Stable release | |
---|---|
Repository | JASP Github page |
Written in | C++, R, JavaScript |
Operating system | Microsoft Windows, Mac OS X and Linux |
Type | Statistics |
License | GNU Affero General Public License |
Website | jasp-stats.org |
JASP is a free and open-source program for statistical analysis supported by the University of Amsterdam. It is designed to be easy to use, and familiar to users of SPSS. It offers standard analysis procedures in both their classical and Bayesian form.[1][2] JASP generally produces APA style results tables and plots to ease publication. It promotes open science by integration with the Open Science Framework and reproducibility by integrating the analysis settings into the results. The development of JASP is financially supported by several universities and research funds.
JASP stands for Jeffreys’ Amazing Statistics Program, a nod to the Bayesian statistician, Sir Harold Jeffreys. It is available for Windows, Mac, Linux, and there is even a cloud version. One of JASP’s key features is its emphasis on Bayesian analysis. JASP was created as “a low fat alternative to SPSS, a delicious alternative to R,” and comes out of the University of Amsterdam (presumably at lower cost than buying SPSS). JASP is not yet at version 1 and may be used with caution; it also requires the free XQuartz window environment. Talk show about Current Events, Sports, Politics People and More. Available for Mac OS X, version 10.8 (Mountain Lion) and above (Which version do I have? Currently JASP depends on XQuartz. This should be installed before commencing installation. JASP can be installed by downloading and double clicking the.dmg file, and dragging the JASP icon to the Applications folder.
Analyses[edit]
JASP offers frequentist inference and Bayesian inference on the same statistical models. Frequentist inference uses p-values and confidence intervals to control error rates in the limit of infinite perfect replications. Bayesian inference uses credible intervals and Bayes factors[3][4] to estimate credible parameter values and model evidence given the available data and prior knowledge.
The following analyses are available in JASP:
Analysis | Frequentist | Bayesian |
---|---|---|
A/B test | ||
ANOVA, ANCOVA, Repeated measures ANOVA and MANOVA | ||
AUDIT (module) | ||
Bain (module) | ||
Binomial test | ||
Confirmatory factor analysis (CFA) | ||
Contingency tables (including Chi-squared test) | ||
Correlation:[5]Pearson, Spearman, and Kendall | ||
Equivalence T-Tests: Independent, Paired, One-Sample | ||
Exploratory factor analysis (EFA) | ||
Linear regression | ||
Logistic regression | ||
Log-linear regression | ||
Machine Learning | ||
Mann-Whitney U and Wilcoxon | ||
Mediation Analysis | ||
Meta Analysis | ||
Mixed Models | ||
Multinomial test | ||
Network Analysis | ||
Principal component analysis (PCA) | ||
Reliability analyses: α, γδ, and ω | ||
Structural equation modeling (SEM) | ||
Summary Stats[6] | ||
T-tests: independent, paired, one-sample | ||
Visual Modeling: Linear, Mixed, Generalized Linear |
Other features[edit]
- Descriptive statistics and plots.
- Assumption checks for all analyses, including Levene's test, the Shapiro–Wilk test, and Q–Q plot.
- Imports SPSS files and comma-separated files.
- Open Science Framework integration.
- Data filtering: Use either R code or a drag-and-drop GUI to select cases of interest.
- Create columns: Use either R code or a drag-and-drop GUI to create new variables from existing ones.
- Copy tables in LaTeX format.
- PDF export of results.
Modules[edit]
- Summary statistics: Bayesian inference from frequentist summary statistics for t-test, regression, and binomial tests.
- BAIN: Bayesian informative hypotheses evaluation[7] for t-test, ANOVA, ANCOVA and linear regression.
- Network: Network Analysis allows the user to analyze the network structure of variables.
- Meta Analysis: Includes techniques for fixed and random effects analysis, fixed and mixed effects meta-regression, forest and funnel plots, tests for funnel plot asymmetry, trim-and-fill and fail-safe N analysis.
- Machine Learning: Machine Learning module contains 13 analyses for supervised an unsupervised learning:
- Regression
- Boosting Regression
- Random Forest Regression
- Regularized Linear Regression
- Classification
- K-Nearest Neighbors Classification
- Linear Discriminant Classification
- Clustering
- Regression
- SEM: Structural equation modeling.[8]
- JAGS module
- Discover distributions
- Equivalence testing
References[edit]
- ^Wagenmakers EJ, Love J, Marsman M, Jamil T, Ly A, Verhagen J, et al. (February 2018). 'Bayesian inference for psychology. Part II: Example applications with JASP'. Psychonomic Bulletin & Review. 25 (1): 58–76. doi:10.3758/s13423-017-1323-7. PMC5862926. PMID28685272.
- ^Love J, Selker R, Verhagen J, Marsman M, Gronau QF, Jamil T, Smira M, Epskamp S, Wil A, Ly A, Matzke D, Wagenmakers EJ, Morey MD, Rouder JN (2015). 'Software to Sharpen Your Stats'. APS Observer. 28 (3).
- ^Quintana DS, Williams DR (June 2018). 'Bayesian alternatives for common null-hypothesis significance tests in psychiatry: a non-technical guide using JASP'. BMC Psychiatry. 18 (1): 178. doi:10.1186/s12888-018-1761-4. PMC5991426. PMID29879931.
- ^Brydges CR, Gaeta L (December 2019). 'An Introduction to Calculating Bayes Factors in JASP for Speech, Language, and Hearing Research'. Journal of Speech, Language, and Hearing Research. 62 (12): 4523–4533. doi:10.1044/2019_JSLHR-H-19-0183. PMID31830850.
- ^Nuzzo RL (December 2017). 'An Introduction to Bayesian Data Analysis for Correlations'. PM&R. 9 (12): 1278–1282. doi:10.1016/j.pmrj.2017.11.003. PMID29274678.
- ^Ly A, Raj A, Etz A, Marsman M, Gronau QF, Wagenmakers E (2017-05-30). 'Bayesian Reanalyses from Summary Statistics: A Guide for Academic Consumers'. Open Science Framework.
- ^Gu, Xin; Mulder, Joris; Hoijtink, Herbert (2018). 'Approximated adjusted fractional Bayes factors: A general method for testing informative hypotheses'. British Journal of Mathematical and Statistical Psychology. 71 (2): 229–261. doi:10.1111/bmsp.12110. ISSN2044-8317. PMID28857129.
- ^Kline, Rex B. (2015-11-03). Principles and Practice of Structural Equation Modeling, Fourth Edition. Guilford Publications. ISBN9781462523351.
External links[edit]
- jasp-desktop on GitHub
- Download
Jasp Mac Review
If your download is not starting, click here.
Jasp On Mac Download
Thank you for downloading JASP for Mac from our software portal
How To Open Jasp On Mac
The package you are about to download is authentic and was not repacked or modified in any way by us. The download version of JASP for Mac is 0.6.6. The download was scanned for viruses by our system. We also recommend you check the files before installation. This Mac program is distributed free of charge.
JASP antivirus report
Jasp Mac
This download is virus-free.This file was last analysed by Free Download Manager Lib 5 days ago.