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pm-skills/pm-market-research/commands/analyze-feedback.md
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Pawel Huryn 77dbdfa1b9 v1.0
2026-03-02 00:36:23 +01:00

3.6 KiB

description, argument-hint
description argument-hint
Analyze user feedback at scale — sentiment analysis, theme extraction, and segment-level insights <feedback data as CSV, text, or file>

/analyze-feedback -- User Feedback Analysis

Process large volumes of user feedback (reviews, surveys, support tickets, NPS responses) into structured insights with sentiment analysis and segment-level patterns.

Invocation

/analyze-feedback [upload a CSV of NPS responses]
/analyze-feedback [paste app store reviews or survey responses]
/analyze-feedback [upload support ticket export]

Workflow

Step 1: Accept Feedback Data

Accept in any format:

  • CSV/Excel with feedback text (and optional metadata: date, segment, rating)
  • Pasted text (reviews, survey responses, Slack messages)
  • Uploaded documents or exports from feedback tools

Ask:

  • What kind of feedback is this? (NPS, reviews, support tickets, survey, etc.)
  • Any segments to analyze separately? (user tier, plan, geography)
  • What are you looking for? (general themes, specific issues, trends over time)

Step 2: Analyze

Apply the sentiment-analysis skill:

  • Sentiment scoring: Classify each piece of feedback (positive, neutral, negative)
  • Theme extraction: Identify recurring topics and cluster related feedback
  • Frequency analysis: Count how often each theme appears
  • Segment analysis: Break down sentiment and themes by user segment (if data available)
  • Trend detection: If dates are available, identify sentiment shifts over time

Step 3: Generate Analysis Report

## Feedback Analysis Report

**Date**: [today]
**Feedback analyzed**: [count] responses
**Source**: [NPS survey / app reviews / support tickets / etc.]
**Period**: [date range if available]

### Overall Sentiment
- Positive: [X%] | Neutral: [Y%] | Negative: [Z%]
- Average sentiment score: [X/10]
- Trend: [improving / stable / declining]

### Top Themes
| # | Theme | Mentions | Sentiment | Segments Most Affected |
|---|-------|----------|-----------|----------------------|

### Theme Deep-Dive

#### Theme 1: [Name] — [X] mentions, [sentiment]
- **What users are saying**: [summary with representative quotes]
- **Root cause**: [what's driving this feedback]
- **Impact**: [how this affects retention, satisfaction, or revenue]
- **Recommendation**: [what to do about it]

[Repeat for top 5-8 themes]

### Segment Analysis
| Segment | Volume | Avg Sentiment | Top Theme | Key Difference |
|---------|--------|-------------|-----------|---------------|

### Notable Quotes
> "[quote]" — [segment, sentiment]

### Trends Over Time
[If date data available: chart-ready data showing sentiment shifts]

### Actionable Insights
1. [Insight + recommended action]
2. ...

### Gaps
[What this feedback doesn't tell you — suggested follow-up research]

Save as markdown. If input was structured data (CSV), also save enriched data with sentiment scores as CSV.

Step 4: Offer Next Steps

  • "Want me to create user personas from these feedback patterns?"
  • "Should I triage the top themes as feature requests?"
  • "Want me to design an interview script to go deeper on a specific theme?"

Notes

  • Sentiment analysis is approximate — flag edge cases (sarcasm, mixed sentiment, non-English text)
  • Theme extraction should look for needs behind requests, not just surface-level topics
  • If sample sizes are small per segment, note limited confidence
  • For NPS data specifically, analyze Detractors (0-6), Passives (7-8), and Promoters (9-10) separately
  • Output enriched CSV when input is structured, so the user can use it in their own tools