Toolkit for Quantitative Surveys: Difference between revisions

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Teacher: Jutta Heikkilä
Type of course: [[:Category:Free choice studies|Free choice studies]], [[:Category:toolbox courses|toolbox courses]] in [[:Category:stastical methods|stastical methods]]
Course code: MET8LF001
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* '''[[w:SPSS|SPSS Statistics]]''' is a [[w:computer program|software package]] used for [[w:statistical analysis|statistical analysis]]. ( Wikipedia )
* '''[[w:SPSS|SPSS Statistics]]''' is a [[w:computer program|software package]] used for [[w:statistical analysis|statistical analysis]]. ( Wikipedia )


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[[Category:realcontent]]
[[Category:realcontent]]
[[Category:Free choice studies]],
[[Category:Toolbox courses]]
[[Category:Stastical methods]]

Revision as of 15:03, 23 January 2015

Teacher: Jutta Heikkilä

Type of course: Free choice studies, toolbox courses in stastical methods

Course code: MET8LF001



  • Statistical inference is the process of drawing conclusions from data that are subject to random variation, for example, observational errors or sampling variation. ( Wikipedia )
  • A crosstab is another name for a contingency table, which is a type of table created by crosstabulation. In survey research (e.g., polling, market research), a "crosstab" is any table showing summary statistics. Commonly, crosstabs in survey research are concatenations of multiple different tables. For example, the crosstab below combines multiple contingency tables and tables of averages. ( Wikipedia )
  • The Pearson product-moment correlation coefficient (sometimes referred to as the PPMCC or PCC, or Pearson's r) is a measure of the linear correlation (dependence) between two variables X and Y, giving a value between +1 and −1 inclusive, where 1 is total positive correlation, 0 is no correlation, and −1 is total negative correlation. It is widely used in the sciences as a measure of the degree of linear dependence between two variables. It was developed by Karl Pearson from a related idea introduced by Francis Galton in the 1880s.,