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•   Alternative terminology in statistics
•   In statistics, the dependent/independent variable terminology is used more widely
    than just in relation to controlled experiments. For example the data analysis of
    two jointly varying quantities may involve treating each in turn as the dependent
    variable and the other as the independent variable. However, for general
    usage, the pair response variable and explanatory variable is preferable as
    quantities treated as "independent variables" are rarely statistically
    independent.[2][3]
•   Depending on the context, an independent variable is also known as a "predictor
    variable," "regressor," "controlled variable," "manipulated variable," "explanatory
    variable," "exposure variable," and/or "input variable."[4] A dependent variable is
    also known as a "response variable," "regressand," "measured variable,"
    "observed variable," "responding variable," "explained variable," "outcome
    variable," "experimental variable," and/or "output variable."[5]
•   In addition, some special types of statistical analysis use terminology more
    relevant to the specific context. For example reliability theory uses the term
    exposure variable for what would otherwise be an explanatory or independent
    variable; medical statistics may use the term risk factor; and machine learning and
    pattern recognition use the term feature.
• In statistics, a full factorial experiment is an experiment whose
  design consists of two or more factors, each with discrete possible
  values or "levels", and whose experimental units take on all
  possible combinations of these levels across all such factors. A full
  factorial design may also be called a fully crossed design. Such an
  experiment allows studying the effect of each factor on the
  response variable, as well as the effects of interactions between
  factors on the response variable.
• For the vast majority of factorial experiments, each factor has only
  two levels. For example, with two factors each taking two levels, a
  factorial experiment would have four treatment combinations in
  total, and is usually called a 2×2 factorial design.
• If the number of combinations in a full factorial design is too high to
  be logistically feasible, a fractional factorial design may be done, in
  which some of the possible combinations (usually at least half) are
  omitted.

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Adstat upload 1

  • 1. Alternative terminology in statistics • In statistics, the dependent/independent variable terminology is used more widely than just in relation to controlled experiments. For example the data analysis of two jointly varying quantities may involve treating each in turn as the dependent variable and the other as the independent variable. However, for general usage, the pair response variable and explanatory variable is preferable as quantities treated as "independent variables" are rarely statistically independent.[2][3] • Depending on the context, an independent variable is also known as a "predictor variable," "regressor," "controlled variable," "manipulated variable," "explanatory variable," "exposure variable," and/or "input variable."[4] A dependent variable is also known as a "response variable," "regressand," "measured variable," "observed variable," "responding variable," "explained variable," "outcome variable," "experimental variable," and/or "output variable."[5] • In addition, some special types of statistical analysis use terminology more relevant to the specific context. For example reliability theory uses the term exposure variable for what would otherwise be an explanatory or independent variable; medical statistics may use the term risk factor; and machine learning and pattern recognition use the term feature.
  • 2. • In statistics, a full factorial experiment is an experiment whose design consists of two or more factors, each with discrete possible values or "levels", and whose experimental units take on all possible combinations of these levels across all such factors. A full factorial design may also be called a fully crossed design. Such an experiment allows studying the effect of each factor on the response variable, as well as the effects of interactions between factors on the response variable. • For the vast majority of factorial experiments, each factor has only two levels. For example, with two factors each taking two levels, a factorial experiment would have four treatment combinations in total, and is usually called a 2×2 factorial design. • If the number of combinations in a full factorial design is too high to be logistically feasible, a fractional factorial design may be done, in which some of the possible combinations (usually at least half) are omitted.