Psychometric Functions

Slides:



Advertisements
Similar presentations
Linear Equations Review. Find the slope and y intercept: y + x = -1.
Advertisements

Welcome to PHYS 225a Lab Introduction, class rules, error analysis Julia Velkovska.
Part 1 Psychometric Functions. A function is a rule for turning one number into another number. In a psychometric function, we take one number (e.g. a.
Copyright © 2008 by the McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Managerial Economics, 9e Managerial Economics Thomas Maurice.
Chapter Eighteen MEASURES OF ASSOCIATION
Sampling & Experimental Control Psych 231: Research Methods in Psychology.
The Normal Distribution Unimodal Symmetrical Abscissa – the different values of x Ordinate – density, probability, or frequency of each value of x Thus,
Regression Analysis Regression analysis is a statistical technique that is very useful for exploring the relationships between two or more variables (one.
LINEAR REGRESSION Introduction Section 0 Lecture 1 Slide 1 Lecture 5 Slide 1 INTRODUCTION TO Modern Physics PHYX 2710 Fall 2004 Intermediate 3870 Fall.
Linear Regression Inference
Understanding Multivariate Research Berry & Sanders.
Bivariate Regression Analysis The most useful means of discerning causality and significance of variables.
Stat 13, Thur 5/24/ Scatterplot. 2. Correlation, r. 3. Residuals 4. Def. of least squares regression line. 5. Example. 6. Extrapolation. 7. Interpreting.
1 Dr. Jerrell T. Stracener EMIS 7370 STAT 5340 Probability and Statistics for Scientists and Engineers Department of Engineering Management, Information.
7-2 Correlation Coefficient Objectives Determine and interpret the correlation coefficient.
© 2008 McGraw-Hill Higher Education The Statistical Imagination Chapter 15: Correlation and Regression Part 2: Hypothesis Testing and Aspects of a Relationship.
Part IV Significantly Different: Using Inferential Statistics
TYPES OF STATISTICAL METHODS USED IN PSYCHOLOGY Statistics.
Copyright © 2005 by the McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Managerial Economics Thomas Maurice eighth edition Chapter 4.
The Statistical Imagination Chapter 15. Correlation and Regression Part 2: Hypothesis Testing and Aspects of a Relationship.
Practice You collect data from 53 females and find the correlation between candy and depression is Determine if this value is significantly different.
Statistics Bivariate Analysis By: Student 1, 2, 3 Minutes Exercised Per Day vs. Weighted GPA.
WRITING REPORTS Introduction Section 0 Lecture 1 Slide 1 Lecture 6 Slide 1 INTRODUCTION TO Modern Physics PHYX 2710 Fall 2004 Intermediate 3870 Fall 2015.
NON-LINEAR REGRESSION Introduction Section 0 Lecture 1 Slide 1 Lecture 6 Slide 1 INTRODUCTION TO Modern Physics PHYX 2710 Fall 2004 Intermediate 3870 Fall.
Overview and interpretation
Regression. Outline of Today’s Discussion 1.Coefficient of Determination 2.Regression Analysis: Introduction 3.Regression Analysis: SPSS 4.Regression.
Lecture 8: Measurement Errors 1. Objectives List some sources of measurement errors. Classify measurement errors into systematic and random errors. Study.
Uncertainties and errors
Some handy tips!. The slope will have some meaning that will be used to determine a quantitative answer to the lab’s purpose (sometimes it’s the inverse.
EXCEL DECISION MAKING TOOLS AND CHARTS BASIC FORMULAE - REGRESSION - GOAL SEEK - SOLVER.
Sampling Distributions
Decoding How well can we learn what the stimulus is by looking
Statistical Inference
Essential Math For Economics
Different Types of Data
5-2 Polynomials, Linear Factors, & Zeros
Correlation, Bivariate Regression, and Multiple Regression
Let’s Get It Straight! Re-expressing Data Curvilinear Regression
Basic Estimation Techniques
Modify—use bio. IB book  IB Biology Topic 1: Statistical Analysis
Political Science 30: Political Inquiry
Review. Review Statistics Needed Need to find the best place to draw the regression line on a scatter plot Need to quantify the cluster.
Exercise 4 Find the value of k such that the line passing through the points (−4, 2k) and (k, −5) has slope −1.
POSC 202A: Lecture Lecture: Substantive Significance, Relationship between Variables 1.
Scientific Practice Correlation.
S519: Evaluation of Information Systems
Basic Estimation Techniques
Lesson 5.3 How do you write linear equations in point-slope form?
Motion Graphs.
Statistical Analysis Error Bars
Geology Geomath Chapter 7 - Statistics tom.h.wilson
Day 46 – Cause and Effect.
Sergei Gepshtein, Martin S. Banks  Current Biology 
Day 46 – Cause and Effect.
Jason Samaha, Bradley R. Postle  Current Biology 
Spatial Coding of the Predicted Impact Location of a Looming Object
Volume 27, Issue 6, Pages (March 2017)
Joshua I. Sanders, Balázs Hangya, Adam Kepecs  Neuron 
Liu D. Liu, Christopher C. Pack  Neuron 
Spatial Coding of the Predicted Impact Location of a Looming Object
Linear Regression Dr. Richard Jackson
Ryo Sasaki, Takanori Uka  Neuron  Volume 62, Issue 1, Pages (April 2009)
Signal detection theory
Volume 75, Issue 5, Pages (September 2012)
Humans Have an Expectation That Gaze Is Directed Toward Them
Principles of perception
Volume 75, Issue 5, Pages (September 2012)
Volume 21, Issue 23, Pages (December 2011)
Manuel Jan Roth, Matthis Synofzik, Axel Lindner  Current Biology 
Volume 28, Issue 19, Pages e8 (October 2018)
Presentation transcript:

