Better Life Choices Lab · Decision Framework

Better Life Choices Lab · Decision Framework (EN/繁中)
Better Life Choices Lab
A data-driven decision loop: constraints → experiments → reflection

01 · Foundations: a reliable decision loop

This app turns “life choices” into a repeatable practice: define constraints, compare options, test assumptions, and reflect.

Loop
Constraints → Options → Scoring → Experiments → Reflection
Rule of thumb
Prefer reversible moves when uncertainty is high
How to use this page (touch-first)
  • Pick a case, or write your own options.
  • Adjust weights to match your values (not your mood).
  • Look at sensitivity: if rankings flip easily, you need better info.
  • Use the 3D view to spot trade-offs visually.
  • Train bias detection in the mini practice.

02 · Case library (3 diverse starting points)

Cases are not answers. They are templates to reveal constraints and missing information.

Case A · Career switch

High uncertainty, long-term impact. Typical tension: growth vs stability.

A

Case B · Move for relationship

A systems decision: identity + support network + career continuity.

B

Case C · Build a health habit

Low barrier, high compounding. Focus on environment constraints and consistency.

C

Your case · Your options

Start with 2–4 options. If you only have 1, you’re not deciding yet—you’re describing.

Custom

03 · Decision Lab (the practical tool)

Convert ambiguity into a structured comparison. Then attack your structure with sensitivity analysis.

Model

Ratings: 0–10 (higher is better). Weights: 0–10. Risk: 0–10 (higher means more uncertainty penalty).
Options
Criteria
Uncertainty
Export / Import
Copy JSON for backup or sharing. (No downloads, no popups.)

Results

Current best option
Decision stability (sensitivity)

Ranking

Option Final score Uncertainty penalty
If scores are close, treat it as a signal: you need better information, not better math.

Why this ranking?

Next steps (turn unknowns into tests)

04 · 3D Decision Space (Three.js)

Each option becomes a point in space: Impact (X), Effort (Y), Risk (Z). Tap a point to inspect.

Controls

Touch drag to rotate, pinch to zoom. This view updates from Decision Lab.

Inspector

Tap a point to view details.

05 · Bias Practice (Phaser)

A short practice: classify thought-cards. Goal: notice bias patterns before they drive decisions.

How it works

  • Tap left zone: “Emotion-driven”. Tap right zone: “Logic-driven”.
  • Some cards are mixed—practice naming the bias, not judging yourself.
  • After 60 seconds, you’ll see a pattern summary.

Session stats

Time:
Correct:
Misses:
Most frequent bias:

06 · Reflection Planner (daily loop)

Better choices are trained through review. Keep it lightweight and consistent.

Daily reflection prompt

Reflection log

Tip: look for patterns (e.g., consistently underestimating fatigue or overvaluing short-term relief).

Follow-up questions

  1. How might incorporating daily reflection practices change the way you evaluate potential decisions in uncertain situations?
  2. What alternative strategies could you use if emotional biases consistently influence your choices despite logical analysis?
  3. In what ways could reevaluating past decisions through a structured framework reveal patterns that improve future outcomes?
Ready.
Single-file demo · Touch-first · No external assets · Three r134 + Phaser 3.90.0

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