Empirical researchThe relationship between derived mutually entailed relations and the function of challenging behavior in children with autism: Comparing the PEAK-E-PA and the QABF
-
Add time:08/24/2019 Source:sciencedirect.com
The study evaluated the relationship between participants’ abilities to derive mutually entailed relations across arbitrary stimuli and the function of their challenging behavior as indicated in the Questions About Behavior Function (QABF) indirect assessment. Entailed relational abilities were assessed using the Promoting the Emergence of Advanced Knowledge Equivalence Pre-Assessment (Dixon, 2015), and assessments were conducted across 47 individuals with autism or a related developmental disability. The results indicated that overall scores generated by the QABF were significantly lower for participants who could derive mutually entailed and/or combinatorially entailed relations (t (44) = 2.468, p < .05), and that in a greater proportion of cases, the QABF failed to isolate a single behavior function for individuals who could derive either mutually entailed or combinatorially entailed relations (χ 2 (1, N = 47) = 3.166, p < .05). The ability to derive entailed relations was not predictive of any specific challenging behavior topography (χ 2 (3, N = 47) = 6.251, p > .05) and was only related to scores on the Physical subscale of the QABF (t (24) = 3.37, p < .05). The results have implications for the assessment and treatment of individuals with autism, as well add to the development of a conceptual understanding of relational abilities and challenging behavior in this population.
We also recommend Trading Suppliers and Manufacturers of PEAK E (cas 132685-02-0). Pls Click Website Link as below: cas 132685-02-0 suppliers
Prev:Robin eigenvalues on domains with peaks
Next:Peak-off-peak load shifting: Are public willing to accept the peak and off-peak time of use electricity price?) - 【Back】【Close 】【Print】【Add to favorite 】
- Related Information
- Short communicationTransformation point on the peak intensity of high-order rogue wave and its critical behavior08/31/2019
- Fast density peak clustering for large scale data based on kNN☆08/30/2019
- Simulation of peak position and response profiles in comprehensive two-dimensional gas chromatography08/29/2019
- Estimation of peak capacity based on peak simulation08/28/2019
- Automatic peak detection coupled with multivariate curve resolution–alternating least squares for peak resolution in gas chromatography–mass spectrometry08/27/2019
- Diffusion enhancement model and its application in peak detection08/26/2019
- Peak-off-peak load shifting: Are public willing to accept the peak and off-peak time of use electricity price?08/25/2019
- Robin eigenvalues on domains with peaks08/23/2019


