| name | critical-evaluation |
| description | Systematic critical evaluation framework for analyzing arguments, detecting cognitive biases, and improving decision quality. Use for complex decisions, debate analysis, and identifying logical fallacies. |
| version | 1.0.0 |
| author | DunCrew |
| metadata | {"openclaw":{"emoji":"🔍","primaryEnv":"shell"}} |
Critical Evaluation Skill
A systematic framework for analyzing arguments, detecting cognitive biases, and improving decision quality through structured critical thinking.
When to Use This Skill
- Complex decisions with significant consequences
- Evaluating arguments or debates
- Reviewing proposals or plans
- Analyzing conflicting information
- Before making important recommendations
- When cognitive biases may be influencing judgment
The Critical Evaluation Framework
Phase 1: Argument Deconstruction
Break down the argument or decision into core components:
- Claim: What is being asserted?
- Evidence: What supports the claim?
- Reasoning: How does evidence connect to claim?
- Assumptions: What is being taken for granted?
- Counterarguments: What opposing views exist?
Phase 2: Cognitive Bias Detection
Check for common cognitive biases:
| Bias | Description | Questions to Ask |
|---|
| Confirmation Bias | Seeking information that confirms existing beliefs | "Am I ignoring contradictory evidence?" |
| Anchoring Bias | Relying too heavily on first piece of information | "Did the initial information distort my judgment?" |
| Availability Heuristic | Overestimating importance of recent/memorable info | "Am I overweighing vivid examples?" |
| Dunning-Kruger Effect | Overestimating one's own competence | "Do I really have the expertise needed?" |
| Sunk Cost Fallacy | Continuing because of past investment | "Am I letting past costs influence future decisions?" |
| Groupthink | Conforming to group opinion | "Am I agreeing just to maintain harmony?" |
| Framing Effect | Being influenced by how info is presented | "Would I decide differently if framed another way?" |
Phase 3: Logical Fallacy Detection
Identify common logical fallacies:
| Fallacy | Pattern | Example |
|---|
| Ad Hominem | Attacking person, not argument | "His idea is bad because he's inexperienced" |
| Straw Man | Misrepresenting opponent's position | "You want to destroy the economy" (from "regulate pollution") |
| False Dilemma | Presenting only two options | "Either we cut costs or we go bankrupt" |
| Slippery Slope | Assuming one step leads to catastrophe | "If we allow this, then everything will collapse" |
| Appeal to Authority | Using authority as evidence | "Expert X says so, so it must be true" |
| Correlation ≠ Causation | Assuming causation from correlation | "Ice cream sales increase with drownings" |
| Hasty Generalization | Conclusion from insufficient evidence | "Two failures mean the whole approach is wrong" |
Phase 4: Evidence Quality Assessment
Evaluate the quality of evidence:
- Source credibility: Expert, biased, reputable?
- Recency: How current is the information?
- Methodology: How was evidence gathered?
- Sample size: Is it statistically significant?
- Replicability: Can results be reproduced?
- Conflict of interest: Are there ulterior motives?
Phase 5: Alternative Perspectives
Deliberately consider opposing views:
- Devil's Advocate: Argue against your own position
- Red Team: Attack the decision as an adversary would
- Multiple Scenarios: Consider best/worst/most likely cases
- Long-term View: How will this look in 5 years?
- Outside View: How have similar situations played out?
Phase 6: Confidence Calibration
Assess and communicate uncertainty:
- Confidence Level: High/Medium/Low with reasoning
- Key Uncertainties: What we don't know
- Information Gaps: What would help reduce uncertainty
- Sensitivity Analysis: Which assumptions matter most
Application Templates
Decision Evaluation Template
## Decision: [Brief description]
### 1. Core Components
- Claim:
- Evidence:
- Reasoning:
- Assumptions:
### 2. Bias Check
- Confirmation bias risk: [High/Medium/Low]
- Anchoring bias risk: [High/Medium/Low]
- Other biases identified:
### 3. Fallacy Check
- Logical fallacies found:
- Argument weaknesses:
### 4. Evidence Quality
- Source credibility:
- Methodology strength:
- Key limitations:
### 5. Alternative Perspectives
- Devil's advocate view:
- Red team concerns:
- Scenario analysis:
### 6. Recommendation
- Confidence level: [High/Medium/Low]
- Key uncertainties:
- Final recommendation:
Argument Analysis Template
## Argument Analysis
### Original Argument
[Quote or summarize]
### Deconstruction
1. **Claim**:
2. **Evidence**:
3. **Reasoning**:
4. **Assumptions**:
### Critical Assessment
- **Strengths**:
- **Weaknesses**:
- **Biases detected**:
- **Fallacies identified**:
### Improved Argument
[How to strengthen the argument]
Integration with Other Skills
With Structured Reasoning
Use critical evaluation as a validation phase in the structured reasoning flywheel:
- Phase 5: Validation → Apply critical evaluation
- Phase 6: Decision → Incorporate critical insights
- Phase 7: Review → Include bias awareness
With Self-Improving Agent
Log critical evaluation insights:
- Decision patterns with bias risk
- Successful bias mitigation strategies
- Common fallacies in domain
With Diverse Ideation
Ensure ideation avoids:
- Groupthink in brainstorming
- Anchoring on first ideas
- Confirmation bias in idea selection
Examples
Example 1: Business Decision
Situation: "Should we launch Product X?"
Critical Evaluation:
- Deconstruct: Claim (launch will succeed), Evidence (market research), Assumptions (no competitor response)
- Bias check: Confirmation bias (only researched positive outcomes), Sunk cost fallacy (already spent $500k)
- Fallacy check: False dilemma (launch vs. abandon, no middle ground)
- Evidence: Research methodology flaws (small sample, leading questions)
- Alternatives: Soft launch, pivot, partner with existing player
- Confidence: Medium (due to competitor uncertainty)
Example 2: Technical Architecture
Situation: "Microservices are always better than monoliths"
Critical Evaluation:
- Deconstruct: Absolute claim, evidence (scalability needs), assumptions (team ready for complexity)
- Bias check: Availability heuristic (recent microservices success stories), Bandwagon effect (everyone's doing it)
- Fallacy check: Hasty generalization (from few examples), False dilemma (only two options)
- Evidence: Case studies lack context (team size, domain)
- Alternatives: Modular monolith, hybrid approach
- Confidence: Low claim (not "always"), High for specific context
Implementation Notes
When NOT to Use
- Simple factual questions
- Time-sensitive emergencies
- Low-stakes decisions
- When heuristic clearly applies
Skill Activation Cues
- "Critically evaluate..."
- "What are the weaknesses of..."
- "Play devil's advocate for..."
- "Identify biases in..."
- "What assumptions are we making..."
Tool Integration
- memory_search: Find similar past decisions
- web_search: Gather counter-evidence
- sessions_spawn: Create devil's advocate agent
- write_file: Document evaluation
Continuous Improvement
Track effectiveness:
- Decision outcomes vs. critical evaluation predictions
- Bias detection accuracy
- Common patterns in your thinking
- Adjust framework based on results
References
- Kahneman, D. (2011). Thinking, Fast and Slow
- Tetlock, P. (2015). Superforecasting
- Heath, C. & Heath, D. (2013). Decisive