| Computer program | Website obtainable from | Free or paid? | Estimation | Rasch models |
|---|---|---|---|---|
| Rasch Software: Paid (Commercial) | ||||
| ConQuest 5 (Windows, Mac) | www.acer.edu.au/conquest | paid | MMLE, JMLE | dichotomous, polytomous, multidimensional, IRT |
| Facets (Windows) | www.winsteps.com/facets.htm | paid | JMLE, PROX | dichotomous, polytomous |
| RUMM2030+ (Windows) | www.rummlab.com.au | paid | PMLE, WMLE | dichotomous, polytomous |
| WINMIRA (Windows) | www.von-davier.com ? | paid | CMLE | dichotomous, polytomous |
| Winsteps (Windows) | www.winsteps.com/winsteps.htm | paid | CMLE, JMLE, PROX | dichotomous, polytomous |
| Xcalibre (Windows) | ? | paid | EM | dichotomous, polytomous |
| Logimo | ? | paid | CMLE (Log-linear) | dichotomous |
| LPCM-WIN (Windows) | ? | paid | CMLE | dichotomous, polytomous |
| Quest (Windows, old Macs) | paid | JMLE | dichotomous, polytomous | |
| RSP | ? | paid | CMLE, MMLE | dichotomous |
| T-Rasch | ? for demo: serial number is "demo" | paid | Non-parametric | dichotomous |
| Rasch Software: freeware | ||||
| Bigsteps (MS-DOS Windows) | www.winsteps.com/bigsteps.htm | freeware | JMLE, PROX | dichotomous, polytomous |
| ConstructMap (formerly GradeMap) (Windows & Mac) | ? | freeware | MMLE (MLE, EAP, DPVM) | dichotomous, polytomous |
| Facets-DOS (MS-DOS Windows) | www.winsteps.com/facdos.htm | freeware | JMLE, PROX | dichotomous, polytomous |
| Ganz Rasch (Windows) | ? | freeware | CMLE, JMLE, PMLE, WLE, MinChi, PROX | dichotomous |
| ICL (Windows, Mac, Linux) | ? | freeware | MMLE, MAP, EAP | dichotomous, polytomous |
| jMetrik (Windows, Mac OSX, Linux) | www.itemanalysis.com | freeware | JMLE. PROX | dichotomous, polytomous |
| Minifac (Windows) | www.winsteps.com/minifac.htm | freeware | JMLE, PROX | dichotomous, polytomous |
| Ministep (Windows) | www.winsteps.com/ministep.htm | freeware | JMLE, XMLE, PROX | dichotomous, polytomous |
| MULTIRA (in German, Windows) | ? | freeware | CMLE, JMLE, WMLE | dichotomous |
| OPLM (MS-DOS & Windows) | ? | free | CMLE, MMLE | dichotomous, polytomous |
| WinLLTM (Windows) | ? | free? | CMLE | dichotomous |
| Bond&FoxSteps (Windows) | Software for Bond & Fox "Applying the Rasch Model" | freeware | JMLE, PROX | dichotomous, polytomous |
| Digram (Windows) | ? | freeware | CMLE (log-linear, graphical) | dichotomous, polytomous |
| SALTUS (Windows) | ? | free? | MMLE | ? |
| BICAL (MS-DOS Windows) | installed on some mainframes | - | JMLE | dichotomous |
| IRT programs with Rasch-like capability | ||||
| BILOG-MG (Windows) | www.ssicentral.com | paid | MMLE | dichotomous |
| flexMIRT (Windows) | vpgcentral.com/software/flexmirt/ | paid | various | dichotomous, polytomous |
| PARSCALE (Windows) | www.ssicentral.com | paid | MMLE | dichotomous, polytomous |
| IRTPRO 2.1 (Windows) | www.ssicentral.com | paid | MMLE | dichotomous, polytomous |
| PARDUX | ? | ? | MMLE | dichotomous |
| RASCAL (Windows) | ? | paid | JMLE | dichotomous |
| See also software listing at: www.umass.edu | ||||
| Software with some Rasch functionality | ||||
| Bayesian Regression (Windows) | georgek.people.uic.edu/BayesSoftware.html (George Karabatsos) | freeware | Bayesian posterior estimation via Monte Carlo methods (e.g., MCMC) | Bayesian nonparametric (infinite-) mixture, standard normal mixture, dichotomous, polytomous, unidimensional, multidimensional, multi-level, FACETS-type |
| Damon (Python) | www.pythiasconsulting.com Analysis of multidimensional tabular datasets | open source | ALS | dichotomous, polytomous |
| EQSIRT (Windows, Mac, Linux) | www.mvsoft.com/eqsirt10.htm | paid | MMLE, MCMC | dichotomous, polytomous |
| ETIRM (Windows) | www.smallwaters.com/software/cpp/etirm.html | freeware | C++ functions | dichotomous, polytomous |
| flirt (MATLAB) | faculty.psy.ohio-state.edu/jeon/ | free add-ons | ML+EM | dichotomous + IRT models + multidimensional |
