2017
DOI: 10.5964/jnc.v3i1.79
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A drift diffusion model account of the semantic congruity effect in a classification paradigm

Abstract: The semantic congruity effect refers to the facilitation of judgements (i) when the direction of the comparison of two items coincides with the relative position of the items along the dimension comparison or (ii) when the relative size of a standard and a target stimulus coincides. For example, people are faster in judging 'which is bigger?' for two large items, than judging 'which is smaller?' for two large items (selection paradigm). Also, people are faster in judging a target stimulus as smaller when compa… Show more

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Cited by 3 publications
(3 citation statements)
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References 56 publications
(86 reference statements)
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“…However, process models operating on these underlying semantic representations have not received the same kind of attention and have developed somewhat independently from the representation modeling movement. For example, although process models like the drift-diffusion model (Ratcliff & McKoon, 2008), the optimal foraging model (Hills, 2006), and the temporal context model (Howard & Kahana, 2002) have been applied to some semantic tasks like verbal fluency (Hills, Jones, & Todd, 2012), free association (Howard, Shankar, & Jagadisan, 2011), and semantic judgments (e.g., Pirrone, Marshall, & Stafford, 2017), their application to different tasks remains limited and most research has instead focused on representational issues. Ultimately, combining process-based accounts with representational accounts is going to be critical in addressing some of the current challenges in the field, an issue that is emphasized in the final section of this review.…”
Section: Many Tasks Many Modelsmentioning
confidence: 99%
“…However, process models operating on these underlying semantic representations have not received the same kind of attention and have developed somewhat independently from the representation modeling movement. For example, although process models like the drift-diffusion model (Ratcliff & McKoon, 2008), the optimal foraging model (Hills, 2006), and the temporal context model (Howard & Kahana, 2002) have been applied to some semantic tasks like verbal fluency (Hills, Jones, & Todd, 2012), free association (Howard, Shankar, & Jagadisan, 2011), and semantic judgments (e.g., Pirrone, Marshall, & Stafford, 2017), their application to different tasks remains limited and most research has instead focused on representational issues. Ultimately, combining process-based accounts with representational accounts is going to be critical in addressing some of the current challenges in the field, an issue that is emphasized in the final section of this review.…”
Section: Many Tasks Many Modelsmentioning
confidence: 99%
“…Other models of decision-making such as drift diffusion models are fairly successful for weighing evidence in two-alternative decision-making (Park & Starns, 2015;Pirrone, Marshall, & Stafford, 2017;Purcell et al, 2010).…”
Section: Potential Limitationsmentioning
confidence: 99%
“…Other models of decision--making such as drift diffusion models are fairly successful for weighing evidence in two--alternative decision--making (Purcell et al, 2010;Park & Starns, 2015;Pirrone, Marshall, & Stafford, 2017). The current approach does not contradict a drift diffusion model; there are some similarities in implementation.…”
Section: Potential Limitationsmentioning
confidence: 88%