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Ooms, Marius (2009). "Trends in Applied Econometrics Software Development 1985–2008: An Analysis of Journal of Applied Econometrics Research Articles, Software Reviews, Data and Code". Palgrave Handbook of Econometrics. Vol. 2: Applied Econometrics. Palgrave Macmillan. pp. 1321–1348. ISBN 978-1-4039-1800-0. Renfro, Charles G. (2004).
Ploticus – software for generating a variety of graphs from raw data; PSPP – A free software alternative to IBM SPSS Statistics; R – free implementation of the S (programming language) Programming with Big Data in R (pbdR) – a series of R packages enhanced by SPMD parallelism for big data analysis; R Commander – GUI interface for R
IDA (Interactive Data Analysis) [25] was a software package that originated at what was formerly the National Opinion Research Center , at the University of Chicago. Initially offered on the HP-2000 , [ 26 ] somewhat later, under the ownership of SPSS, it was also available on MUSIC/SP . [ 27 ]
Search results are displayed in table format; from here the user may obtain further information about a particular database entry, or launch a VOCs-linked tool (see below) for analysis of selected data. Additional analysis tools such as BLAST searches, genome maps, genome or gene alignment, phylogenetic trees, etc. are provided. [5]
Integrated data analysis graphing software for science and engineering. Flexible multi-layer graphing framework. 2D, 3D and statistical graph types. Built-in digitizing tool. Analysis with auto recalculation and report generation. Built-in scripting and programming languages. Perl Data Language: Karl Glazebrook 1996 c. 1997 2.080 28 May 2022: Free
JMP software is partly focused on exploratory data analysis and visualization. It is designed for users to investigate data to learn something unexpected, as opposed to confirming a hypothesis. [ 5 ] [ 26 ] [ 43 ] JMP links statistical data to graphics representing them, so users can drill down or up to explore the data and various visual ...
Descriptives: Explore the data with tables and plots. T-Tests: Evaluate the difference between two means. ANOVA: Evaluate the difference between multiple means. Mixed Models: Evaluate the difference between multiple means with random effects. Regression: Evaluate the association between variables. Frequencies: Analyses for count data.
The research plan might include the research question, the hypothesis to be tested, the experimental design, data collection methods, data analysis perspectives and costs involved. It is essential to carry the study based on the three basic principles of experimental statistics: randomization , replication , and local control.