Distribution & Probability

Cards (41)

  • What does standard deviation measure?
    It measures the spread of data in the same unit as the dependent variable.
  • How is standard deviation defined in relation to the mean?
    It is the average distance between any point and the mean.
  • How is standard deviation calculated?
    It is calculated using the square root of variance.
  • What is variance represented as?
    Variance is represented as σ².
  • What is a key use of variance?
    It forms the basis for several tests and uses all the data.
  • What are some limitations of variance?
    It requires normal distribution, is sensitive to outliers, and units can be nonsensical.
  • What are the learning outcomes of this session?
    Understanding normal distribution, skew, z scores, sampling error, and how to mitigate sampling error.
  • What is the first learning outcome related to normal distribution?
    Understand what the normal distribution is.
  • How is normal distribution associated with skew and standard deviations?
    It is associated with the symmetry of data around central scores.
  • What is the purpose of transforming data using z scores?
    To standardize data and reduce the impact of skewness.
  • What is sampling error?
    It is the difference between the estimated values from a sample and the true population mean.
  • How can we calculate or mitigate sampling error?
    By estimating values and using statistical methods to improve accuracy.
  • What shape does a normal distribution take?
    A bell curve.
  • What characterizes data in a normal distribution?
    Data is symmetrical around central scores where mean, median, and mode are equal.
  • What does it mean for data to fit along a Gaussian curve?
    It means the data follows a normal distribution pattern.
  • Which of the following is an example of data that can be normally distributed?
    Height
  • What is another example of data that can be normally distributed?
    Shoe size
  • Which type of intelligence is mentioned as an example of normal distribution?
    IQ
  • What is another example of data that can be normally distributed?
    Birth weight
  • How is Pearson’s coefficient of skew calculated?
    Using the median and the mean.
  • What does a skew of less than 0 indicate?
    The data is negatively skewed.
  • What does a skew of greater than 0 indicate?
    The data is positively skewed.
  • What are normality tests used for?
    To determine if data is normally distributed.
  • What is a simple way to test for normality?
    Simply ask, "Is your data normal?" with a yes or no answer.
  • What can be predicted from the mean and standard deviation of data?
    The value of y for any value of x.
  • Why is the shape of the distribution important for statistical tests?
    Most statistical tests assume normal distribution.
  • What are the two categories of statistical tests mentioned?
    Parametric and non-parametric tests.
  • What is an example of a parametric test?
    t-test
  • What is another example of a parametric test?
    ANOVA
  • What is an example of a statistical method that is not a test?
    Regression
  • What do parametric tests assume about the values?
    They assume that the mean and standard deviation accurately reflect the population distribution.
  • What is the purpose of transforming data into z scores?
    To standardize data and reduce the impact of skewness.
  • If the mean (M) is 50 and the standard deviation (SD) is 5, what is the z score for a score of 55?
    1
  • What can z scores help achieve in data analysis?
    They can transform data to a standardized scale that adheres to normal distribution.
  • What is the definition of sampling error?
    It is the difference between estimated values from a sample and the true population mean.
  • How is the standard error of the mean calculated?
    It is calculated as the standard deviation divided by the square root of the number of data points.
  • What does the standard error tell us?
    It tells us how likely our sample will vary from one sampling to another.
  • What are the largest influences on standard error?
    Variability of the original data and total N used to create the sample mean.
  • What do confidence intervals represent?
    The range of values that contain the true value of a statistic in a certain proportion of samples.
  • What do non-overlapping standard error of mean (SEM) bars imply?
    They often imply significant differences between conditions.