Research: Dice Toss Simulation — Hot, Cold & Independence

Generated: 2025-12-15T20:18:04.166Z · Lottery: Dice Toss (1..6)

Pre-registration

  • Primary hypothesis: Under independence, conditioning on a lagging first block does not make the target appear sooner. (Δ = 0).
  • Primary metric: Primary outcome = ΔmeanWaitToFirstHit (RMST@200) for lagging − control; one-sided direction = lagging sooner (Δ<0).
  • Analysis plan: We report analytic 95% CIs for ΔRMST@200 (primary), plus secondary ΔmeanCount@10 and a bounded ΔpHitWithin(X) using a scenario-specific X chosen to avoid ceiling/floor (baseline near ~0.7). We also show a robustness grid over (cutoff, window, alpha).

Design

  • Mode: target
  • Rules: main 1 of 6
  • Seed: 1; Future draws: 200; Grid trials per cell: 2000
  • Primary horizon (RMST): 200; Secondary meanCount window: 10
  • Grid: cutoff ∈ {50, 100, 200}, windows ∈ {5, 10, 20, 50, 100}, α ∈ {0.01, 0.05}
  • UX pHitWithin window: 7
  • Target mode: random

Primary result (pre-registered)

Mode: target; cutoff=100; alpha=0.05; window=10; RMST horizon=200

Primary outcome: ΔmeanWaitToFirstHit (RMST@200) lagging − control

Definition: draw index of first hit in the future window (1..T), with “no hit” treated as right-censored at T; reported as RMST = E[min(Tfirst, T)].

Estimate: -1.099

95% CI: -2.463 to 0.266

One-sided p (approx): 0.057309

n: lagging=47; control=1908

Note: p-value is one-sided because direction (lagging sooner ⇒ Δ<0) is pre-registered; CIs are two-sided 95%.

Censoring rate: lagging=0.000000; control=0.000000

Secondary outcome: ΔmeanCount in next 10 draws (lagging − control)

Estimate: -0.083

95% CI: -0.411 to 0.246

(Linear expectation metric; not bounded by 0..1.)

Tertiary (bounded / UX metric): ΔpHitWithin(7) lagging − control

Window is chosen to avoid ceiling/floor when possible; still bounded and non-linear.

Estimate: 0.079999

95% CI: -0.034249 to 0.194248

Kaplan–Meier survival curve: probability the target has nothit yet by draw t

Curves should overlap under independence; systematic separation would indicate a real shift in time-to-first-hit.

Interpretation: Lagging numbers do not reach their first hit sooner than comparable non-lagging numbers under independence. Shaded areas represent pointwise 95% confidence intervals.

Limitations
  • Simulation-based
  • Assumes independence
  • Not testing real-world rigging

Data verdict (plain language)

Verdict: No evidence of a ‘due’ effect.

  • ΔRMST@200 = -1.099 (95% CI -2.463 to 0.266); one-sided p≈0.057309. Estimate is slightly sooner, but not reliably different from 0.
  • Interpretation: “Lagging sooner” means fewer expected draws until first hit (negative ΔRMST).

Power / sensitivity (approx)

Approximate minimal detectable effect (80% power; normal approximation; two-sided alpha). Approximate also because the cohort is defined by a binomial-tail conditioning event.

Primary metric baseline meanWait (RMST@200): 5.843

n: lagging=47; control=1908

MDE @80% power(|ΔmeanWait|): 1.950

Secondary baseline meanCount@10: 1.700

MDE @80% power(|ΔmeanCount|): 0.469

Interpretation: effects smaller than the MDE are hard to reliably detect with this cohort selection + sample size.

“Approximate” reflects both the normal approximation and the binomial-tail conditioning used to define cohorts.

Tertiary metric baseline: pHitWithin(7) = 0.728512 · MDE @80% power (|ΔpHit|) = 0.183860

Interpretation notes (important)

  • Independence null: for toy processes (coin/die) the true effect is 0 by construction; any single “significant” result can occur by chance when you scan many cells.
  • Ceiling/floor risk: when baseline pHitWithin is near 1 (ceiling) or near 0 (floor), ΔpHitWithin is a bounded, non-linear metric and can look more dramatic than it is.
  • Preferred quantity: the primary endpoint here is mean wait-to-first-hit (RMST@T), which directly targets “does it show up sooner?” and avoids the ceiling pathology of pHitWithin in high-p regimes.
  • Small cohorts: grid cells with very small cohort sizes (n <20) are shown for completeness but are not interpretable (often producing degenerate CIs like 0 to 0).

