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    decision-trees

    Decision tree analysis for complex decision-making across all

    By @evgyur
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    SKILL.md
    ---
    name: decision-trees
    description: Decision tree analysis for complex decision-making across all domains. Use when user needs to evaluate multiple options with uncertain outcomes, assess risk/reward scenarios, or structure choices systematically. Applicable to business, investment, personal decisions, operations, career choices, product strategy, and any situation requiring structured evaluation. Triggers include decision tree, should I, what if, evaluate options, compare alternatives, risk analysis.
    ---
    
    # Decision Trees — Structured Decision-Making
    
    Decision tree analysis: a visual tool for making decisions with probabilities and expected value.
    
    ## When to Use
    
    āœ… **Good for:**
    - Business decisions (investments, hiring, product launches)
    - Personal choices (career, relocation, purchases)
    - Trading & investing (position sizing, entry/exit)
    - Operational decisions (expansion, outsourcing)
    - Any situation with measurable consequences
    
    āŒ **Not suitable for:**
    - Decisions with true uncertainty (black swans)
    - Fast tactical choices
    - Purely emotional/ethical questions
    
    ## Method
    
    **Decision tree** = tree-like structure where:
    - **Decision nodes** (squares) — your actions
    - **Chance nodes** (circles) — random events
    - **End nodes** (triangles) — final outcomes
    
    **Process:**
    1. **Define options** — all possible actions
    2. **Define outcomes** — what can happen after each action
    3. **Estimate probabilities** — how likely is each outcome (0-100%)
    4. **Estimate values** — utility/reward for each outcome (money, points, utility units)
    5. **Calculate EV** — expected value = Ī£ (probability Ɨ value)
    6. **Choose** — option with highest EV
    
    ## Formula
    
    ```
    EV = Ī£ (probability_i Ɨ value_i)
    ```
    
    **Example:**
    - Outcome A: 70% probability, +$100 → 0.7 Ɨ 100 = $70
    - Outcome B: 30% probability, -$50 → 0.3 Ɨ (-50) = -$15
    - **EV = $70 + (-$15) = $55**
    
    ## Classic Example (from Wikipedia)
    
    **Decision:** Go to party or stay home?
    
    ### Estimates:
    - Party: +9 utility (fun)
    - Home: +3 utility (comfort)
    - Carrying jacket unnecessarily: -2 utility
    - Being cold: -10 utility
    - Probability cold: 70%
    - Probability warm: 30%
    
    ### Tree:
    
    ```
    Decision
    ā”œā”€ Go to party
    │  ā”œā”€ Take jacket
    │  │  ā”œā”€ Cold (70%) → 9 utility (party)
    │  │  └─ Warm (30%) → 9 - 2 = 7 utility (carried unnecessarily)
    │  │  EV = 0.7 Ɨ 9 + 0.3 Ɨ 7 = 8.4
    │  └─ Don't take jacket
    │     ā”œā”€ Cold (70%) → 9 - 10 = -1 utility (froze)
    │     └─ Warm (30%) → 9 utility (perfect)
    │     EV = 0.7 Ɨ (-1) + 0.3 Ɨ 9 = 2.0
    └─ Stay home
       └─ EV = 3.0 (always)
    ```
    
    **Conclusion:** Go and take jacket (EV = 8.4) > stay home (EV = 3.0) > go without jacket (EV = 2.0)
    
    ## Business Example
    
    **Decision:** Launch new product?
    
    ### Estimates:
    - Success probability: 40%
    - Failure probability: 60%
    - Profit if success: $500K
    - Loss if failure: $200K
    - Don't launch: $0
    
    ### Tree:
    
    ```
    Launch product
    ā”œā”€ Success (40%) → +$500K
    └─ Failure (60%) → -$200K
    
    EV = (0.4 Ɨ 500K) + (0.6 Ɨ -200K) = 200K - 120K = +$80K
    
    Don't launch
    └─ EV = $0
    ```
    
    **Conclusion:** Launch (EV = +$80K) is better than not launching ($0).
    
    ## Trading Example
    
    **Decision:** Enter position or wait?
    
    ### Estimates:
    - Probability of rise: 60%
    - Probability of fall: 40%
    - Position size: $1000
    - Target: +10% ($100 profit)
    - Stop-loss: -5% ($50 loss)
    
    ### Tree:
    
    ```
    Enter position
    ā”œā”€ Rise (60%) → +$100
    └─ Fall (40%) → -$50
    
    EV = (0.6 Ɨ 100) + (0.4 Ɨ -50) = 60 - 20 = +$40
    
    Wait
    └─ No position → $0
    
    EV = $0
    ```
    
    **Conclusion:** Entering position has positive EV (+$40), better than waiting ($0).
    
    ## Method Limitations
    
    āš ļø **Critical points:**
    
    1. **Subjective estimates** — probabilities often "finger in the air"
    2. **Doesn't account for risk appetite** — ignores psychology (loss aversion)
    3. **Simplified model** — reality is more complex
    4. **Unstable** — small data changes can drastically alter the tree
    5. **May be inaccurate** — other methods exist that are more precise (random forests)
    
    **But:** The method is valuable for **structuring thinking**, even if numbers are approximate.
    
    ## User Workflow
    
    ### 1. Structuring
    
    Ask:
    - What are the action options?
    - What are possible outcomes?
    - What are values/utility for each outcome?
    - How do we measure value? (money, utility units, happiness points)
    
    ### 2. Probability Estimation
    
    Help estimate through:
    - Historical data (if available)
    - Comparable situations
    - Expert judgment (user experience)
    - Subjective assessment (if no data)
    
    ### 3. Visualization
    
    Draw tree in markdown:
    
    ```
    Decision
    ā”œā”€ Option A
    │  ā”œā”€ Outcome A1 (X%) → Value Y
    │  └─ Outcome A2 (Z%) → Value W
    └─ Option B
       └─ Outcome B1 (100%) → Value V
    ```
    
    ### 4. EV Calculation
    
    For each option:
    ```
    EV_A = (X% Ɨ Y) + (Z% Ɨ W)
    EV_B = V
    ```
    
    ### 5. Recommendation
    
    Option with highest EV = best choice (rationally).
    