Psychometric Functions Part 1 Psychometric Functions

Psychometric Functions A function is a rule for turning one number into another number. In a psychometric function, we take one number (e.g. a quantified stimulus) and turn it into another number (e.g. the probability of a behavioral response). By convention, the physical quantity is represented on the abscissa, and the behavioral response is represented on the ordinate.

Part 4: Psychometric Functions Linear Function = (Slope * X) + “Y-Intercept” 1_________________ 1 + {( exp^ - Slope )^ - ( X - “X-Intercept”)} Sigmoidal Function =

Psychometric Functions About Slope

About Slope Psychometric functions vary from each other in slope. Steeper slopes, better discrimination, lower thresholds: Shallower slopes, worse discrimination, higher thresholds. If your slope is infinite (i.e., a step function), you have a “ceiling effect”. Your task is too easy for the subject. If your slope is zero (i.e., a flat function), you have a “floor effect”. Your task is too difficult for the subject. Intermediate slopes are desirable, and allow you to dismiss objections that your subjects didn’t understand the task. (Perceptual limits, not “Conceptual” limits)

Psychometric Functions About X-Intercept

About X-Intercept Psychometric functions vary from each other in X-intercept. The X-intercept is an index of bias, and an index of the Point-of-Subjective-Equality (PSE). To the extent that the X-intercept departs from the center of the abscissa (i.e., the center of the range of stimuli being tested), there is bias. The PSE is equal to the abscissal value (i.e., the stimulus quantity) that is associated with the 50% ordinal value (the 50% response rate).

Psychometric Functions About Goodness-of-Fit

About Goodness-of-Fit Psychometric functions vary from each other in “goodness of fit”. To the extent data points (or their error bars) fall on or near the psychometric function, the fit is good. The goodness of fit can be indexed by the correlation ( “r” statistic) between the data and the function. If the fit (that is, the “r” statistic) is statistically greater than the would be expected by chance ( p < 0.05 ), we can be confident in estimating thresholds and P.S.E.’s from them.

Class Data From A Lab Exercise When in doubt, say “Longer”: slope = 1.8 arbitrary units mid-point (PSE) = -0.23 secs r statistic = 0.99 When in doubt, say “Shorter”: slope = 2.4 arbitrary units mid-point (PSE) = +0.13 secs r statistic = 0.99

Learning Check For next class…. On one plot, draw two psychometric functions that differ from each other only in slope (i.e., discriminability). On another plot, draw two psychometric functions that differ from each other only in mid-point (i.e., PSE). On a third plot, draw two psychometric functions that differ from each other only in ‘goodness of fit” (r stat).