Difference between revisions of "Manuals/calci/REGRESSIONANALYSIS"

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3.'''Residual output''':  
 
3.'''Residual output''':  
 
*The residuals show you how far away the actual data points are from the predicted data points.
 
*The residuals show you how far away the actual data points are from the predicted data points.
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 +
==Examples==
 +
1.
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{| class="wikitable"
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|+Spreadsheet
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|-
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!  !! A !! B
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|-
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! 1
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| '''Temperature''' || '''Drying Time(Hrs)'''
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|-
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! 2
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| 54 || 8
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|-
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! 3
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| 63  || 6
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|-
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! 4
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| 75 || 3 
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|-
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! 5
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| 82 || 1
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|}
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 +
=REGRESSIONANALYSIS(A2:A5,B2:B5,0.65,0)
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 +
==See Also==
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*[[Manuals/calci/SLOPE| SLOPE]]
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*[[Manuals/calci/STEYX| STEYX]]
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==References==
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*[http://en.wikipedia.org/wiki/Regression_analysis Regression Analysis]

Revision as of 15:29, 20 December 2016

REGRESSIONANALYSIS (YRange,XRange,ConfidenceLevel,NewTableFlag)


  • is the set of dependent variables .
  • is the set of independent variables.
  • level of Confidence value.
  • is either 0 or 1.

Description

  • This function is calculating the Regression analysis of the given data.
  • This analysis is very useful for the analyzing the large amounts of data and making predictions.
  • Regression analysis is a form of predictive modelling technique which investigates the relationship between a dependent and independent variable.
  • This technique is used for forecasting, time series modelling and finding the causal effect relationship between the variables.
  • This analysis give the result in three table values.
  1. Regression statistics table.
  2. ANOVA table.
  3. Residual output.

1.Regression statistics :

  • It contains multiple R, R Square, Adjusted R Square, Standard Error and observations.
  • R square gives the fitness of the data with the regression line.
  • That value is closer to 1 is the better the regression line fits the data.
  • Standard Error refers to the estimated standard deviation of the error term. It is called the standard error of the regression.

2.ANOVA table:

  • ANOVA is the analysis of variance.
  • This table splits in to two components which is Residual and Regression.
Total sum of squares = Residual (error) sum of squares + Regression (explained) sum of squares. 
  • Also this table gives the probability, T stat, significance of F and P.
  • When the significance of F is < 0.05, then the result for the given data is statistically significant.
  • When the significance of F is > 0.05, then better to stop using this set of independent variables.
  • Then remove a variable with a high P-value and return the regression until Significance F drops below 0.05.
  • So the Significance of P value should be <0.05.
  • This table containing the regression coefficient values also.

3.Residual output:

  • The residuals show you how far away the actual data points are from the predicted data points.

Examples

1.

Spreadsheet
A B
1 Temperature Drying Time(Hrs)
2 54 8
3 63 6
4 75 3
5 82 1
=REGRESSIONANALYSIS(A2:A5,B2:B5,0.65,0)

See Also

References