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A nonlinear regression approach to estimating signal detection models for rating data

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posted on 2025-05-10, 10:44 authored by Ching-Fan Sheu, A. Heathcote
This paper considers a regression approach to estimating signal detection parameters for rating data. The methodology is based on the statistical modeling of ordinal data and requires only standard statistical software such as SAS (SAS/STAT User's Guide, 1999) for computation. The approach is more efficient than the current practice of extracting the parameter estimates with the use of specialized software and analyzing the estimates with the use of a standard statistical package. It greatly facilitates exploration of the effects of covariates on model parameters. The method is illustrated using a published data set from a single factor multiple-alternative perceptual task, and data from a more complex factorial design examining recognition memory rating data.

History

Journal title

Behavior Research Methods Instruments and Computers

Volume

33

Issue

2

Pagination

108-114

Publisher

Psychonomic Society

Language

  • en, English

College/Research Centre

Faculty of Science and Information Technology

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