and WHY. They generate hypotheses.
- Quantitative validation: Surveys and analytics reveal HOW MUCH and HOW MANY. They test hypotheses at scale.
- Qualitative deep-dive: Return to qualitative methods to understand unexpected quantitative findings.
Integration Strategies
- Use quantitative data to prioritize qualitative findings. A theme from interviews is more important if usage data shows it affects many users.
- Use qualitative data to explain quantitative anomalies. A drop in retention is a number; interviews reveal it is because of a confusing onboarding change.
- Present combined evidence: "47% of surveyed users report difficulty with X (survey), and interviews reveal this is because Y (qualitative finding)."
When Sources Disagree
- Quantitative and qualitative sources may tell different stories. This is signal, not error.
- Check if the disagreement is due to different populations being measured
- Check if stated preferences (survey) differ from actual behavior (analytics)
- Check if the quantitative question captured what you think it captured
- Report the disagreement honestly and investigate further rather than choosing one source
Persona Development from Research
Building Evidence-Based Personas
Personas should emerge from research data, not imagination:
- Identify behavioral patterns: Look for clusters of similar behaviors, goals, and contexts across participants
- Define distinguishing variables: What dimensions differentiate one cluster from another? (e.g., company size, technical skill, usage frequency, primary use case)
- Create persona profiles: For each behavioral cluster:
- Name and brief description
- Key behaviors and goals
- Pain points and needs
- Context (role, company, tools used)
- Representative quotes
- Validate with data: Can you size each persona segment using quantitative data?
Persona Template
[Persona Name] — [One-line description]
Who they are:
- Role, company type/size, experience level
- How they found/started using the product
What they are trying to accomplish:
- Primary goals and jobs to be done
- How they measure success
How they use the product:
- Frequency and depth of usage
- Key workflows and features used
- Tools they use alongside this product
Key pain points:
- Top 3 frustrations or unmet needs
- Workarounds they have developed
What they value:
- What matters most in a solution
- What would make them switch or churn
Representative quotes:
- 2-3 verbatim quotes that capture this persona's perspective
Common Persona Mistakes
- Demographic personas: defining by age/gender/location instead of behavior. Behavior predicts product needs better than demographics.
- Too many personas: 3-5 is the sweet spot. More than that and they are not actionable.
- Fictional personas: made up based on assumptions rather than research data.
- Static personas: never updated as the product and market evolve.
- Personas without implications: a persona that does not change any product decisions is not useful.
Opportunity Sizing
Estimating Opportunity Size
For each research finding or opportunity area, estimate:
- Addressable users: How many users could benefit from addressing this? Use product analytics, survey data, or market data to estimate.
- Frequency: How often do affected users encounter this issue? (Daily, weekly, monthly, one-time)
- Severity: How much does this issue impact users when it occurs? (Blocker, significant friction, minor annoyance)
- Willingness to pay: Would addressing this drive upgrades, retention, or new customer acquisition?
Opportunity Scoring
Score opportunities on a simple matrix:
- Impact: (Users affected) x (Frequency) x (Severity) = impact score
- Evidence strength: How confident are we in the finding? (Multiple sources > single source, behavioral data > stated preferences)
- Strategic alignment: Does this opportunity align with company strategy and product vision?
- Feasibility: Can we realistically address this? (Technical feasibility, resource availability, time to impact)
Presenting Opportunity Sizing
- Be transparent about assumptions and confidence levels
- Show the math: "Based on support ticket volume, approximately 2,000 users per month encounter this issue. Interview data suggests 60% of them consider it a significant blocker."
- Use ranges rather than false precision: "This affects 1,500-2,500 users monthly" not "This affects 2,137 users monthly"
- Compare opportunities against each other to create a relative ranking, not just absolute scores
Output Format
Use clear headers and structured formatting. Each finding should stand on its own — a reader should be able to read any single finding and understand it without reading the rest.
Tips
- Let the data speak. Do not force findings into a predetermined narrative.
- Distinguish between what users say and what they do. Behavioral data is stronger than stated preferences.
- Quotes are powerful evidence. Include them generously, with attribution to participant type (not name).
- Be explicit about confidence levels. A finding from 2 interviews is a hypothesis, not a conclusion.
- Contradictions in the data are interesting, not inconvenient. They often reveal distinct user segments.
- Recommendations should be specific enough to act on. "Improve onboarding" is not actionable. "Add a progress indicator to the setup flow" is.
- Resist the temptation to synthesize too many themes. 5-8 strong findings are better than 20 weak ones.