Binomial Probability Distribution Calculator

Binomial Probability Calculator

Calculate probabilities for discrete random variables

Exactly: P(X = k) At Most: P(X ≤ k) Less Than: P(X < k) At Least: P(X ≥ k) More Than: P(X > k)
function combinations(n, k) { if (k n) return 0; if (k === 0 || k === n) return 1; if (k > n / 2) k = n – k; var res = 1; for (var i = 1; i <= k; i++) { res = res * (n – i + 1) / i; } return res; } function binomialPMF(n, k, p) { return combinations(n, k) * Math.pow(p, k) * Math.pow(1 – p, n – k); } function calculateBinomial() { var n = parseInt(document.getElementById('num_trials').value); var p = parseFloat(document.getElementById('prob_p').value); var k = parseInt(document.getElementById('num_k').value); var type = document.getElementById('calc_type').value; var errorDiv = document.getElementById('error_msg'); var resultBox = document.getElementById('binom_result_box'); errorDiv.style.display = 'none'; resultBox.style.display = 'none'; if (isNaN(n) || isNaN(p) || isNaN(k)) { errorDiv.innerText = "Please fill in all fields with valid numbers."; errorDiv.style.display = 'block'; return; } if (p 1) { errorDiv.innerText = "Probability (p) must be between 0 and 1."; errorDiv.style.display = 'block'; return; } if (k n) { errorDiv.innerText = "Successes (k) must be between 0 and the number of trials (n)."; errorDiv.style.display = 'block'; return; } var finalProb = 0; var label = ""; if (type === "equal") { finalProb = binomialPMF(n, k, p); label = "P(X = " + k + ")"; } else if (type === "less_equal") { for (var i = 0; i <= k; i++) { finalProb += binomialPMF(n, i, p); } label = "P(X ≤ " + k + ")"; } else if (type === "less") { for (var i = 0; i < k; i++) { finalProb += binomialPMF(n, i, p); } label = "P(X < " + k + ")"; } else if (type === "greater_equal") { for (var i = k; i <= n; i++) { finalProb += binomialPMF(n, i, p); } label = "P(X ≥ " + k + ")"; } else if (type === "greater") { for (var i = k + 1; i " + k + ")"; } var mean = n * p; var variance = n * p * (1 – p); var stdDev = Math.sqrt(variance); document.getElementById('main_result').innerHTML = label + " = " + finalProb.toFixed(6) + " (" + (finalProb * 100).toFixed(4) + "%)"; document.getElementById('res_mean').innerHTML = "Expected Value (Mean): " + mean.toFixed(4); document.getElementById('res_variance').innerHTML = "Variance: " + variance.toFixed(4); document.getElementById('res_std').innerHTML = "Std. Deviation: " + stdDev.toFixed(4); document.getElementById('res_q').innerHTML = "Prob. of Failure (q): " + (1 – p).toFixed(4); resultBox.style.display = 'block'; }

Understanding Binomial Probability Distribution

The Binomial Distribution is a fundamental probability distribution used in statistics that models the number of successes in a fixed number of independent trials. It is used when there are only two possible outcomes for each trial (often termed "Success" and "Failure").

The Four Criteria for a Binomial Experiment

  • Fixed Trials: There must be a specific number of trials ($n$).
  • Independent: Each trial must be independent of the others.
  • Two Outcomes: Each trial has only two possible results (success or failure).
  • Constant Probability: The probability of success ($p$) remains the same for every trial.

The Mathematical Formula

P(X = k) = nCk * pk * (1-p)n-k

Where:

  • n = Number of trials
  • k = Number of successes
  • p = Probability of success on a single trial
  • nCk = The combination formula (n! / [k!(n-k)!])

Practical Example

Imagine a factory produces light bulbs, and 5% (0.05) of them are defective. If you randomly select 10 light bulbs ($n = 10$), what is the probability that exactly 2 are defective ($k = 2$)?

  • n: 10
  • p: 0.05
  • k: 2

Using the calculator, the probability P(X = 2) is approximately 0.0746 (7.46%). This allows quality control managers to determine if a batch of products meets specific standards based on sample data.

Cumulative vs. Exact Probability

While an Exact calculation looks for exactly $k$ successes, Cumulative calculations look for a range:

  • At Most (P ≤ k): The probability of getting 0, 1, …, up to $k$ successes.
  • At Least (P ≥ k): The probability of getting $k, k+1, …, n$ successes.
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