LINEST

Given partial data about a linear trend, calculates various parameters about the ideal linear trend using the least-squares method.

Sample Usage

LINEST(B2:B10, A2:A10)

LINEST(B2:B10, A2:A10, FALSE, TRUE)

Syntax

LINEST(known_data_y, [known_data_x], [calculate_b], [verbose])

  • known_data_y - The array or range containing dependent (y) values that are already known, used to curve fit an ideal linear trend.

    • If known_data_y is a two-dimensional array or range, known_data_x must have the same dimensions or be omitted.

    • If known_data_y is a one-dimensional array or range, known_data_x may represent multiple independent variables in a two-dimensional array or range. I.e. if known_data_y is a single row, each row in known_data_x is interpreted as a separated independent value, and analogously if known_data_y is a single column.

  • known_data_x - [ OPTIONAL - {1,2,3,...} with same length as known_data_y by default ] - The values of the independent variable(s) corresponding with known_data_y.

    • If known_data_y is a one-dimensional array or range, known_data_x may represent multiple independent variables in a two-dimensional array or range. I.e. if known_data_y is a single row, each row in known_data_x is interpreted as a separated independent value, and analogously if known_data_y is a single column.

      Note: For multiple independent variables, the order of the output parameters are corresponding to the input variables in reverse.

  • calculate_b - [ OPTIONAL - TRUE by default ] - Given a linear form of y = m*x+b, calculates the y-intercept (b) if TRUE. Otherwise, forces b to be 0 and only calculates the m values if FALSE, i.e. forces the curve fit to pass through the origin.

  • verbose - [ OPTIONAL - FALSE by default ] - A flag specifying whether to return additional regression statistics or only the linear coefficients and the y-intercept (default).

    • If verbose is TRUE, in addition to the set of linear coefficients for each independent variable and the y-intercept, LINEST returns

      • The standard error for each coefficient and the intercept,

      • The coefficient of determination (between 0 and 1, where 1 indicates perfect correlation),

      • Standard error for the dependent variable values,

      • The F statistic, or F-observed value indicating whether the observed relationship between dependent and independent variables is random rather than linear,

      • The degrees of freedom, useful in looking up F statistic values in a reference table to estimate a confidence level,

      • The regression sum of squares, and

      • The residual sum of squares.

See Also

TREND: Given partial data about a linear trend, fits an ideal linear trend using the least squares method and/or predicts further values.

LOGEST: Given partial data about an exponential growth curve, calculates various parameters about the best fit ideal exponential growth curve.

GROWTH: Given partial data about an exponential growth trend, fits an ideal exponential growth trend and/or predicts further values.

Examples

true
Visit the Learning Center

Using Google products, like Google Docs, at work or school? Try powerful tips, tutorials, and templates. Learn to work on Office files without installing Office, create dynamic project plans and team calendars, auto-organize your inbox, and more.

Search
Clear search
Close search
Google apps
Main menu
17821499120561856128
true
Search Help Center
true
true
true
true
true
35
false
false