Statistical Methods in Quality Management
Introduction to Statistical Methods
- Statistics: The science of collecting, organizing, analyzing, interpreting, and presenting data.
- Purpose: Helps managers to understand data, variety, and make informed decisions in quality management through various applications:
- Product and market analysis
- Product and process design
- Process control
- Testing and inspection
- Improvement identification and verification
- Reliability analysis
Basic Probability Concepts
- Experiment: A process with a defined outcome.
- Outcome: A result observed from an experiment.
- Sample Space: All possible outcomes from an experiment.
- Probability: Likelihood of an outcome occurring, where 0 ≤ P(x) ≤ 1 and total probability sums to 1.
- Event: A collection of outcomes from the sample space.
- Complement: Outcomes not included in an event (A).
Rules of Probability
- P(event) = Sum of probabilities of its outcomes.
- P(A') = 1 - P(A).
- For mutually exclusive events A and B, P(A or B) = P(A) + P(B).
- For non-mutually exclusive A and B, P(A or B) = P(A) + P(B) - P(A and B).
Conditional Probability
- Definition: Probability of event A given event B has occurred.
- Formula: P(A|B) = P(A and B) / P(B).
- Multiplication Rule: P(A and B) = P(A|B) * P(B) = P(B|A) * P(A).
- If A and B are independent, then P(A|B) = P(A) and P(A and B) = P(A) * P(B).
Example: RoadRunner Inc.
- Production involves 2 stages; defect probabilities:
- Stage 1: 15% defective
- Stage 2: 10% defective
- Repairable Units:
- Defective in Stage 1 and Stage 2 → Completely defective
- Defective in Stage 1, Not in Stage 2 → Repairable I
- Not in Stage 1, Defective in Stage 2 → Repairable II
- Not defective in either → Completely good
- Probabilities Calculated:
- Completely defective: 0.015
- Repairable I: 0.135
- Repairable II: 0.085
- Completely good: 0.765
- Total Repairable Units Probability: P = 0.135 + 0.085 = 0.220
Probability Distributions
- Random Variable: Numerical representation of outcomes.
- Probability Distribution: Characterizes possible values of a random variable and their probabilities.
- Cumulative Distribution Function (CDF): P(X ≤ x).
Discrete Probability Distributions
- Definition: Random variable can take finite or countable values.
- Binomial Distribution: Used to model number of defective items in a sample.
- Formula: P(x) = nCx * p^x * (1 - p)^(n-x)
- Expected Value: E[X] = np
- Variance: Var[X] = np(1 - p)
- Standard Deviation: SD[X] = √np(1 - p)
- Excel Function:
BINOM.DIST(number_s, trials, probability_s, cumulative)
Example: SAT Partners
- Sample of 250 bills: 196 overdue, 54 paid.
- Probability of paid = 54/250 = 0.216; overdue = 1 - paid.
- Binomial calculations:
- P(exactly 2 bills paid) = 0.000483298
- P(20 or fewer bills paid) = 0.999058866
- P(40 or more overdue) = 0.47202
Poisson Distribution
- Definition: Models number of events occurring in a fixed interval of time or space.
- Parameter: λ (lambda), the average number of events.
- Formula: P(x) = (λ^x * e^-λ) / x!
- Expected Value and Variance: E[X] = λ, Var[X] = λ.
- Excel Function:
POISSON.DIST(x, mean, cumulative)
Continuous Probability Distributions
- Definition: Random variable defined over intervals of real numbers; infinite outcomes.
- Probability Density Function: Curve characterizing outcomes; integrals give probabilities.
Normal Distribution
- Characteristics: Bell-shaped curve; symmetric around the mean.
- Standard Normal Distribution: Mean = 0, Standard Deviation = 1.
- Cumulative Probability: Calculated with functions such as
NORM.DIST()
. - Area Under the Curve: Represents probabilities; total area equals 1.
- 68-95-99.7 Rule: % of values within 1, 2, and 3 standard deviations from the mean.
- Example (Tire Warranty): Mean = 75,000 miles, SD = 6,000 miles.
- Calculate probabilities for replacements at lower and higher mileages.
Exponential Distribution
- Definition: Models time between random events; relates to the Poisson distribution.
- Formula: f(t) = λe^(-λt); CDF: F(t) = 1 - e^(-λt)
- Excel Function:
EXPON.DIST(x, lambda, TRUE)
Conclusion
Understanding these statistical methods is crucial for effective quality management and decision-making in various organizational processes.
Practice with examples will strengthen comprehension of probability, distributions, and statistical inference, which are key for managing quality.