What these results do not show

  • No “compensation” mechanism: a cold streak does not create a forward advantage under independence.
  • No exploitable strategy: statistically significant cells (especially under ceiling/floor metrics or small n) do not imply predictability or an edge.
  • No jackpot implication: this does not change the combinatorial odds of a specific full ticket.
  • No claim about real-world fairness: real lotteries can be tested for bias separately; this report’s main claim is about conditional reasoning under the null.

Robustness grid (lagging vs control)

  • Each row is one (cutoff, α, window). Look for systematic drift away from 0; do not over-interpret isolated “significant” rows.
  • Rows with n(lag) or n(ctrl) < 20 are visually muted and are not interpretable.
modecutoffalphawindown(lag)n(ctrl)Δmean95% CI (Δmean)ΔRMST95% CI (ΔRMST)ΔpHit95% CI (ΔpHit)
target500.01521996-0.325-1.305 to 0.656-0.111-3.052 to 2.830NANA
target500.011021996-1.147-2.128 to -0.1650.890-6.951 to 8.732NANA
target500.012021996-0.797-1.779 to 0.1860.433-8.390 to 9.256NANA
target500.015021996-1.211-1.327 to -1.0950.250-8.574 to 9.074NANA
target500.0110021996-2.020-3.012 to -1.0270.250-8.574 to 9.074NANA
target500.055431930-0.181-0.451 to 0.0900.286-0.173 to 0.744-0.157621-0.307657 to -0.007585
target500.0510431930-0.303-0.664 to 0.0570.785-0.231 to 1.801-0.034173-0.156944 to 0.088598
target500.0520431930-0.279-0.832 to 0.2731.018-0.619 to 2.656-0.015942-0.079353 to 0.047470
target500.0550431930-0.021-0.863 to 0.8201.138-0.778 to 3.0540.000000≈0.000000 (degenerate CI)
target500.05100431930-0.469-1.721 to 0.7831.138-0.778 to 3.0540.000000≈0.000000 (degenerate CI)
target1000.01581985-0.111-0.602 to 0.3800.706-0.014 to 1.427NANA
target1000.011081985-0.576-1.023 to -0.1290.578-1.316 to 2.472NANA
target1000.0120819850.174-0.657 to 1.005-0.079-2.151 to 1.992NANA
target1000.0150819850.957-1.198 to 3.112-0.191-2.264 to 1.882NANA
target1000.01100819850.909-2.568 to 4.386-0.191-2.264 to 1.882NANA
target1000.0554719080.100-0.118 to 0.318-0.451-0.942 to 0.0390.1314730.004910 to 0.258036
target1000.0510471908-0.083-0.411 to 0.246-0.863-1.784 to 0.0580.018043-0.078668 to 0.114753
target1000.05204719080.300-0.154 to 0.754-0.985-2.347 to 0.3770.0256810.018584 to 0.032779
target1000.05504719080.255-0.495 to 1.006-1.099-2.463 to 0.2660.000000≈0.000000 (degenerate CI)
target1000.05100471908-0.680-1.783 to 0.423-1.099-2.463 to 0.2660.000000≈0.000000 (degenerate CI)
target2000.01541986-0.337-1.318 to 0.6440.373-1.588 to 2.334NANA
target2000.0110419860.325-1.062 to 1.7121.447-2.352 to 5.245NANA
target2000.0120419860.376-1.096 to 1.8480.686-3.115 to 4.487NANA
target2000.0150419861.159-1.437 to 3.7540.574-3.229 to 4.376NANA
target2000.01100419861.242-0.725 to 3.2080.574-3.229 to 4.376NANA
target2000.0553519350.021-0.273 to 0.3150.267-0.251 to 0.785-0.037874-0.203260 to 0.127512
target2000.05103519350.185-0.259 to 0.6300.383-0.694 to 1.459-0.009671-0.135606 to 0.116263
target2000.05203519350.437-0.157 to 1.0310.591-1.108 to 2.2900.0211890.014772 to 0.027605
target2000.05503519350.648-0.370 to 1.6670.476-1.226 to 2.1780.000000≈0.000000 (degenerate CI)
target2000.051003519350.753-0.464 to 1.9700.476-1.226 to 2.1780.000000≈0.000000 (degenerate CI)

How to Cite This Page

Lucky Picks. “Research: Dice Toss Simulation — Hot, Cold & Independence.”
https://luckypicks.io/research/independence-and-lagging-numbers/dice-toss-simulation/
(Accessed December 2025)

For a non-technical explanation of what these results mean for players, see our Hot & Cold Lottery Numbers guide.