Standard normal distribution
The standard normal distribution, also known as the z-distribution or the Gaussian distribution, is a specific probability distribution that is commonly used in statistical analysis and hypothesis testing
The standard normal distribution, also known as the z-distribution or the Gaussian distribution, is a specific probability distribution that is commonly used in statistical analysis and hypothesis testing. It is a continuous probability distribution characterized by a bell-shaped curve.
The standard normal distribution has a mean of 0 and a standard deviation of 1. The shape of the distribution is symmetric around the mean, with the peak occurring at the mean. The total area under the curve is equal to 1.
The standard normal distribution is particularly useful in statistics because it allows us to convert any normal distribution into the standard form. This is done by using a transformation called standardization, which involves subtracting the mean of the distribution from each data point and then dividing by the standard deviation.
One of the key properties of the standard normal distribution is the concept of z-scores. A z-score measures the number of standard deviations a data point is away from the mean of a distribution. It provides a standardized way to compare values from different normal distributions.
The area under the curve of the standard normal distribution can be used to determine probabilities associated with certain events. For example, the area to the left of a specific z-score represents the probability that a randomly selected value is less than that z-score. The area to the right represents the probability that a randomly selected value is greater than the z-score. The area between two z-scores represents the probability that a randomly selected value falls within that range.
To facilitate calculations related to the standard normal distribution, z-tables or software programs are often used. These tables provide the cumulative probability values associated with specific z-scores. Additionally, statistical software packages calculate these probabilities directly.
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