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I know forecasting is more accurate using R instead of the Power BI out of the box visual. What are other visuals that are more accurate using R. What are other statistical data that's more accurate using R data i.e. running R to create the dataset in Power BI?
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Hi @tl272000
While Power BI's built-in visuals and analytics capabilities are powerful for a wide range of business intelligence tasks, R extends these capabilities further, especially for complex statistical analyses, custom visualizations, and advanced data processing. Here are some areas where R can provide more accurate or sophisticated analyses and visuals compared to Power BI's out-of-the-box options:
1. Advanced Statistical Analysis
Time Series Analysis: Beyond basic forecasting, R offers extensive packages like 'forecast', 'fable', and 'tsibble' for sophisticated time series analysis and forecasting techniques, including ARIMA, exponential smoothing, and more.
Survival Analysis: For analyzing time-to-event data, R's 'survival' package provides more comprehensive tools than Power BI.
Bayesian Analysis: R has several packages (e.g., 'rstan', 'brms') that support Bayesian statistical modeling, which is not directly supported in Power BI.
Multivariate Analysis: R supports complex multivariate statistical techniques, including principal component analysis (PCA), cluster analysis, and multiple regression analysis more extensively than Power BI.
2. Custom Visualizations
Complex Plot Types: R can create complex and customized plots that are not available in Power BI, such as violin plots, complex heatmaps, advanced box plots, and network graphs using libraries like 'ggplot2', 'plotly', and 'leaflet'.
Dynamic and Interactive Visuals: While Power BI supports some interactivity, R allows for the creation of highly interactive and dynamic visualizations through packages like `plotly` and `shiny`, which can be embedded in Power BI reports.
Best Regards,
Jayleny
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Hi @tl272000
While Power BI's built-in visuals and analytics capabilities are powerful for a wide range of business intelligence tasks, R extends these capabilities further, especially for complex statistical analyses, custom visualizations, and advanced data processing. Here are some areas where R can provide more accurate or sophisticated analyses and visuals compared to Power BI's out-of-the-box options:
1. Advanced Statistical Analysis
Time Series Analysis: Beyond basic forecasting, R offers extensive packages like 'forecast', 'fable', and 'tsibble' for sophisticated time series analysis and forecasting techniques, including ARIMA, exponential smoothing, and more.
Survival Analysis: For analyzing time-to-event data, R's 'survival' package provides more comprehensive tools than Power BI.
Bayesian Analysis: R has several packages (e.g., 'rstan', 'brms') that support Bayesian statistical modeling, which is not directly supported in Power BI.
Multivariate Analysis: R supports complex multivariate statistical techniques, including principal component analysis (PCA), cluster analysis, and multiple regression analysis more extensively than Power BI.
2. Custom Visualizations
Complex Plot Types: R can create complex and customized plots that are not available in Power BI, such as violin plots, complex heatmaps, advanced box plots, and network graphs using libraries like 'ggplot2', 'plotly', and 'leaflet'.
Dynamic and Interactive Visuals: While Power BI supports some interactivity, R allows for the creation of highly interactive and dynamic visualizations through packages like `plotly` and `shiny`, which can be embedded in Power BI reports.
Best Regards,
Jayleny
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
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