Choosing appropriate visualizations for handling outliers without compromising the overall message and clarity of your graphs is the third step. When making this choice, you should consider the type and scale of your data, the purpose and audience of your visualization, and the trade-offs and alternatives of your visualization. For instance, if you want to emphasize the outliers or show the full range of your data, scatter plots, box plots, or violin plots may be used; if you want to focus on the main trends or patterns of your data, histograms, bar charts, or line charts may be more suitable. Additionally, if you use visualizations that include outliers, you may need to adjust the axis limits, labels, or annotations to avoid distortion or clutter; if you use visualizations that exclude outliers, you may need to report them separately or use other methods such as trimming, winsorizing, or transforming to reduce their impact.