discriminative$511010$ - meaning and definition. What is discriminative$511010$
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What (who) is discriminative$511010$ - definition

Discriminant Validity; Discriminative validity

Discriminant validity         
In psychology, discriminant validity tests whether concepts or measurements that are not supposed to be related are actually unrelated.
Discriminative model         
MATHEMATICAL MODEL USED FOR CLASSIFICATION OR REGRESSION
Conditional model
Discriminative models, also referred to as conditional models, are a class of logistical models used for classification or regression. They distinguish decision boundaries through observed data, such as pass/fail, win/lose, alive/dead or healthy/sick.
Tactile discrimination         
  • 2-point orientation discrimination (2POD) compared to traditional two-point discrimination (2PD)
  • Common Keypad with Braille
  • Early robotic prosthetic hand, made in 1963. On open public display at the main shopping mall in Belgrade.
  • Pseudounipolar bipolar neurons
  • WVSOM Meissner's corpuscle
Tactile discrimination is the ability to differentiate information through the sense of touch. The somatosensory system is the nervous system pathway that is responsible for this essential survival ability used in adaptation.

Wikipedia

Discriminant validity

In psychology, discriminant validity tests whether concepts or measurements that are not supposed to be related are actually unrelated.

Campbell and Fiske (1959) introduced the concept of discriminant validity within their discussion on evaluating test validity. They stressed the importance of using both discriminant and convergent validation techniques when assessing new tests. A successful evaluation of discriminant validity shows that a test of a concept is not highly correlated with other tests designed to measure theoretically different concepts.

In showing that two scales do not correlate, it is necessary to correct for attenuation in the correlation due to measurement error. It is possible to calculate the extent to which the two scales overlap by using the following formula where r x y {\displaystyle r_{xy}} is correlation between x and y, r x x {\displaystyle r_{xx}} is the reliability of x, and r y y {\displaystyle r_{yy}} is the reliability of y:

r x y r x x r y y {\displaystyle {\cfrac {r_{xy}}{\sqrt {r_{xx}\cdot r_{yy}}}}}

Although there is no standard value for discriminant validity, a result less than 0.70 suggests that discriminant validity likely exists between the two scales. A result greater than 0.70, however, suggests that the two constructs overlap greatly and they are likely measuring the same thing, and therefore, discriminant validity between them cannot be claimed.

Consider researchers developing a new scale designed to measure narcissism. They may want to show discriminant validity with a scale measuring self-esteem. Narcissism and self-esteem are theoretically different concepts, and therefore it is important that the researchers show that their new scale measures narcissism and not simply self-esteem.

First, the average inter-item correlations within and between the two scales can be calculated:

Narcissism — Narcissism: 0.47
Narcissism — Self-esteem: 0.30
Self-esteem — Self-esteem: 0.52

The correction for attenuation formula can then be applied:

0.30 0.47 0.52 = 0.607 {\displaystyle {\cfrac {0.30}{\sqrt {0.47*0.52}}}=0.607}

Since 0.607 is less than 0.85, it can be concluded that discriminant validity exists between the scale measuring narcissism and the scale measuring self-esteem. The two scales measure theoretically different constructs.

Recommended approaches to test for discriminant validity on the construct level are AVE-SE comparisons (Fornell & Larcker, 1981; note: hereby the measurement error-adjusted inter-construct correlations derived from the CFA model should be used rather than raw correlations derived from the data.) and the assessment of the HTMT ratio (Henseler et al., 2014). Simulation tests reveal that the former performs poorly for variance-based structural equation models (SEM), e.g. PLS, but well for covariance-based SEM, e.g. Amos, and the latter performs well for both types of SEM. Voorhees et al. (2015) recommend combining both methods for covariance-based SEM with a HTMT cutoff of 0.85. A recommended approach to test for discriminant validity on the item level is exploratory factor analysis (EFA).