Signal Detection Theory I Challenges in Measuring Perception
- Slides: 42
Signal Detection Theory I. Challenges in Measuring Perception II. Introduction to Signal Detection Theory III. Applications of Signal Detection Theory
Part 1 Challenges in Measuring Perception
Psychophysics is the science of establishing quantitative relations between physical stimulation and perceptual events.
The Method of Limits Experimenter adjusts intensity until the stimulus is detected.
The Method of Limits Advantage: Measurements are made quickly. Disadvantage: It is not clear exactly what’s being measured (no control for bias).
“Catch Trials” The subject is asked to make a response when no stimulus has been presented (also called “noise only” trials).
Not All Errors Are Equal 1. Reporting stimulus is present when it’s absent (“false alarm”). Versus 2. Reporting stimulus is absent when it’s present (“miss”).
Correct Responses Differ, Too 1. Reporting stimulus is present when it’s present (“hit”). Versus 2. Reporting stimulus is absent when it’s absent (“correct rejection”).
Absent Present Stimulus-Response Matrix Correct Rejection False Alarm Miss Hit “No” “Yes” Response
Part II Introduction to Signal Detection Theory S. D. T. In Words
Signal Detection Theory S. D. T. is a procedure for measuring sensitivity to stimulation, independent of the subject’s response bias.
Signal Detection Theory S. D. T. reduces the stimulus-response matrix to two meaningful quantities. 1. Detectability (d’) - a subject’s sensitivity to stimulation. 2. Criterion (b) - a subject’s inclination to favor a particular response; bias.
Part II Introduction to Signal Detection Theory S. D. T. In Pictures
Distributions of Sensory Responses
Distributions of Sensory Responses Spontaneous Activity is Constant
Distributions of Sensory Responses Spontaneous Activity is Normally Distributed The “Noise” Distribution
Distributions of Sensory Responses A Mild Stimulus is Presented (d’=1) The “Noise” Distribution The “Signal + Noise” Distribution
Distributions of Sensory Responses A Moderate Stimulus is Presented (d’=2) The “Noise” Distribution The “Signal + Noise” Distribution
Distributions of Sensory Responses An Intense Stimulus is Presented (d’=3) The “Noise” Distribution The “Signal + Noise” Distribution
Distributions of Sensory Responses Sub-Threshold Stimulus is Presented (d’=0) The “Noise” Distribution The “Signal + Noise” Distribution
Criterion The “Noise” Distribution The “Signal + Noise” Distribution
Neutral Criterion The “Noise” Distribution The “Signal + Noise” Distribution . 5. 5
Liberal (low) Criterion The “Noise” Distribution The “Signal + Noise” Distribution . 2. 6
Conservative (high) Criterion The “Noise” Distribution The “Signal + Noise” Distribution . 6. 2
Receiver Operating Space
Receiver Operating Characteristics 0 = d’
R. O. C. Curves 1 = d’ 0 = d’
R. O. C. Curves 1 = d’ 0 = d’
R. O. C. Curves 2 = d’ 1 = d’ 0 = d’
R. O. C. Curves 3 = d’ 2 = d’ 1 = d’ 0 = d’
R. O. C. Curves
R. O. C. Curves = d’ -1 = d’ -2 = ’ d -3
Part II Introduction to Signal Detection Theory S. D. T. In Numbers
Normal Distributions S. D. T. is based on normal distributions. Each normal distribution is described by a mean and a standard deviation.
Normal Distributions A given point on a normal distribution can be described 3 ways. 1. Percentile (also proportion) 2. Z-score (# of standard deviations) 3. Probability Density (likelihood)
Computing Detectability d’ = z. Hits - z. False Alarms In excel, the “normsinv” function is used: Input = proportion Output = z-Score Conceptually, detectability (d’) increases with the area under the R. O. C. curve.
Computing Criterion b = Hit Density / False Alarm Density In excel, the “normsdist” function is used: Input = z-Score Output = density Conceptually, b is equal to the slope of the R. O. C. curve at single point.
Part III Applications of Signal Detection Theory
S. D. T. Applications S. D. T. can be used in perceptual discrimination experiments.
S. D. T. And Discrimination The “slow” distribution The “fast” distribution
S. D. T. Applications S. D. T. can be used in non-perceptual research, including memory experiments.
S. D. T. And Memory The “new items” distribution The “old items” distribution
- Perceptual expectancy
- Transduction psychology
- Signal detection theory example
- Signal detection theory example
- Signal detection theory roc curve
- Pharmacovigilance signal detection methods
- Baseband signal and bandpass signal
- Baseband signal and bandpass signal
- Digital signal as a composite analog signal
- Classification of signal
- Gregory top down theory of perception
- Gestalt theory of perception examples
- Self perception theory bem
- Gestalt principles of sensation and perception
- Risk perception theory
- Self perception theory
- Perspective vs perception
- Perception in psychomotor domain
- Subjective perception
- Nature of perception
- Self concept vs self esteem
- A clear perception of your personality
- Self concept goals
- Self concept vs self esteem
- Chapter 5 sensation and perception
- Principle of context
- Perception vs perspective
- Perception check definition
- What does the word perception mean
- What does this
- Selective perception
- Questions on perception
- Perception of wealth
- Perception checking process
- Color vision
- Pa preference inventory
- Crossed disparity
- Holistic perception of harmony
- Intermodal perception
- Perception and individual decision making
- Types of perception
- Perception meaning in psychology
- Questionmark perception