Using Phi coefficient to interpret results obtained by InterCriteria analysis

L Todorova, P Vassilev, J Surchev - Novel Developments in Uncertainty …, 2016 - Springer
Novel Developments in Uncertainty Representation and Processing: Advances in …, 2016Springer
The authors propose an algorithm for assessment of the estimates of “correspondence” and
“opposition” obtained by InterCriteria Analysis (ICA) in the form of intuitionistic fuzzy vector
pairs. For this aim the modified Pearson coefficient of Karl Pearson, called φ φ coefficient
(“mean square contingency coefficient”). The algorithm is applied on real data from
neurosurgery. The statistical significance of the relations between the considered criteria is
verified by data found in literature. The authors believe this approach for data exploration …
Abstract
The authors propose an algorithm for assessment of the estimates of “correspondence” and “opposition” obtained by InterCriteria Analysis (ICA) in the form of intuitionistic fuzzy vector pairs. For this aim the modified Pearson coefficient of Karl Pearson, called coefficient (“mean square contingency coefficient”). The algorithm is applied on real data from neurosurgery. The statistical significance of the relations between the considered criteria is verified by data found in literature. The authors believe this approach for data exploration may prove useful in many areas.
Springer
Showing the best result for this search. See all results