--- name: query-expansion-strategy description: Query fan-out coverage for AI visibility. Covers semantic variation analysis and sub-question targeting. allowed-tools: WebSearch disable-model-invocation: true --- # Query Expansion Strategy Maximize AI visibility through query fan-out coverage. ## How LLMs Process Queries LLMs expand queries into 5-10 semantic variations (sub-questions) before generating responses. To get cited: 1. Cover topic clusters comprehensively 2. Include semantic variations naturally 3. Address related questions 4. Build entity relationships 5. Create topical depth ## Query Fan-Out Analysis **Example:** "How to prioritize leads" fans out to: - "What methodologies exist for lead prioritization?" - "What tools help with lead scoring?" - "What metrics indicate lead quality?" - "How do sales teams rank prospects?" - "What is lead scoring automation?" Your content must answer ALL sub-questions to maximize visibility. ## Tools for Fan-Out Analysis | Tool | Use | |------|-----| | Kuforia | Visualizes how AI breaks down topics | | Dan's Fan-out Tool | Shows sub-question decomposition | | ChatGPT/Perplexity | Ask "what sub-questions would you ask to answer X?" | ## Semantic Coverage Checklist For any target topic: 1. **Core question** - Direct answer to primary query 2. **Definition** - What is X? (for newcomers) 3. **How-to** - How do you do X? 4. **Why** - Why is X important? 5. **Comparison** - How does X compare to Y? 6. **Examples** - What are examples of X? 7. **Tools** - What tools help with X? 8. **Metrics** - How do you measure X? 9. **Mistakes** - What mistakes to avoid with X? 10. **Trends** - What's changing about X? ## Content Structure for Fan-Out **Recommended sections:** ```markdown ## What is [Topic]? [Definition for newcomers] ## Why [Topic] Matters [Business case, importance] ## How to [Topic] [Step-by-step methodology] ## [Topic] Tools and Software [Tool comparison table] ## [Topic] Metrics to Track [KPIs and measurement] ## Common [Topic] Mistakes [What to avoid] ## FAQ ### [Sub-question 1]? [Complete answer] ### [Sub-question 2]? [Complete answer] ``` ## Semantic Footprint Expansion Build entity relationships around your topic: ``` Primary Topic: Lead Scoring ├── Related Concepts: lead qualification, MQL, SQL, BANT ├── Tools: HubSpot, Salesforce, Marketo ├── Metrics: conversion rate, lead velocity ├── Personas: sales rep, marketing manager, SDR └── Use Cases: B2B sales, SaaS, enterprise ``` Include related terms naturally throughout content. ## Analysis Output When analyzing content for query expansion: ``` Target Query: [query] Sub-Questions Covered: X/10 ☑ Definition/What is ☑ How-to/Process ☐ Why/Importance (MISSING) ☐ Comparison (MISSING) ☑ Tools/Software ... Semantic Coverage: X% Missing Entities: [list] Recommendations: 1. Add section on [missing sub-question] 2. Include comparison with [related concept] 3. Add FAQ addressing [query variation] ```