Decision Making Under Uncertainty Frameworks
Decision making under uncertainty frameworks: minimax regret, expected utility, satisficing, maximax compared. When each applies.

Different decisions call for different frameworks. This guide compares the four classical approaches + shows when each is most useful.
1. Expected Utility - the workhorse
Maximise probability-weighted utility.
How it works:
- For each option, calculate sum of (probability × utility) across all outcomes.
- Choose the option with highest expected utility.
When it dominates:
- Probabilities are reasonably well-known.
- Decision is repeated or high-stakes single.
- You have clear utility scale (your subjective valuation of outcomes).
- Time available for analysis.
When it fails:
- Probabilities are unknown or highly disputed.
- Utility scale is itself uncertain.
- Outcomes include 'unimaginable' scenarios that can't be utility-assessed.
Practical use:
- Investment decisions, portfolio construction.
- Career decisions where alternatives can be probabilistically assessed.
- Insurance buying.
- Medical treatment choices (with NHS / NICE-published probabilities).
2. Minimax Regret - choose the option with smallest worst-case regret
When you can't tolerate specific bad outcomes.
How it works:
- For each option, identify the worst-case outcome.
- For each option-outcome combination, calculate 'regret' = (best outcome you could have achieved) - (outcome you actually got).
- Find the maximum regret for each option (across all states of nature).
- Choose the option with the lowest maximum regret.
Why it matters:
- Some decisions are dominated by the question 'how badly will I feel if X happens'.
- Regret aversion is psychologically real + sometimes economically rational.
- Example: if you reject a job offer + it turns out to be your dream company, you'll regret it forever.
When it dominates:
- One-off decisions with high asymmetric downside.
- You have strong preferences against specific bad outcomes.
- You're psychologically vulnerable to regret + need to safeguard.
When it fails:
- Decisions where multiple bad outcomes are possible and you can't rank them.
- Repeated decisions where law of large numbers means individual regret matters less.
3. Satisficing - find any acceptable option
When time is short + perfect is enemy of good.
How it works:
- Define what 'acceptable' means (specific threshold criteria).
- Generate options.
- Take the first one that meets your threshold.
- Don't waste time optimising.
Why it matters:
- Herbert Simon (Nobel 1978) showed that satisficing often beats optimisation in real-world conditions where information-gathering has costs.
- Time + cognitive resources are scarce.
- 'Good enough' decisions made fast often beat 'optimal' decisions made slowly.
When it dominates:
- Time-constrained decisions.
- Decisions with diminishing returns to research.
- Routine + low-stakes choices.
- Most consumer decisions (which to buy at supermarket).
When it fails:
- High-stakes decisions where optimal vs acceptable creates significant value gap.
- Decisions where threshold criteria are hard to articulate.
- Long-term reversal cost is low (over time, you can switch and find better).
Real-world example:
- Choosing a restaurant: satisficing (find any with reasonable reviews) usually fine.
- Choosing a house to buy: optimisation usually better (large lifetime impact).
4. Maximax - choose the highest possible upside
When upside dominates + downside is small.
How it works:
- For each option, identify the best possible outcome.
- Choose the option with the highest 'best outcome'.
- Ignore downside (or accept it).
Why it matters:
- Some decisions are dominated by 'what's the upside if this works?'
- Small experimental bets often have asymmetric upside.
- Venture-capital reasoning: most fail, but ones that succeed return 100x+.
When it dominates:
- Small experimental bets where downside is limited.
- Option-acquisition decisions (low cost + high potential upside).
- Asymmetric-payoff opportunities (you can only lose 1x but win 100x).
- Personal experimentation (try a new skill, business idea).
When it fails:
- High-cost decisions where downside is meaningful.
- Decisions where you can't actually lose just '1x' (long-tail negative outcomes).
Real-world examples:
- Buying an option ticket: maximax thinking; small premium, big payoff if successful.
- Submitting one of N article pitches: each has small cost; one accepted is great upside.
- Going on a 30-min coffee meeting with someone new: small time cost, potentially big career upside.
Decision-by-decision framework selection
Which to use when.
Use EXPECTED UTILITY when:
- Probabilities reasonably well-known.
- Repeated or high-stakes single decision.
- You have utility scale.
- Time available for analysis.
- Example: portfolio construction, career change with researchable industries.
Use MINIMAX REGRET when:
- One-off decision with strong asymmetric downside.
- Specific bad outcomes you'd particularly hate.
- Probabilities are uncertain or disputed.
- Example: choosing whether to email an ex; selling a beloved car.
Use SATISFICING when:
- Time-constrained.
- Diminishing returns to research.
- Routine, low-stakes, reversible.
- Example: restaurant choice; appliance purchase; routine consumer decisions.
Use MAXIMAX when:
- Limited downside.
- Asymmetric upside.
- Experimental + option-acquiring.
- Example: trying a new business idea on a small scale; reaching out to a connection.
Hybrid approaches
Combining frameworks.
Real-world decisions often benefit from hybrid framework use:
- EU + minimax floor: maximise expected utility BUT ensure worst-case isn't disastrous (e.g. portfolio strategy).
- Satisfice + maximax: find acceptable option first, then push for upside within acceptable (e.g. job search).
- EU + satisficing constraint: maximise expected utility BUT only consider options that meet basic acceptability criteria (e.g. property buying).
- Maximax + minimax safety net: pursue upside but only if downside is limited (e.g. starting side business).
Why hybrids work:
- Real decisions have multiple dimensions.
- Single-criterion optimisation can ignore important constraints.
- Layering frameworks captures more nuance.
Common framework misapplications
Where people go wrong.
- Using EU when probabilities are guesses: false precision; minimax regret often better.
- Using minimax regret for low-stakes decisions: leads to risk-paralysis on trivial choices.
- Using satisficing on high-stakes irreversible decisions: under-optimisation costs lifetime value.
- Using maximax on decisions with real downside: ignores meaningful negative outcomes.
- Sticking to one framework regardless of context: 'I always optimise everything' = decision paralysis.
- Not articulating your framework: implicit framework choice misses better fits.