Latent variable models | Mathematical psychology | Statistical theory

Theory of conjoint measurement

The theory of conjoint measurement (also known as conjoint measurement or additive conjoint measurement) is a general, formal theory of continuous quantity. It was independently discovered by the French economist Gérard Debreu (1960) and by the American mathematical psychologist R. Duncan Luce and statistician John Tukey. The theory concerns the situation where at least two natural attributes, A and X, non-interactively relate to a third attribute, P. It is not required that A, X or P are known to be quantities. Via specific relations between the levels of P, it can be established that P, A and X are continuous quantities. Hence the theory of conjoint measurement can be used to quantify attributes in empirical circumstances where it is not possible to combine the levels of the attributes using a side-by-side operation or concatenation. The quantification of psychological attributes such as attitudes, cognitive abilities and utility is therefore logically plausible. This means that the scientific measurement of psychological attributes is possible. That is, like physical quantities, a magnitude of a psychological quantity may possibly be expressed as the product of a real number and a unit magnitude. Application of the theory of conjoint measurement in psychology, however, has been limited. It has been argued that this is due to the high level of formal mathematics involved (e.g., ) and that the theory cannot account for the "noisy" data typically discovered in psychological research (e.g., ). It has been argued that the Rasch model is a stochastic variant of the theory of conjoint measurement (e.g., ; ; ; ; ; ), however, this has been disputed (e.g., Karabatsos, 2001; Kyngdon, 2008). Order restricted methods for conducting probabilistic tests of the cancellation axioms of conjoint measurement have been developed in the past decade (e.g., Karabatsos, 2001; Davis-Stober, 2009). The theory of conjoint measurement is (different but) related to conjoint analysis, which is a statistical-experiments methodology employed in marketing to estimate the parameters of additive utility functions. Different multi-attribute stimuli are presented to respondents, and different methods are used to measure their preferences about the presented stimuli. The coefficients of the utility function are estimated using alternative regression-based tools. (Wikipedia).

Theory of conjoint measurement
Video thumbnail

Trigonometry 5 The Cosine Relationship

A geometrical explanation of the law of cosines.

From playlist Trigonometry

Video thumbnail

Trigonometry 7 The Cosine of the Sum and Difference of Two Angles

A geometric proof of the cosine of the sum and difference of two angles identity.

From playlist Trigonometry

Video thumbnail

(PP 6.2) Multivariate Gaussian - examples and independence

Degenerate multivariate Gaussians. Some sketches of examples and non-examples of Gaussians. The components of a Gaussian are independent if and only if they are uncorrelated.

From playlist Probability Theory

Video thumbnail

Conjugate of products is product of conjugates

For all complex numbers, why is the conjugate of two products equal to the product of their conjugates? Basic example is discussed. Free ebook http://bookboon.com/en/introduction-to-complex-numbers-ebook

From playlist Intro to Complex Numbers

Video thumbnail

Covariance (1 of 17) What is Covariance? in Relation to Variance and Correlation

Visit http://ilectureonline.com for more math and science lectures! To donate:a http://www.ilectureonline.com/donate https://www.patreon.com/user?u=3236071 We will learn the difference between the variance and the covariance. A variance (s^2) is a measure of how spread out the numbers of

From playlist COVARIANCE AND VARIANCE

Video thumbnail

What is the complex conjugate?

What is the complex conjugate of a complex number? Free ebook http://bookboon.com/en/introduction-to-complex-numbers-ebook

From playlist Intro to Complex Numbers

Video thumbnail

(PP 6.1) Multivariate Gaussian - definition

Introduction to the multivariate Gaussian (or multivariate Normal) distribution.

From playlist Probability Theory

Video thumbnail

Computational Advances in Social Science Experiments

Dr. Lisa Argyle, Assistant Professor of Political Science at Brigham Young University, talks about how experiments can be advanced using computational methods.

From playlist SICSS 2022

Video thumbnail

Covariance - Explained

This educational video delves into how you quantify a linear statistical relationship between two variables using covariance! #statistics #probability #SoME2 This video gives a visual and intuitive introduction to the covariance, one of the ways we measure a linear statistical relation

From playlist Summer of Math Exposition 2 videos

Video thumbnail

Trigonometry 6 The Sine of the Sum and the Difference of Two Angles

A description of the sine function of the sum and difference of two angles.

From playlist Trigonometry

Video thumbnail

Future Evolution of High-Performance Microprocessors

September 27, 2006 lecture by Norm Jouppi for the Stanford University Computer Systems Colloquium (EE 380). The evolution of high-performance microprocessors has recently gone through a significant inflection point; such issues will be discussed, as well as the likely future of high per

From playlist Course | Computer Systems Laboratory Colloquium (2006-2007)

Video thumbnail

Python - Classifying Text Part 1

Lecturer: Dr. Erin M. Buchanan Summer 2019 https://www.patreon.com/statisticsofdoom This one was posted way before the others - part two is here: https://youtu.be/f7HFeeUzkJQ In this video, you will learn some basic terminology for classification - how to extract features, train, and t

From playlist Natural Language Processing

Video thumbnail

François Delarue - Stochastic control for large population driven by correlated noises

François Delarue (Université de Nice) I will discuss recent advances in large population stochastic control, in the spirit of the pioneering by Lasry and Lions and by Caines and Malhamé in 2006. The basic point is to seek approximate equilibria over families of interacting players when t

From playlist Schlumberger workshop on Topics in Applied Probability

Video thumbnail

Planet of the Humans: The Leap to the Top

For all that Darwin contributed to our understanding of the biological world, he was haunted by one vexing question: How does the incremental process of evolution suddenly produce, say, humans—animals who walk upright, communicate through language, and possess the brainpower to travel to t

From playlist Explore the World Science Festival

Video thumbnail

Séminaire Bourbaki 08/11/2014 : Jean-François Quint 4/4

"Rigidité des SL2(ℝ)-orbites dans les espaces de modules de surfaces plates" [d'après Eskin, Mirzakhani et Mohammadi] [PDF] Récemment, Eskin, Mirzkhani et partiellement Mohammadi ont établi des résultats de rigidité pour les adhérences de SL2(ℝ)-orbites dans les espaces de modules de su

From playlist Bourbaki - 08 novembre 2014

Video thumbnail

Math 131 Lecture #04 091216 Complex Numbers, Countable and Uncountable Sets

Recall the complex numbers: the plane with addition and multiplication. Geometric interpretation of operations. Same thing as a+bi. Complex conjugate. Absolute value (modulus) of a complex numbers; properties (esp., triangle inequality). Cauchy-Schwarz inequality. Recall Euclidean sp

From playlist Course 7: (Rudin's) Principles of Mathematical Analysis

Video thumbnail

Deterministic and stochastic aspects of two-dimensional fluid - Bian Wu

Short Talks by Postdoctoral Members Topic: Deterministic and stochastic aspects of two-dimensional fluid Speaker: Bian Wu Affiliation: Member, School of Mathematics Date: September 29, 2021

From playlist Mathematics

Related pages

Quantity | Prospect theory | Euclid's Elements | Markov chain Monte Carlo | Euclid | John Tukey | Polynomial conjoint measurement | Rasch model | Real number | Gérard Debreu | Bayesian inference | Interval scale | Archimedes | Mathematical psychology