    **But add context:**
    - Risk tolerance (can user handle worst case)
    - Time horizon (when is result needed)
    - Other factors (reputational risk, emotions, ethics)
    
    ## Application Examples by Domain
    
    ### Trading & Investing
    
    **Position Sizing:**
    - Options: 5%, 10%, 20% of capital
    - Outcomes: Profit/loss with different probabilities
    - Value: Absolute profit in $
    
    **Entry Timing:**
    - Options: Enter now, wait for -5%, wait for -10%
    - Outcomes: Price goes up/down
    - Value: Opportunity cost vs better entry price
    
    ### Business Strategy
    
    **Product Launch:**
    - Options: Launch / don't launch
    - Outcomes: Success / failure
    - Value: Revenue, market share, costs
    
    **Hiring Decision:**
    - Options: Hire candidate A / candidate B / don't hire
    - Outcomes: Successful onboarding / quit after X months
    - Value: Productivity, costs, opportunity cost
    
    ### Personal Decisions
    
    **Career Change:**
    - Options: Stay / change job / start business
    - Outcomes: Success / failure in new role
    - Value: Salary, satisfaction, growth, risk
    
    **Real Estate:**
    - Options: Buy house A / house B / continue renting
    - Outcomes: Price increase / decrease / personal situation changes
    - Value: Net worth, monthly costs, quality of life
    
    ### Operations
    
    **Capacity Planning:**
    - Options: Expand production / outsource / status quo
    - Outcomes: Demand increases / decreases
    - Value: Profit, utilization, fixed costs
    
    **Vendor Selection:**
    - Options: Vendor A / Vendor B / in-house
    - Outcomes: Quality, reliability, failures
    - Value: Total cost of ownership
    
    ## Calculator Script
    
    Use `scripts/decision_tree.py` for automated EV calculations:
    
    ```bash
    python3 scripts/decision_tree.py --interactive
    ```
    
    Or via JSON:
    
    ```bash
    python3 scripts/decision_tree.py --json tree.json
    ```
    
    JSON format:
    
    ```json
    {
      "decision": "Launch product?",
      "options": [
        {
          "name": "Launch",
          "outcomes": [
            {"name": "Success", "probability": 0.4, "value": 500000},
            {"name": "Failure", "probability": 0.6, "value": -200000}
          ]
        },
        {
          "name": "Don't launch",
          "outcomes": [
            {"name": "Status quo", "probability": 1.0, "value": 0}
          ]
        }
      ]
    }
    ```
    
    Output:
    
    ```
    šŸ“Š Decision Tree Analysis
    
    Decision: Launch product?
    
    Option 1: Launch
      └─ EV = $80,000.00
         ā”œā”€ Success (40.0%) → +$500,000.00
         └─ Failure (60.0%) → -$200,000.00
    
    Option 2: Don't launch
      └─ EV = $0.00
         └─ Status quo (100.0%) → $0.00
    
    āœ… Recommendation: Launch (EV: $80,000.00)
    ```
    
    ## Final Checklist
    
    Before giving recommendation, ensure:
    
    - āœ… All options covered
    - āœ… Probabilities sum to 100% for each branch
    - āœ… Values are realistic (not fantasies)
    - āœ… Worst case scenario is clear to user
    - āœ… Risk/reward ratio is explicit
    - āœ… Method limitations mentioned
    - āœ… Qualitative context added (not just EV)
    
    ## Method Advantages
    
    āœ… **Simple** — people understand trees intuitively
    āœ… **Visual** — clear structure
    āœ… **Works with little data** — can use expert estimates
    āœ… **White box** — transparent logic
    āœ… **Worst/best case** — extreme scenarios visible
    āœ… **Multiple decision-makers** — can account for different interests
    
    ## Method Disadvantages
    
    āŒ **Unstable** — small data changes → large tree changes
    āŒ **Inaccurate** — often more precise methods exist
    āŒ **Subjective** — probability estimates "from the head"
    āŒ **Complex** — becomes unwieldy with many outcomes
    āŒ **Doesn't account for risk preference** — assumes risk neutrality
    
    ## Important
    
    The method is valuable for **structuring thinking**, but numbers are often taken from thin air.
    
    What matters more is the process — **forcing yourself to think through all branches** and explicitly evaluate consequences.
    
    Don't sell the decision as "scientifically proven" — it's just a framework for conscious choice.
    
    ## Further Reading
    
    - Decision trees in operations research
    - Influence diagrams (more compact for complex decisions)
    - Utility functions (accounting for risk aversion)
    - Monte Carlo simulation (for greater accuracy)
    - Real options analysis (for strategic decisions)