Differences Between R vs SPSS
Data analytics introduces qualitative and quantitative techniques and procedures used to aggrandize productivity and business profit. Data is extracted and categorized to recognize and analyze performance data and patterns, differ accordingly to organizational demands. Data analytics is also called data analysis. Analytic experts have used many tools like R and SPSS, Python, SAS etc. over the years, which authorized them to construct data for analysis, execute algorithms, and evaluate the results.
The R statistical programming language is a free open source package based on the S language. R was developed by Ross Ihaka and Robert Gentleman in the University of Auckland, New Zealand. R is for data analysis and data visualization tool. There are several GUI editors of R language, out of which RGui and R Studio are commonly used. SPSS means “Statistical Package for the Social Sciences” and was first instigated in 1968. Since SPSS was takeover by IBM in 2009, then it’s officially known as IBM SPSS Statistics. SPSS is a software for cleaning and analyzing the data. Data may come from any source like google analytics, a customer database, or from a server. SPSS can open all file formats that are commonly used for structured data such as relational database, SAS, and Stata, csv or tsv, spreadsheet.
Head to Head Comparison Between R vs SPSS (Infographics)
Below is the top 7 comparison between R vs SPSS
Key Differences Between R vs SPSS
Below are the most important differences between R vs SPSS
- R is open source free software, where R community is very fast for software update adding new libraries on a regular basis new version of stable R is 3.5. IBM SPSS is not free if someone wants to use SPSS software then it has to download the trial version first due to the cost-effectiveness of SPSS, most of the start-ups opt R software.
- R is written in C and Fortran. R has stronger object-oriented programming facilities than SPSS whereas SPSS graphical user interface is written using Java language. It is mainly used for interactively and statistical analysis.
- In statistical analysis decision trees, R does not provide many algorithms and most of the packages of R can only implement Classification and Regression Tree and their interface is not as user-friendly. On the other hand, Decision trees in IBM SPSS are better than R because R does not offer many tree algorithms. For decision trees, SPSS interface is very user-friendly, understandable and easy to use.
- R has a less interactive analytical tool than SPSS but its editors are available for providing GUI support for programming in R. for learning and practicing hands-on analytics R us best tool as it really helps the analyst to master the various analytics steps and commands. Moreover, SPSS interface is more or less similar to excel spreadsheet.
- R offer much more opportunities to modify and optimize graphs due to a wide range of packages that are available. The most widely used package in R is ggplot2 and R shiny. Graphs in R are also easily made interactive, which allow users to play with data. In SPSS graphs are not that interactive as in R where you can create only basic and simple graphs or charts. Data management in both R and SPSS is almost same. A major drawback of R is that most of its functions have to load all the data into memory before execution whereas in SPSS provides data management functions such as sorting, aggregation, transposition and for merging of the table.
R vs SPSS Comparison Table
|Basis for Comparison||R||SPSS|
|User Interface||R has the less interactive analytical tool but editors are available for providing GUI support for programming in R. for learning and practicing hands-on analytics R us best tool as it really helps the analyst to master the various analytics steps and commands.
|SPSS has more interactive and user-friendly interface. SPSS displays data in a spreadsheet-like fashion|
|For decision trees, R does not offer many algorithms and most of the packages of R can only implement CART (Classification and Regression Tree) and their interface is not as user-friendly.||For Decision trees, IBM SPSS is better than R because R does not offer many tree algorithms. For decision trees, SPSS interface is very user-friendly and understandable.|
|A major drawback of R is that most of its functions have to load all the data into memory before execution, which set a limit on the volumes that can be handled.||In terms of data management, IBM SPSS is more or less similar to R. it provides data management functions such as sorting, aggregation, transposition and for merging of the table.|
|Documentation||In terms of documentation R has easily available explain documentation files. R community, however, is one of the strongest open source communities.||While SPSS is lag behind in this feature. SPSS lack this feature due to its limited use.|
|Platform||R is written in C and Fortran. R has stronger object-oriented programming facilities than most statistical computing languages.||SPSS graphical user interface (GUI) is written in Java. It uses for interactive and statistical Analysis mainly.|
|Cost||R is open source free software, where R community is very fast for software update adding new libraries.||IBM SPSS is not free if someone wants to learn SPSS then it has to use trial version first.|
|R offer much more opportunities to customize and optimize graphs due to a wide range of modules that are available. The most widely used module in R is ggplot2. These graphs are also easily made interactive, which allow users to play with data.||The graphical capabilities of SPSS are purely functional although it is possible to make minor changes to the graph, to fully customize your graph and visualizations in SPSS can be very cumbersome.|
Conclusion – R vs SPSS
R and SPSS both are analytics tools and have great career potential. Since R is open source, one could easily learn and implement. SPSS is licensed and you need to buy it for permanent use but you can learn SPSS through IBM SPSS trial version. If someone is new to data analytics then SPSS is a better choice because of its user-friendly interface to perform statistical analysis with ease from SPSS you can create basic visualization this problem can be overcome by R, R has a wide range of visualizations. In R you can use ggplot2 and R shiny to perform visualizations. R is best for (EDA) exploratory data analysis. R and SPSS both are slow when it comes to handling large data to solve this problem you have to go for another tool.
This has been a guide to differences between R vs SPSS, their Meaning, Head to Head Comparison, Key Differences, Comparison Table, and Conclusion. this article consists of all useful difference between R vs SPSS. You may also look at the following articles to learn more –
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