Skip to main content

learn.howToCalculate

learn.whatIsHeading

Skewness measures the asymmetry of a probability distribution. Positive skew (right tail) means a few large values pull the mean up; negative skew (left tail) means a few small values pull it down.

공식

Skewness = E[(X − μ)³] / σ³ = (Σ(xᵢ − x̄)³) / (n × s³)
X
data set
μ
mean
σ
standard deviation
s
sample standard deviation

단계별 가이드

  1. 1Sample skewness = (n/((n−1)(n−2))) × Σ((xᵢ−x̄)/s)³
  2. 2Symmetric: skewness ≈ 0
  3. 3Right-skewed: mean > median > mode
  4. 4Left-skewed: mean < median < mode

풀어진 예시

입력
Income data with a few very high earners
결과
Positively skewed (right tail); mean > median
입력
Test scores where most are near the top
결과
Negatively skewed (left tail)

자주 묻는 질문

What does skewness tell us?

Positive skewness: tail on right (long right tail). Negative: tail on left. Zero: symmetric.

When is data considered skewed?

Typically, |skewness| > 0.5 indicates noticeable skew. > 1 is highly skewed.

How is skewness different from kurtosis?

Skewness measures asymmetry. Kurtosis measures tail weight (how extreme the values are).

설정

개인정보이용약관정보© 2026 PrimeCalcPro