AgentSkillsCN

reference-class-forecaster

借助历史类比,有效对抗乐观偏见,精准预测未来走势。

SKILL.md
--- frontmatter
name: reference-class-forecaster
description: Reference class forecasting skill to counter optimism bias using historical analogies
allowed-tools:
  - Read
  - Write
  - Glob
  - Grep
  - Bash
metadata:
  specialization: decision-intelligence
  domain: business
  category: forecasting
  priority: medium
  tools-libraries:
    - scipy.stats
    - pandas
    - custom algorithms

Reference Class Forecaster

Overview

The Reference Class Forecaster skill implements reference class forecasting methodology to counter optimism bias and the planning fallacy. It uses historical data from comparable projects or decisions to generate empirically-grounded forecasts, providing an "outside view" to complement internal estimates.

Capabilities

  • Reference class selection and validation
  • Distribution fitting from historical data
  • Adjustment factor calculation
  • Uncertainty quantification
  • Bias correction for planning fallacy
  • Documentation of reference class rationale
  • Comparison with inside view estimates
  • Reconciliation guidance

Used By Processes

  • Cognitive Bias Debiasing Process
  • Decision Quality Assessment
  • Strategic Scenario Development

Usage

Reference Class Definition

python
# Define reference class
reference_class = {
    "name": "Enterprise Software Implementations",
    "description": "Large-scale ERP implementations in manufacturing companies",
    "criteria": {
        "project_type": "ERP implementation",
        "industry": "manufacturing",
        "company_size": {"min": 1000, "max": 10000, "metric": "employees"},
        "project_budget": {"min": 5000000, "max": 20000000},
        "time_period": {"start": "2015", "end": "2023"}
    },
    "sample_size": 47,
    "data_source": "industry_benchmark_database"
}

Historical Data

python
# Reference class outcomes
historical_outcomes = {
    "cost_overrun": {
        "data": [1.15, 1.32, 1.08, 1.45, 1.22, ...],  # ratio to budget
        "unit": "ratio_to_budget"
    },
    "schedule_overrun": {
        "data": [1.20, 1.50, 1.10, 1.65, 1.35, ...],  # ratio to plan
        "unit": "ratio_to_planned_duration"
    },
    "benefit_realization": {
        "data": [0.75, 0.60, 0.85, 0.45, 0.70, ...],  # ratio to expected
        "unit": "ratio_to_expected_benefits"
    }
}

Inside View Estimate

python
# Current project estimate (inside view)
inside_view = {
    "project_name": "SAP S/4HANA Implementation",
    "estimated_cost": 12000000,
    "estimated_duration_months": 18,
    "expected_annual_benefits": 4000000,
    "confidence_level": 0.80,  # team's stated confidence
    "key_assumptions": [
        "Experienced implementation partner",
        "Strong executive sponsorship",
        "Proven methodology"
    ]
}

Adjustment Configuration

python
# Adjustment settings
adjustment_config = {
    "similarity_factors": {
        "project_complexity": {"current": "high", "weight": 0.3},
        "organizational_readiness": {"current": "medium", "weight": 0.25},
        "vendor_experience": {"current": "high", "weight": 0.2},
        "scope_definition": {"current": "medium", "weight": 0.25}
    },
    "adjustment_method": "regression_to_mean",
    "output_percentiles": [10, 25, 50, 75, 90]
}

Reference Class Selection Criteria

CriterionGood PracticePoor Practice
SimilaritySame project type, contextLoosely related
Sample Sizen >= 20n < 10
Data QualityVerified outcomesSelf-reported
RecencyLast 5-10 years> 15 years old
CompletenessFull project lifecyclePartial data

Input Schema

json
{
  "reference_class": {
    "name": "string",
    "criteria": "object",
    "sample_size": "number"
  },
  "historical_outcomes": {
    "metric_name": {
      "data": ["number"],
      "unit": "string"
    }
  },
  "inside_view": {
    "estimates": "object",
    "confidence_level": "number",
    "assumptions": ["string"]
  },
  "adjustment_config": {
    "similarity_factors": "object",
    "output_percentiles": ["number"]
  }
}

Output Schema

json
{
  "reference_class_statistics": {
    "metric_name": {
      "mean": "number",
      "median": "number",
      "std": "number",
      "percentiles": "object",
      "best_fit_distribution": "string"
    }
  },
  "adjusted_forecasts": {
    "metric_name": {
      "P10": "number",
      "P50": "number",
      "P90": "number",
      "expected_value": "number"
    }
  },
  "comparison": {
    "inside_view": "number",
    "outside_view_median": "number",
    "bias_factor": "number",
    "confidence_calibration": "string"
  },
  "reconciliation": {
    "recommended_estimate": "number",
    "rationale": "string",
    "residual_uncertainty": "object"
  }
}

Best Practices

  1. Select reference class before seeing inside view estimate
  2. Use objective criteria for class membership
  3. Seek disconfirming evidence on project uniqueness
  4. Document why reference class is appropriate
  5. Present both views to decision-makers
  6. Weight outside view more heavily initially
  7. Update as project-specific information emerges

Bias Correction

Common biases addressed:

  • Planning fallacy: Systematic underestimation of time/cost
  • Optimism bias: Overestimation of benefits
  • Uniqueness bias: "Our project is different"
  • Anchoring: Insufficient adjustment from initial estimate

Integration Points

  • Feeds into Decision Quality Assessment
  • Connects with Calibration Trainer for accuracy improvement
  • Supports Debiasing Coach agent
  • Integrates with Pre-mortem Facilitator for risk identification