| Frank B. Baker & Seock-Ho Kim (Windows) | Item Response Theory: Parameter Estimation Techniques, Second Edition | CD-ROM in book | various | dichotomous, polytomous |
| Frank B. Baker | Item Response Theory: Parameter Estimation Techniques, First Edition | freeware | various | dichotomous |
| Latent GOLD (Windows) | www.statisticalinnovations.com | paid | MMLE | Rasch Mixture models: dichotomous, polytomous |
| LIBIRT (C++) | libirt.sf.net | freeware | MMLE etc. | dichotomous |
| Mplus | www.statmodel.com/irtanalysis.shtml | included | MLE | dichotomous + IRT models |
| OpenStat | statpages.info/miller/OpenStatMain.htm | freeware | PROX | dichotomous |
| R | CRAN Task View: Psychometric Models and Methods | free add-ons | various | dichotomous, polytomous, continuous |
| autoRasch: Semi-Automated Rasch Analysis | free add-ons | JMLE | dichotomous, polytomous | |
| eRm: Extended Rasch Modeling | free add-ons | CMLE | dichotomous, polytomous | |
| immer: Item Response Models for Multiple Ratings | free add-ons | CMLE, HRM, Facets-wrapper | dichotomous, polytomous | |
| ltm: Latent Trait Models under IRT | free add-ons | MMLE | dichotomous + IRT models | |
| mixRasch: Mixture Rasch Models with JMLE | free add-ons | JMLE | dichotomous, polytomous, mixture | |
| pairwise: Rasch Model Parameters by Pairwise Algorithm | free add-ons | PMLE | dichotomous, polytomous | |
| sirt: Supplementary Item Response Theory Models | free add-ons | PMLE etc. | dichotomous, polytomous | |
| TAM: Test Analysis Modules | free add-ons | JMLE, MMLE | dichotomous, polytomous, multifacets and more | |
| R Snippets for IRT: WrightMap | free add-ons | graphing | dichotomous, polytomous, multidimensional | |
| RaschFit (SAS) | RaschFit.sas download | free SAS macro to compute expected scores, residuals and mean-square fit statistics using response data and parameter estimates | any | dichotomous, polytomous |
| RASCHTEST (STATA) | pro-online.univ-nantes.fr | free add-ons | CMLE, MMLE, GEE | dichotomous, etc. |
| SAS PROCs STATA, S-PLUS, R, etc. | freeirt.free.fr anaqol.free.fr | free add-ons | ? | ? |
| SAS PROCs | publicifsv.sund.ku.dk/~kach/ | free add-ons | CMLE, MMLE | polytomous, longitudinal |
| STATA | www.stata.com/support/faqs/statistics/rasch-model/ | - | CMLE, Bayesian | dichotomous |
| WinBUGS | https://www.mrc-bsu.cam.ac.uk/software/bugs/ | freeware | ? | ? |
| Rasch demonstration software | ||||
| Mark Moulton (Windows) | Excel Spreadsheet (dichotomous) | freeware | JMLE | dichotomous |
| John M. Linacre (Windows) | Excel Spreadsheet (polytomous) | freeware | JMLE | polytomous |
| Simulation software | ||||
| WinGen (Windows) | www.hantest.net/wingen | freeware | dichotomous, polytomous | |
| WINIRT (Windows) | Hua Fang, George A. Johanson, Ohio University | freeware | dichotomous | |
| IRT-Lab | www.education.miami.edu/facultysites/penfield/ | freeware | various | |
| Rasch unfolding software | ||||
| RUMMFOLD | ? | paid | ? | ? |
| Please notify us of corrections or other Rasch software using the comment form below. | ||||
| CMLE = Conditional Maximum Likelihood Estimation, JMLE = Joint MLE, MMLE = Marginal MLE, PMLE = Pairwise MLE, WMLE = Warm's Mean LE, PROX = Normal Approximation | ||||
| FORUM | Rasch Measurement Forum to discuss any Rasch-related topic |
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The rain came down in sheets, turning the dirt path to the old Jackerman farm into a river of mud. Jack, now sixteen and broad-shouldered from a summer of hauling hay, pulled his coat tighter. He’d been foolish, staying out to fix the far fence line as the storm rolled in. Now, he was soaked to the bone, shivering, and a thousand yards from the warm, yellow glow of the kitchen window.
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