Rasch Model Estimation
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Estimation of a Rasch model is used to estimate the parameters of the
Rasch model The Rasch model, named after Georg Rasch, is a psychometric model for analyzing categorical data, such as answers to questions on a reading assessment or questionnaire responses, as a function of the trade-off between the respondent's abilities, at ...
. Various techniques are employed to estimate the parameters from matrices of response data. The most common approaches are types of
maximum likelihood In statistics, maximum likelihood estimation (MLE) is a method of estimation theory, estimating the Statistical parameter, parameters of an assumed probability distribution, given some observed data. This is achieved by Mathematical optimization, ...
estimation, such as joint and conditional maximum likelihood estimation. Joint maximum likelihood (JML) equations are efficient, but inconsistent for a finite number of items, whereas conditional maximum likelihood (CML) equations give consistent and unbiased item estimates. Person estimates are generally thought to have
bias Bias is a disproportionate weight ''in favor of'' or ''against'' an idea or thing, usually in a way that is closed-minded, prejudicial, or unfair. Biases can be innate or learned. People may develop biases for or against an individual, a group, ...
associated with them, although weighted likelihood estimation methods for the estimation of person parameters reduce the bias.


Rasch model

The Rasch model for dichotomous data takes the form: : \Pr \=\frac, where \beta_n is the ability of person n and \delta_i is the difficulty of item i .


Joint maximum likelihood

Let x_ denote the observed response for person ''n'' on item ''i''. The probability of the observed data matrix, which is the product of the probabilities of the individual responses, is given by the likelihood function : \Lambda = \frac. The log-likelihood function is then : \log \Lambda = \sum_n^N \beta_n r_n - \sum_i^I \delta_i s_i - \sum_n^N \sum_i^I \log(1+\exp(\beta_n-\delta_i)) where r_n=\sum_i^I x_ is the total raw score for person ''n'', s_i=\sum_n^N x_ is the total raw score for item ''i'', ''N'' is the total number of persons and ''I'' is the total number of items. Solution equations are obtained by taking partial derivatives with respect to \delta_i and \beta_n and setting the result equal to 0. The JML solution equations are: : s_i = \sum_n^N p_,\quad i=1,\dots,I : r_n = \sum_i^I p_,\quad n=1,\dots,N where p_=\exp(\beta_n-\delta_i)/(1+\exp(\beta_n-\delta_i)). The resulting estimates are biased, and no finite estimates exist for persons with score 0 (no correct responses) or with 100% correct responses (perfect score). The same holds for items with extreme scores, no estimates exists for these as well. This bias is due to a well known effect described by Kiefer & Wolfowitz (1956). It is of the order (I-1)/I, and a more accurate (less biased) estimate of each \delta_i is obtained by multiplying the estimates by (I-1)/I.


Conditional maximum likelihood

The conditional likelihood function is defined as : \Lambda = \prod_ \Pr\ =\frac in which : \gamma_r = \sum_\exp(-\sum_i x_\delta_i) is the
elementary symmetric function In mathematics, specifically in commutative algebra, the elementary symmetric polynomials are one type of basic building block for symmetric polynomials, in the sense that any symmetric polynomial can be expressed as a polynomial in elementary sym ...
of order ''r'', which represents the sum over all combinations of ''r'' items. For example, in the case of three items, : \gamma_2 = \exp(-\delta_1-\delta_2)+\exp(-\delta_1-\delta_3)+\exp(-\delta_2-\delta_3). Details can be found in the chapters by von Davier (2016) for the dichotomous Rasch model and von Davier & Rost (1995) for the polytomous Rasch model.


Estimation algorithms

Some kind of expectation-maximization algorithm is used in the estimation of the parameters of Rasch models. Algorithms for implementing Maximum Likelihood estimation commonly employ
Newton–Raphson In numerical analysis, Newton's method, also known as the Newton–Raphson method, named after Isaac Newton and Joseph Raphson, is a root-finding algorithm which produces successively better approximations to the roots (or zeroes) of a real-valu ...
iterations to solve for solution equations obtained from setting the partial derivatives of the log-likelihood functions equal to 0. Convergence criteria are used to determine when the iterations cease. For example, the criterion might be that the mean item estimate changes by less than a certain value, such as 0.001, between one iteration and another for all items.


See also

* Expectation-maximization algorithm *
Rasch model The Rasch model, named after Georg Rasch, is a psychometric model for analyzing categorical data, such as answers to questions on a reading assessment or questionnaire responses, as a function of the trade-off between the respondent's abilities, at ...


References

* Linacre, J.M. (2004). ''Estimation methods for Rasch measures''. Chapter 2 in E.V. Smith & R. M. Smith (Eds.) Introduction to Rasch Measurement. Maple Grove MN: JAM Press. * Linacre, J.M. (2004). ''Rasch model estimation: further topics''. Chapter 24 in E.V. Smith & R. M. Smith (Eds.) Introduction to Rasch Measurement. Maple Grove MN: JAM Press. * von Davier M., Rost J. (1995) Polytomous Mixed Rasch Models. In: Fischer G.H., Molenaar I.W. (eds) Rasch Models. Springer, New York, NY. https://doi.org/10.1007/978-1-4612-4230-7_20 * von Davier, M. (2016). The Rasch Model. Chapter 3 in: van der Linden, W. (ed.) Handbook of Item Response Theory, Vol. 1. Second Edition. CRC Press, p. 31-48. https://www.taylorfrancis.com/chapters/edit/10.1201/9781315374512-12/rasch-model-matthias-von-davier {{DEFAULTSORT:Rasch Model Estimation Psychometrics Maximum likelihood estimation