3.1 KiB
3.1 KiB
name, category, description
| name | category | description |
|---|---|---|
| dice-wildcard-probability | research | Calculate probability that, when rolling n dice (standard six-sided) with a designated wildcard face that can count as any other face, at least k dice show the same face. |
Description
Calculate the probability that, when rolling n dice (standard six-sided) with a designated wildcard face (e.g., 1) that can count as any other face, at least k dice show the same face (using wildcards as needed).
When to Use
- Analyzing dice games with wildcards.
- Probability homework or game design.
Assumptions
- Dice are fair and independent.
- Wildcard face value is known (default: 1).
- Other faces are 2..6 (5 regular faces).
- We want probability of ≥ k matches for any face (including using wildcards).
Method Overview
- Let n = total dice, p_w = probability of wildcard = 1/6, p_r = 5/6 for regular.
- Let w = number of wildcards observed; w ~ Binomial(n, p_w).
- Given w wildcards, remaining r = n - w dice are regular, uniformly distributed over 5 faces.
- Need probability that among r regular dice, some face appears at least t = k - w times (if t ≤ 0, condition already satisfied; if t > r, impossible).
- For regular dice, compute P_cond(t, r) = Prob{max count ≥ t} using inclusion–exclusion over subsets of faces: [ P_{\text{cond}}(t,r)=\sum_{s=1}^{5}(-1)^{s+1}\binom{5}{s} \sum_{y=st}^{r}\binom{r}{y}\left(\frac{s}{5}\right)^{y} \left(1-\frac{s}{5}\right)^{r-y} \frac{\displaystyle\binom{y-st+s-1}{s-1}}{s^{y}}. ]
- Overall probability: [ P(\ge k)=\sum_{w=0}^{n}\binom{n}{w}p_w^{w}(1-p_w)^{n-w} \times \begin{cases} 1 & t\le 0\ 0 & t> r\ P_{\text{cond}}(t,r) & \text{otherwise} \end{cases} ] where (t = k - w) and (r = n - w).
Steps (for n=10, wildcard=1)
- Precompute binomial probabilities for w=0..10.
- For each w, compute t = k - w, r = 10 - w.
- If t ≤ 0 → contribution = binom prob.
- Else if t > r → contribution = 0.
- Else compute P_cond(t,r) using the formula (can be implemented via a short script).
- Sum contributions.
Example Results (n=10)
| k (≥ matches) | Probability |
|---|---|
| 3 | 0.9981245713 |
| 4 | 0.9112991700 |
| 5 | 0.6298112188 |
| 6 | 0.2928175250 |
| 7 | 0.0877220349 |
| 8 | 0.0163763622 |
| 9 | 0.0017599261 |
| 10 | 0.0000846093 |
Implementation Tips
- Use logarithms for large factorials if needed.
- The inner sum over y can be limited to y from s*t to r.
- For small n (≤20) direct computation is fine.
- Verify with Monte Carlo simulation for sanity.
Pitfalls
- Forgetting that wildcard can be used for any face, not just a specific one.
- Miscalculating the inclusion‑exclusion sign.
- Overlooking the case t ≤ 0 (already satisfied).
References
- Derived using generating functions and inclusion–exclusion.
- See also: “Probability of dice matches with wildcards” (standard technique).
How to Extend
- Change number of regular faces (e.g., different dice).
- Change wildcard probability (e.g., multiple wildcard faces).
- Compute probability of exactly k matches by subtracting P(≥k+1) from P(≥k).