Join BookitisSave favorites, build lists, and follow creators.

Nonparametric statistics for applied research

Work detail

Bookitis Pick
Nonparametric statistics for applied research
NS
Brian P. TeschLea M. KovacsissJared A. Linebach2 editions

Non-parametric methods are widely used for studying populations that take on a ranked order (such as movie reviews receiving one to four stars). The use of non-parametric methods may be necessary when data have a ranking but no clear numerical interpretation, such as when assessing preferences. In terms of levels of measurement, non-parametric methods result in "ordinal" data. As non-parametric methods make fewer assumptions, their applicability is much wider than the corresponding parametric methods. In particular, they may be applied in situations where less is known about the application in question. Also, due to the reliance on fewer assumptions, non-parametric methods are more robust. Non-parametric methods have many popular applications, and are widely used in research in the fields of the behavioral sciences and biomedicine.-

Overview

Shared work-level identity and catalog context.

3 credited authorsSearch language english

Bookitis keeps work pages focused on the shared book identity and the editions that actually belong to it. Unrelated books should not appear here as primary content.

Contributors

People credited with this work in the active catalog.

  • Brian P. Tesch

    Author profile in the active Bookitis catalog

    Open Author
  • Lea M. Kovacsiss

    Author profile in the active Bookitis catalog

    Open Author
  • Jared A. Linebach

    Author profile in the active Bookitis catalog

    Open Author

Editions

Publication-specific versions linked to this work only.