04933nam 2200673Ia 450 991081785430332120240410114629.00-19-028241-X0-19-535780-91-280-76054-09786610760541(CKB)2560000000299318(EBL)271367(OCoLC)466424924(SSID)ssj0000145321(PQKBManifestationID)11160583(PQKBTitleCode)TC0000145321(PQKBWorkID)10157555(PQKB)11603812(StDuBDS)EDZ0000075949(Au-PeEL)EBL271367(CaPaEBR)ebr10269192(CaONFJC)MIL76054(MiAaPQ)EBC271367(EXLCZ)99256000000029931820001113d2002 uy 0engur|n|---|||||txtccrElementary signal detection theory /Thomas D. Wickens1st ed.Oxford ;New York Oxford University Pressc20021 online resource (277 p.)Description based upon print version of record.0-19-509250-3 0-19-989381-0 Includes bibliographical references (p. 253-255) and index.Contents; 1 The signal-detection model; 1.1 Some examples; 1.2 Hits and false alarms; 1.3 The statistical decision representation; Reference notes; Exercises; 2 The equal-variance Gaussian model; 2.1 The Gaussian detection model; 2.2 The equal-variance model; 2.3 Estimating d' and λ; 2.4 Measuring bias; 2.5 Ideal observers and optimal performance; Reference notes; Exercises; 3 Operating characteristics and the Gaussian model; 3.1 The operating characteristic; 3.2 Isocriterion and isobias contours; 3.3 The equal-variance Gaussian operating characteristic3.4 The unequal-variance Gaussian model3.5 Fitting an empirical operating characteristic; 3.6 Computer programs; Reference notes; Exercises; 4 Measures of detection performance; 4.1 The distance between distributions; 4.2 Distances to the isosensitivity line; 4.3 The area under the operating characteristic; 4.4 Recommendations; 4.5 Measures of bias; 4.6 Aggregation of detection statistics; Reference notes; Exercises; 5 Confidence ratings; 5.1 The rating experiment; 5.2 The detection model for rating experiments; 5.3 Fitting the rating model; Exercises; 6 Forced-choice procedures6.1 The forced-choice experiment6.2 The two-alternative forced-choice model; 6.3 Position bias; 6.4 Forced-choice and yes/no detection tasks; 6.5 The K-alternative forced-choice procedure; Exercises; 7 Discrimination and identification; 7.1 The two-alternative discrimination task; 7.2 The relationship between detection and discrimination; 7.3 Identification of several stimuli; Reference notes; Exercises; 8 Finite-state models; 8.1 The high-threshold model; 8.2 The high-threshold operating characteristic; 8.3 Other finite-state representations; 8.4 Rating-scale data; Reference notes; Exercises9 Likelihoods and likelihood ratios9.1 Likelihood-ratio tests; 9.2 The Bayesian observer; 9.3 Likelihoods and signal-detection theory; 9.4 Non-Gaussian distributions; Reference notes; Exercises; 10 Multidimensional stimuli; 10.1 Bivariate signal detection; 10.2 Likelihood ratios; 10.3 Compound signals; 10.4 Signals with correlated components; 10.5 Uncertainty effects; Reference notes; Exercises; 11 Statistical treatment; 11.1 Variability in signal-detection studies; 11.2 Fundamental sampling distributions; 11.3 Simple detection statistics; 11.4 Confidence intervals and hypothesis tests11.5 Goodness-of-fit tests11.6 Comparison of hierarchical models; 11.7 Interobserver variability; Reference notes; Exercises; Appendix: A summary of probability theory; A.1 Basic definitions; A.2 Random variables; A.3 Some specific distributions; References; Index; A; B; C; D; E; F; G; H; I; J; K; L; M; N; O; P; R; S; T; U; V; W; X; Z1. The signal-detection model2. The equal-variance Gaussian model3. Operating characteristics and the Gaussian model4. Measures of detection performance5. Confidence ratings6. Forced-choice procedures7. Discrimination and identification8. Finite-state models9. Likelihoods and likelihood ratios10. Multidimensional stimuli11. Statistical treatmentAppendix A summary of probability theoryReferencesIndexSignal theory (Telecommunication)Signal detectionSignal theory (Telecommunication)Signal detection.621.382621.38223Wickens Thomas D.1942-1714724MiAaPQMiAaPQMiAaPQBOOK9910817854303321Elementary signal detection theory4108796UNINA